griddap Subset tabledap Make A Graph wms files Title Summary FGDC ISO 19115 Info Background Info RSS Email Institution Dataset ID
https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_nep_1_1km_01 https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_nep_1_1km_01.graph https://erddap.s4raise.it/erddap/files/unige-dicca_forecast_nep_1_1km_01/ 2 days 1.1 km resolution forecast over Liguria (01) Hourly 3-dimensional atmospheric gridded data, with a temporal coverage of 48 hours and a spatial resolution of 1.1 km. Data cover Central and Eastern Liguria. cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][y][x]): Convective_precipitation_surface_Mixed_intervals_Accumulation (Convective precipitation (Mixed_intervals Accumulation) @ Ground or water surface, kg.m-2) Evaporation_surface_Mixed_intervals_Accumulation (Evaporation (Mixed_intervals Accumulation) @ Ground or water surface, kg.m-2) Total_precipitation_surface_Mixed_intervals_Accumulation (Total precipitation (Mixed_intervals Accumulation) @ Ground or water surface, kg.m-2) https://erddap.s4raise.it/erddap/info/unige-dicca_forecast_nep_1_1km_01/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-dicca_forecast_nep_1_1km_01.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-dicca_forecast_nep_1_1km_01&showErrors=false&email= UNIGE-DICCA unige-dicca_forecast_nep_1_1km_01
https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_nep_1_1km_02 https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_nep_1_1km_02.graph https://erddap.s4raise.it/erddap/files/unige-dicca_forecast_nep_1_1km_02/ 2 days 1.1 km resolution forecast over Liguria (02) Hourly 3-dimensional atmospheric gridded data, with a temporal coverage of 48 hours and a spatial resolution of 1.1 km. Data cover Central and Eastern Liguria. cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][y][x]): Convective_available_potential_energy_surface (Convective available potential energy @ Ground or water surface, J/kg) Convective_inhibition_surface (Convective inhibition @ Ground or water surface, J/kg) Downward_long_wave_radiation_flux_surface (Downward long-wave radiation flux @ Ground or water surface, W.m-2) Downward_short_wave_radiation_flux_surface (Downward short-wave radiation flux @ Ground or water surface, W.m-2) Frictional_velocity_surface (Frictional velocity @ Ground or water surface, m/s) Geopotential_height_adiabatic_condensation_lifted (Geopotential height @ Level of adiabatic condensation lifted from the surface, gpm) Geopotential_height_cloud_base (Geopotential height @ Cloud base level, gpm) Geopotential_height_cloud_ceiling (Geopotential height @ Cloud ceiling, gpm) Geopotential_height_cloud_tops (Geopotential height @ Level of cloud tops, gpm) Geopotential_height_highest_tropospheric_freezing (Geopotential height @ Highest tropospheric freezing level, gpm) Geopotential_height_surface (Geopotential height @ Ground or water surface, gpm) Geopotential_height_zeroDegC_isotherm (Geopotential height @ Level of 0 °C isotherm, gpm) Land_cover_0_sea_1_land_surface (Land cover (0 = sea, 1 = land) @ Ground or water surface) Latent_heat_net_flux_surface (Latent heat net flux @ Ground or water surface, W.m-2) MSLP_Eta_model_reduction_msl (MSLP (Eta model reduction) @ Mean sea level, Pa) Planetary_boundary_layer_height_surface (Planetary boundary layer height @ Ground or water surface, m) Precipitable_water_surface_layer (Precipitable water @ Ground or water surface layer, kg.m-2) Precipitation_rate_surface (Precipitation rate @ Ground or water surface, kg.m-2.s-1) Pressure_cloud_base (Pressure @ Cloud base level, Pa) Pressure_reduced_to_MSL_msl (Pressure reduced to MSL @ Mean sea level, Pa) Pressure_surface (Pressure @ Ground or water surface, Pa) Sensible_heat_net_flux_surface (Sensible heat net flux @ Ground or water surface, W.m-2) Snow_depth_surface (Snow depth @ Ground or water surface, m) Snow_free_albedo_surface (Snow free albedo @ Ground or water surface, percent) Temperature_surface (Temperature @ Ground or water surface, K) Total_cloud_cover_surface_layer (Total cloud cover @ Ground or water surface layer, percent) ... (5 more variables) https://erddap.s4raise.it/erddap/info/unige-dicca_forecast_nep_1_1km_02/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-dicca_forecast_nep_1_1km_02.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-dicca_forecast_nep_1_1km_02&showErrors=false&email= UNIGE-DICCA unige-dicca_forecast_nep_1_1km_02
https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_nep_1_1km_03 https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_nep_1_1km_03.graph https://erddap.s4raise.it/erddap/files/unige-dicca_forecast_nep_1_1km_03/ 2 days 1.1 km resolution forecast over Liguria (03) Hourly 3-dimensional atmospheric gridded data, with a temporal coverage of 48 hours and a spatial resolution of 1.1 km. Data cover Central and Eastern Liguria. cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][altitude][y][x]): u_component_of_wind_height_above_ground (u-component of wind @ Specified height level above ground, m/s) v_component_of_wind_height_above_ground (v-component of wind @ Specified height level above ground, m/s) https://erddap.s4raise.it/erddap/info/unige-dicca_forecast_nep_1_1km_03/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-dicca_forecast_nep_1_1km_03.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-dicca_forecast_nep_1_1km_03&showErrors=false&email= UNIGE-DICCA unige-dicca_forecast_nep_1_1km_03
https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_nep_1_1km_04 https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_nep_1_1km_04.graph https://erddap.s4raise.it/erddap/files/unige-dicca_forecast_nep_1_1km_04/ 2 days 1.1 km resolution forecast over Liguria (04) Hourly 3-dimensional atmospheric gridded data, with a temporal coverage of 48 hours and a spatial resolution of 1.1 km. Data cover Central and Eastern Liguria. cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][altitude][y][x]): Dewpoint_temperature_height_above_ground (Dewpoint temperature @ Specified height level above ground, K) Relative_humidity_height_above_ground (Relative humidity @ Specified height level above ground, percent) Specific_humidity_height_above_ground (Specific humidity @ Specified height level above ground, kg/kg) https://erddap.s4raise.it/erddap/info/unige-dicca_forecast_nep_1_1km_04/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-dicca_forecast_nep_1_1km_04.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-dicca_forecast_nep_1_1km_04&showErrors=false&email= UNIGE-DICCA unige-dicca_forecast_nep_1_1km_04
https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_nep_1_1km_05 https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_nep_1_1km_05.graph https://erddap.s4raise.it/erddap/files/unige-dicca_forecast_nep_1_1km_05/ 2 days 1.1 km resolution forecast over Liguria (05) Hourly 3-dimensional atmospheric gridded data, with a temporal coverage of 48 hours and a spatial resolution of 1.1 km. Data cover Central and Eastern Liguria. cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][altitude][y][x]): Temperature_height_above_ground (Temperature @ Specified height level above ground, K) https://erddap.s4raise.it/erddap/info/unige-dicca_forecast_nep_1_1km_05/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-dicca_forecast_nep_1_1km_05.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-dicca_forecast_nep_1_1km_05&showErrors=false&email= UNIGE-DICCA unige-dicca_forecast_nep_1_1km_05
https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_nep_1_1km_06 https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_nep_1_1km_06.graph https://erddap.s4raise.it/erddap/files/unige-dicca_forecast_nep_1_1km_06/ 2 days 1.1 km resolution forecast over Liguria (06) Hourly 3-dimensional atmospheric gridded data, with a temporal coverage of 48 hours and a spatial resolution of 1.1 km. Data cover Central and Eastern Liguria. cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][hybrid][y][x]): Geopotential_height_hybrid (Geopotential height @ Hybrid level, gpm) u_component_of_wind_hybrid (u-component of wind @ Hybrid level, m/s) v_component_of_wind_hybrid (v-component of wind @ Hybrid level, m/s) https://erddap.s4raise.it/erddap/info/unige-dicca_forecast_nep_1_1km_06/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-dicca_forecast_nep_1_1km_06.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-dicca_forecast_nep_1_1km_06&showErrors=false&email= UNIGE-DICCA unige-dicca_forecast_nep_1_1km_06
https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_nep_1_1km_07 https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_nep_1_1km_07.graph https://erddap.s4raise.it/erddap/files/unige-dicca_forecast_nep_1_1km_07/ 2 days 1.1 km resolution forecast over Liguria (07) Hourly 3-dimensional atmospheric gridded data, with a temporal coverage of 48 hours and a spatial resolution of 1.1 km. Data cover Central and Eastern Liguria. cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][isobaric][y][x]): Geopotential_height_isobaric (Geopotential height @ Isobaric surface, gpm) Relative_humidity_isobaric (Relative humidity @ Isobaric surface, percent) Temperature_isobaric (Temperature @ Isobaric surface, K) Vertical_velocity_pressure_isobaric (Vertical velocity (pressure) @ Isobaric surface, Pa/s) u_component_of_wind_isobaric (u-component of wind @ Isobaric surface, m/s) v_component_of_wind_isobaric (v-component of wind @ Isobaric surface, m/s) https://erddap.s4raise.it/erddap/info/unige-dicca_forecast_nep_1_1km_07/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-dicca_forecast_nep_1_1km_07.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-dicca_forecast_nep_1_1km_07&showErrors=false&email= UNIGE-DICCA unige-dicca_forecast_nep_1_1km_07
https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_nep_1_1km_08 https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_nep_1_1km_08.graph https://erddap.s4raise.it/erddap/files/unige-dicca_forecast_nep_1_1km_08/ 2 days 1.1 km resolution forecast over Liguria (08) Hourly 3-dimensional atmospheric gridded data, with a temporal coverage of 48 hours and a spatial resolution of 1.1 km. Data cover Central and Eastern Liguria. cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][isobaric1][y][x]): Absolute_vorticity_isobaric (Absolute vorticity @ Isobaric surface, 1/s) https://erddap.s4raise.it/erddap/info/unige-dicca_forecast_nep_1_1km_08/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-dicca_forecast_nep_1_1km_08.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-dicca_forecast_nep_1_1km_08&showErrors=false&email= UNIGE-DICCA unige-dicca_forecast_nep_1_1km_08
https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_nep_1_1km_09 https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_nep_1_1km_09.graph https://erddap.s4raise.it/erddap/files/unige-dicca_forecast_nep_1_1km_09/ 2 days 1.1 km resolution forecast over Liguria (09) Hourly 3-dimensional atmospheric gridded data, with a temporal coverage of 48 hours and a spatial resolution of 1.1 km. Data cover Central and Eastern Liguria. cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][pressure_difference_layer][y][x]): u_component_of_wind_pressure_difference_layer (u-component of wind @ Level at specified pressure difference from ground to level layer, m/s) v_component_of_wind_pressure_difference_layer (v-component of wind @ Level at specified pressure difference from ground to level layer, m/s) https://erddap.s4raise.it/erddap/info/unige-dicca_forecast_nep_1_1km_09/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-dicca_forecast_nep_1_1km_09.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-dicca_forecast_nep_1_1km_09&showErrors=false&email= UNIGE-DICCA unige-dicca_forecast_nep_1_1km_09
https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_nep_1_1km_10 https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_nep_1_1km_10.graph https://erddap.s4raise.it/erddap/files/unige-dicca_forecast_nep_1_1km_10/ 2 days 1.1 km resolution forecast over Liguria (10) Hourly 3-dimensional atmospheric gridded data, with a temporal coverage of 48 hours and a spatial resolution of 1.1 km. Data cover Central and Eastern Liguria. cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][altitude][y][x]): Snow_phase_change_heat_flux_height_above_ground_1_Hour_Average (Snow phase change heat flux (1_Hour Average) @ Specified height level above ground, W.m-2) https://erddap.s4raise.it/erddap/info/unige-dicca_forecast_nep_1_1km_10/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-dicca_forecast_nep_1_1km_10.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-dicca_forecast_nep_1_1km_10&showErrors=false&email= UNIGE-DICCA unige-dicca_forecast_nep_1_1km_10
https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_nep_wrf_apcp https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_nep_wrf_apcp.graph https://erddap.s4raise.it/erddap/files/unige-dicca_forecast_nep_wrf_apcp/ 2 days 1.1 km resolution forecast over Liguria - Precipitation Hourly 3-dimensional atmospheric gridded data, with a temporal coverage of 48 hours and a spatial resolution of 1.1 km. Data cover Central and Eastern Liguria. cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][y][x]): Total_precipitation_surface_3_Hour_Accumulation (Total precipitation (3 Hours Accumulation) @ Ground or water surface, kg.m-2) Total_precipitation_surface_Mixed_intervals_Accumulation (Total precipitation (Mixed_intervals Accumulation) @ Ground or water surface, kg.m-2) https://erddap.s4raise.it/erddap/info/unige-dicca_forecast_nep_wrf_apcp/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-dicca_forecast_nep_wrf_apcp.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-dicca_forecast_nep_wrf_apcp&showErrors=false&email= UNIGE-DICCA unige-dicca_forecast_nep_wrf_apcp
https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_son_3_3km_01 https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_son_3_3km_01.graph https://erddap.s4raise.it/erddap/files/unige-dicca_forecast_son_3_3km_01/ 2 days 3.3 km resolution forecast over Northern and Central Italy (01) Hourly 3-dimensional atmospheric gridded data, with a temporal coverage of 48 hours and a spatial resolution of 3.3 km. Data cover Northern and Central Italy. cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][y][x]): Convective_precipitation_surface_Mixed_intervals_Accumulation (Convective precipitation (Mixed_intervals Accumulation) @ Ground or water surface, kg.m-2) Evaporation_surface_Mixed_intervals_Accumulation (Evaporation (Mixed_intervals Accumulation) @ Ground or water surface, kg.m-2) Total_precipitation_surface_Mixed_intervals_Accumulation (Total precipitation (Mixed_intervals Accumulation) @ Ground or water surface, kg.m-2) https://erddap.s4raise.it/erddap/info/unige-dicca_forecast_son_3_3km_01/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-dicca_forecast_son_3_3km_01.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-dicca_forecast_son_3_3km_01&showErrors=false&email= UNIGE-DICCA unige-dicca_forecast_son_3_3km_01
https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_son_3_3km_02 https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_son_3_3km_02.graph https://erddap.s4raise.it/erddap/files/unige-dicca_forecast_son_3_3km_02/ 2 days 3.3 km resolution forecast over Northern and Central Italy (02) Hourly 3-dimensional atmospheric gridded data, with a temporal coverage of 48 hours and a spatial resolution of 3.3 km. Data cover Northern and Central Italy. cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][y][x]): Convective_available_potential_energy_surface (Convective available potential energy @ Ground or water surface, J/kg) Convective_inhibition_surface (Convective inhibition @ Ground or water surface, J/kg) Downward_long_wave_radiation_flux_surface (Downward long-wave radiation flux @ Ground or water surface, W.m-2) Downward_short_wave_radiation_flux_surface (Downward short-wave radiation flux @ Ground or water surface, W.m-2) Frictional_velocity_surface (Frictional velocity @ Ground or water surface, m/s) Geopotential_height_adiabatic_condensation_lifted (Geopotential height @ Level of adiabatic condensation lifted from the surface, gpm) Geopotential_height_cloud_base (Geopotential height @ Cloud base level, gpm) Geopotential_height_cloud_ceiling (Geopotential height @ Cloud ceiling, gpm) Geopotential_height_cloud_tops (Geopotential height @ Level of cloud tops, gpm) Geopotential_height_highest_tropospheric_freezing (Geopotential height @ Highest tropospheric freezing level, gpm) Geopotential_height_surface (Geopotential height @ Ground or water surface, gpm) Geopotential_height_zeroDegC_isotherm (Geopotential height @ Level of 0 °C isotherm, gpm) Land_cover_0_sea_1_land_surface (Land cover (0 = sea, 1 = land) @ Ground or water surface) Latent_heat_net_flux_surface (Latent heat net flux @ Ground or water surface, W.m-2) MSLP_Eta_model_reduction_msl (MSLP (Eta model reduction) @ Mean sea level, Pa) Planetary_boundary_layer_height_surface (Planetary boundary layer height @ Ground or water surface, m) Precipitable_water_surface_layer (Precipitable water @ Ground or water surface layer, kg.m-2) Precipitation_rate_surface (Precipitation rate @ Ground or water surface, kg.m-2.s-1) Pressure_cloud_base (Pressure @ Cloud base level, Pa) Pressure_reduced_to_MSL_msl (Pressure reduced to MSL @ Mean sea level, Pa) Pressure_surface (Pressure @ Ground or water surface, Pa) Sensible_heat_net_flux_surface (Sensible heat net flux @ Ground or water surface, W.m-2) Snow_depth_surface (Snow depth @ Ground or water surface, m) Snow_free_albedo_surface (Snow free albedo @ Ground or water surface, percent) Temperature_surface (Temperature @ Ground or water surface, K) Total_cloud_cover_surface_layer (Total cloud cover @ Ground or water surface layer, percent) ... (5 more variables) https://erddap.s4raise.it/erddap/info/unige-dicca_forecast_son_3_3km_02/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-dicca_forecast_son_3_3km_02.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-dicca_forecast_son_3_3km_02&showErrors=false&email= UNIGE-DICCA unige-dicca_forecast_son_3_3km_02
https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_son_3_3km_03 https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_son_3_3km_03.graph https://erddap.s4raise.it/erddap/files/unige-dicca_forecast_son_3_3km_03/ 2 days 3.3 km resolution forecast over Northern and Central Italy (03) Hourly 3-dimensional atmospheric gridded data, with a temporal coverage of 48 hours and a spatial resolution of 3.3 km. Data cover Northern and Central Italy. cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][altitude][y][x]): u_component_of_wind_height_above_ground (u-component of wind @ Specified height level above ground, m/s) v_component_of_wind_height_above_ground (v-component of wind @ Specified height level above ground, m/s) https://erddap.s4raise.it/erddap/info/unige-dicca_forecast_son_3_3km_03/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-dicca_forecast_son_3_3km_03.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-dicca_forecast_son_3_3km_03&showErrors=false&email= UNIGE-DICCA unige-dicca_forecast_son_3_3km_03
https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_son_3_3km_04 https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_son_3_3km_04.graph https://erddap.s4raise.it/erddap/files/unige-dicca_forecast_son_3_3km_04/ 2 days 3.3 km resolution forecast over Northern and Central Italy (04) Hourly 3-dimensional atmospheric gridded data, with a temporal coverage of 48 hours and a spatial resolution of 3.3 km. Data cover Northern and Central Italy. cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][altitude][y][x]): Dewpoint_temperature_height_above_ground (Dewpoint temperature @ Specified height level above ground, K) Relative_humidity_height_above_ground (Relative humidity @ Specified height level above ground, percent) Specific_humidity_height_above_ground (Specific humidity @ Specified height level above ground, kg/kg) https://erddap.s4raise.it/erddap/info/unige-dicca_forecast_son_3_3km_04/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-dicca_forecast_son_3_3km_04.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-dicca_forecast_son_3_3km_04&showErrors=false&email= UNIGE-DICCA unige-dicca_forecast_son_3_3km_04
https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_son_3_3km_05 https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_son_3_3km_05.graph https://erddap.s4raise.it/erddap/files/unige-dicca_forecast_son_3_3km_05/ 2 days 3.3 km resolution forecast over Northern and Central Italy (05) Hourly 3-dimensional atmospheric gridded data, with a temporal coverage of 48 hours and a spatial resolution of 3.3 km. Data cover Northern and Central Italy. cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][altitude][y][x]): Temperature_height_above_ground (Temperature @ Specified height level above ground, K) https://erddap.s4raise.it/erddap/info/unige-dicca_forecast_son_3_3km_05/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-dicca_forecast_son_3_3km_05.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-dicca_forecast_son_3_3km_05&showErrors=false&email= UNIGE-DICCA unige-dicca_forecast_son_3_3km_05
https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_son_3_3km_06 https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_son_3_3km_06.graph https://erddap.s4raise.it/erddap/files/unige-dicca_forecast_son_3_3km_06/ 2 days 3.3 km resolution forecast over Northern and Central Italy (06) Hourly 3-dimensional atmospheric gridded data, with a temporal coverage of 48 hours and a spatial resolution of 3.3 km. Data cover Northern and Central Italy. cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][hybrid][y][x]): Geopotential_height_hybrid (Geopotential height @ Hybrid level, gpm) u_component_of_wind_hybrid (u-component of wind @ Hybrid level, m/s) v_component_of_wind_hybrid (v-component of wind @ Hybrid level, m/s) https://erddap.s4raise.it/erddap/info/unige-dicca_forecast_son_3_3km_06/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-dicca_forecast_son_3_3km_06.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-dicca_forecast_son_3_3km_06&showErrors=false&email= UNIGE-DICCA unige-dicca_forecast_son_3_3km_06
https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_son_3_3km_07 https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_son_3_3km_07.graph https://erddap.s4raise.it/erddap/files/unige-dicca_forecast_son_3_3km_07/ 2 days 3.3 km resolution forecast over Northern and Central Italy (07) Hourly 3-dimensional atmospheric gridded data, with a temporal coverage of 48 hours and a spatial resolution of 3.3 km. Data cover Northern and Central Italy. cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][isobaric][y][x]): Geopotential_height_isobaric (Geopotential height @ Isobaric surface, gpm) Relative_humidity_isobaric (Relative humidity @ Isobaric surface, percent) Temperature_isobaric (Temperature @ Isobaric surface, K) Vertical_velocity_pressure_isobaric (Vertical velocity (pressure) @ Isobaric surface, Pa/s) u_component_of_wind_isobaric (u-component of wind @ Isobaric surface, m/s) v_component_of_wind_isobaric (v-component of wind @ Isobaric surface, m/s) https://erddap.s4raise.it/erddap/info/unige-dicca_forecast_son_3_3km_07/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-dicca_forecast_son_3_3km_07.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-dicca_forecast_son_3_3km_07&showErrors=false&email= UNIGE-DICCA unige-dicca_forecast_son_3_3km_07
https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_son_3_3km_08 https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_son_3_3km_08.graph https://erddap.s4raise.it/erddap/files/unige-dicca_forecast_son_3_3km_08/ 2 days 3.3 km resolution forecast over Northern and Central Italy (08) Hourly 3-dimensional atmospheric gridded data, with a temporal coverage of 48 hours and a spatial resolution of 3.3 km. Data cover Northern and Central Italy. cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][isobaric1][y][x]): Absolute_vorticity_isobaric (Absolute vorticity @ Isobaric surface, 1/s) https://erddap.s4raise.it/erddap/info/unige-dicca_forecast_son_3_3km_08/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-dicca_forecast_son_3_3km_08.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-dicca_forecast_son_3_3km_08&showErrors=false&email= UNIGE-DICCA unige-dicca_forecast_son_3_3km_08
https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_son_3_3km_09 https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_son_3_3km_09.graph https://erddap.s4raise.it/erddap/files/unige-dicca_forecast_son_3_3km_09/ 2 days 3.3 km resolution forecast over Northern and Central Italy (09) Hourly 3-dimensional atmospheric gridded data, with a temporal coverage of 48 hours and a spatial resolution of 3.3 km. Data cover Northern and Central Italy. cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][pressure_difference_layer][y][x]): u_component_of_wind_pressure_difference_layer (u-component of wind @ Level at specified pressure difference from ground to level layer, m/s) v_component_of_wind_pressure_difference_layer (v-component of wind @ Level at specified pressure difference from ground to level layer, m/s) https://erddap.s4raise.it/erddap/info/unige-dicca_forecast_son_3_3km_09/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-dicca_forecast_son_3_3km_09.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-dicca_forecast_son_3_3km_09&showErrors=false&email= UNIGE-DICCA unige-dicca_forecast_son_3_3km_09
https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_son_3_3km_10 https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_son_3_3km_10.graph https://erddap.s4raise.it/erddap/files/unige-dicca_forecast_son_3_3km_10/ 2 days 3.3 km resolution forecast over Northern and Central Italy (10) Hourly 3-dimensional atmospheric gridded data, with a temporal coverage of 48 hours and a spatial resolution of 3.3 km. Data cover Northern and Central Italy. cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][altitude][y][x]): Snow_phase_change_heat_flux_height_above_ground_1_Hour_Average (Snow phase change heat flux (1_Hour Average) @ Specified height level above ground, W.m-2) https://erddap.s4raise.it/erddap/info/unige-dicca_forecast_son_3_3km_10/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-dicca_forecast_son_3_3km_10.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-dicca_forecast_son_3_3km_10&showErrors=false&email= UNIGE-DICCA unige-dicca_forecast_son_3_3km_10
https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_son_wrf_apcp https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_son_wrf_apcp.graph https://erddap.s4raise.it/erddap/files/unige-dicca_forecast_son_wrf_apcp/ 2 days 3.3 km resolution forecast over Northern and Central Italy - Precipitation Hourly 3-dimensional atmospheric gridded data, with a temporal coverage of 48 hours and a spatial resolution of 3.3 km. Data cover Northern and Central Italy. cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][y][x]): Total_precipitation_surface_3_Hour_Accumulation (Total precipitation (3 Hours Accumulation) @ Ground or water surface, kg.m-2) Total_precipitation_surface_Mixed_intervals_Accumulation (Total precipitation (Mixed_intervals Accumulation) @ Ground or water surface, kg.m-2) https://erddap.s4raise.it/erddap/info/unige-dicca_forecast_son_wrf_apcp/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-dicca_forecast_son_wrf_apcp.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-dicca_forecast_son_wrf_apcp&showErrors=false&email= UNIGE-DICCA unige-dicca_forecast_son_wrf_apcp
https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_fat_10km_01 https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_fat_10km_01.graph https://erddap.s4raise.it/erddap/files/unige-dicca_forecast_fat_10km_01/ 5 days 10 km resolution forecast over Southern Europe and Mediterranean basin (01) Hourly 3-dimensional atmospheric gridded data, with a temporal coverage of 5 day and a spatial resolution of 10 km. Data cover Southern Europe and Mediterranean basin. cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][y][x]): Convective_precipitation_surface_Mixed_intervals_Accumulation (Convective precipitation (Mixed_intervals Accumulation) @ Ground or water surface, kg.m-2) Evaporation_surface_Mixed_intervals_Accumulation (Evaporation (Mixed_intervals Accumulation) @ Ground or water surface, kg.m-2) Total_precipitation_surface_Mixed_intervals_Accumulation (Total precipitation (Mixed_intervals Accumulation) @ Ground or water surface, kg.m-2) https://erddap.s4raise.it/erddap/info/unige-dicca_forecast_fat_10km_01/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-dicca_forecast_fat_10km_01.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-dicca_forecast_fat_10km_01&showErrors=false&email= UNIGE-DICCA unige-dicca_forecast_fat_10km_01
https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_fat_10km_02 https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_fat_10km_02.graph https://erddap.s4raise.it/erddap/files/unige-dicca_forecast_fat_10km_02/ 5 days 10 km resolution forecast over Southern Europe and Mediterranean basin (02) Hourly 3-dimensional atmospheric gridded data, with a temporal coverage of 5 day and a spatial resolution of 10 km. Data cover Southern Europe and Mediterranean basin. cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][altitude][y][x]): Snow_phase_change_heat_flux_height_above_ground_1_Hour_Average (Snow phase change heat flux (1_Hour Average) @ Specified height level above ground, W.m-2) https://erddap.s4raise.it/erddap/info/unige-dicca_forecast_fat_10km_02/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-dicca_forecast_fat_10km_02.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-dicca_forecast_fat_10km_02&showErrors=false&email= UNIGE-DICCA unige-dicca_forecast_fat_10km_02
https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_fat_10km_03 https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_fat_10km_03.graph https://erddap.s4raise.it/erddap/files/unige-dicca_forecast_fat_10km_03/ 5 days 10 km resolution forecast over Southern Europe and Mediterranean basin (03) Hourly 3-dimensional atmospheric gridded data, with a temporal coverage of 5 day and a spatial resolution of 10 km. Data cover Southern Europe and Mediterranean basin. cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][y][x]): Convective_available_potential_energy_surface (Convective available potential energy @ Ground or water surface, J/kg) Convective_inhibition_surface (Convective inhibition @ Ground or water surface, J/kg) Downward_long_wave_radiation_flux_surface (Downward long-wave radiation flux @ Ground or water surface, W.m-2) Downward_short_wave_radiation_flux_surface (Downward short-wave radiation flux @ Ground or water surface, W.m-2) Frictional_velocity_surface (Frictional velocity @ Ground or water surface, m/s) Geopotential_height_adiabatic_condensation_lifted (Geopotential height @ Level of adiabatic condensation lifted from the surface, gpm) Geopotential_height_cloud_base (Geopotential height @ Cloud base level, gpm) Geopotential_height_cloud_ceiling (Geopotential height @ Cloud ceiling, gpm) Geopotential_height_cloud_tops (Geopotential height @ Level of cloud tops, gpm) Geopotential_height_highest_tropospheric_freezing (Geopotential height @ Highest tropospheric freezing level, gpm) Geopotential_height_surface (Geopotential height @ Ground or water surface, gpm) Geopotential_height_zeroDegC_isotherm (Geopotential height @ Level of 0 °C isotherm, gpm) Land_cover_0_sea_1_land_surface (Land cover (0 = sea, 1 = land) @ Ground or water surface) Latent_heat_net_flux_surface (Latent heat net flux @ Ground or water surface, W.m-2) MSLP_Eta_model_reduction_msl (MSLP (Eta model reduction) @ Mean sea level, Pa) Planetary_boundary_layer_height_surface (Planetary boundary layer height @ Ground or water surface, m) Precipitable_water_surface_layer (Precipitable water @ Ground or water surface layer, kg.m-2) Precipitation_rate_surface (Precipitation rate @ Ground or water surface, kg.m-2.s-1) Pressure_cloud_base (Pressure @ Cloud base level, Pa) Pressure_reduced_to_MSL_msl (Pressure reduced to MSL @ Mean sea level, Pa) Pressure_surface (Pressure @ Ground or water surface, Pa) Sensible_heat_net_flux_surface (Sensible heat net flux @ Ground or water surface, W.m-2) Snow_depth_surface (Snow depth @ Ground or water surface, m) Snow_free_albedo_surface (Snow free albedo @ Ground or water surface, percent) Temperature_surface (Temperature @ Ground or water surface, K) Total_cloud_cover_surface_layer (Total cloud cover @ Ground or water surface layer, percent) ... (5 more variables) https://erddap.s4raise.it/erddap/info/unige-dicca_forecast_fat_10km_03/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-dicca_forecast_fat_10km_03.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-dicca_forecast_fat_10km_03&showErrors=false&email= UNIGE-DICCA unige-dicca_forecast_fat_10km_03
https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_fat_10km_04 https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_fat_10km_04.graph https://erddap.s4raise.it/erddap/files/unige-dicca_forecast_fat_10km_04/ 5 days 10 km resolution forecast over Southern Europe and Mediterranean basin (04) Hourly 3-dimensional atmospheric gridded data, with a temporal coverage of 5 day and a spatial resolution of 10 km. Data cover Southern Europe and Mediterranean basin. cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][altitude][y][x]): u_component_of_wind_height_above_ground (u-component of wind @ Specified height level above ground, m/s) v_component_of_wind_height_above_ground (v-component of wind @ Specified height level above ground, m/s) https://erddap.s4raise.it/erddap/info/unige-dicca_forecast_fat_10km_04/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-dicca_forecast_fat_10km_04.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-dicca_forecast_fat_10km_04&showErrors=false&email= UNIGE-DICCA unige-dicca_forecast_fat_10km_04
https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_fat_10km_05 https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_fat_10km_05.graph https://erddap.s4raise.it/erddap/files/unige-dicca_forecast_fat_10km_05/ 5 days 10 km resolution forecast over Southern Europe and Mediterranean basin (05) Hourly 3-dimensional atmospheric gridded data, with a temporal coverage of 5 day and a spatial resolution of 10 km. Data cover Southern Europe and Mediterranean basin. cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][altitude][y][x]): Dewpoint_temperature_height_above_ground (Dewpoint temperature @ Specified height level above ground, K) Relative_humidity_height_above_ground (Relative humidity @ Specified height level above ground, percent) Specific_humidity_height_above_ground (Specific humidity @ Specified height level above ground, kg/kg) https://erddap.s4raise.it/erddap/info/unige-dicca_forecast_fat_10km_05/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-dicca_forecast_fat_10km_05.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-dicca_forecast_fat_10km_05&showErrors=false&email= UNIGE-DICCA unige-dicca_forecast_fat_10km_05
https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_fat_10km_06 https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_fat_10km_06.graph https://erddap.s4raise.it/erddap/files/unige-dicca_forecast_fat_10km_06/ 5 days 10 km resolution forecast over Southern Europe and Mediterranean basin (06) Hourly 3-dimensional atmospheric gridded data, with a temporal coverage of 5 day and a spatial resolution of 10 km. Data cover Southern Europe and Mediterranean basin. cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][altitude][y][x]): Temperature_height_above_ground (Temperature @ Specified height level above ground, K) https://erddap.s4raise.it/erddap/info/unige-dicca_forecast_fat_10km_06/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-dicca_forecast_fat_10km_06.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-dicca_forecast_fat_10km_06&showErrors=false&email= UNIGE-DICCA unige-dicca_forecast_fat_10km_06
https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_fat_10km_07 https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_fat_10km_07.graph https://erddap.s4raise.it/erddap/files/unige-dicca_forecast_fat_10km_07/ 5 days 10 km resolution forecast over Southern Europe and Mediterranean basin (07) Hourly 3-dimensional atmospheric gridded data, with a temporal coverage of 5 day and a spatial resolution of 10 km. Data cover Southern Europe and Mediterranean basin. cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][hybrid][y][x]): Geopotential_height_hybrid (Geopotential height @ Hybrid level, gpm) u_component_of_wind_hybrid (u-component of wind @ Hybrid level, m/s) v_component_of_wind_hybrid (v-component of wind @ Hybrid level, m/s) https://erddap.s4raise.it/erddap/info/unige-dicca_forecast_fat_10km_07/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-dicca_forecast_fat_10km_07.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-dicca_forecast_fat_10km_07&showErrors=false&email= UNIGE-DICCA unige-dicca_forecast_fat_10km_07
https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_fat_10km_08 https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_fat_10km_08.graph https://erddap.s4raise.it/erddap/files/unige-dicca_forecast_fat_10km_08/ 5 days 10 km resolution forecast over Southern Europe and Mediterranean basin (08) Hourly 3-dimensional atmospheric gridded data, with a temporal coverage of 5 day and a spatial resolution of 10 km. Data cover Southern Europe and Mediterranean basin. cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][isobaric][y][x]): Geopotential_height_isobaric (Geopotential height @ Isobaric surface, gpm) Relative_humidity_isobaric (Relative humidity @ Isobaric surface, percent) Temperature_isobaric (Temperature @ Isobaric surface, K) Vertical_velocity_pressure_isobaric (Vertical velocity (pressure) @ Isobaric surface, Pa/s) u_component_of_wind_isobaric (u-component of wind @ Isobaric surface, m/s) v_component_of_wind_isobaric (v-component of wind @ Isobaric surface, m/s) https://erddap.s4raise.it/erddap/info/unige-dicca_forecast_fat_10km_08/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-dicca_forecast_fat_10km_08.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-dicca_forecast_fat_10km_08&showErrors=false&email= UNIGE-DICCA unige-dicca_forecast_fat_10km_08
https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_fat_10km_09 https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_fat_10km_09.graph https://erddap.s4raise.it/erddap/files/unige-dicca_forecast_fat_10km_09/ 5 days 10 km resolution forecast over Southern Europe and Mediterranean basin (09) Hourly 3-dimensional atmospheric gridded data, with a temporal coverage of 5 day and a spatial resolution of 10 km. Data cover Southern Europe and Mediterranean basin. cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][isobaric1][y][x]): Absolute_vorticity_isobaric (Absolute vorticity @ Isobaric surface, 1/s) https://erddap.s4raise.it/erddap/info/unige-dicca_forecast_fat_10km_09/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-dicca_forecast_fat_10km_09.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-dicca_forecast_fat_10km_09&showErrors=false&email= UNIGE-DICCA unige-dicca_forecast_fat_10km_09
https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_fat_10km_10 https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_fat_10km_10.graph https://erddap.s4raise.it/erddap/files/unige-dicca_forecast_fat_10km_10/ 5 days 10 km resolution forecast over Southern Europe and Mediterranean basin (10) Hourly 3-dimensional atmospheric gridded data, with a temporal coverage of 5 day and a spatial resolution of 10 km. Data cover Southern Europe and Mediterranean basin. cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][pressure_difference_layer][y][x]): u_component_of_wind_pressure_difference_layer (u-component of wind @ Level at specified pressure difference from ground to level layer, m/s) v_component_of_wind_pressure_difference_layer (v-component of wind @ Level at specified pressure difference from ground to level layer, m/s) https://erddap.s4raise.it/erddap/info/unige-dicca_forecast_fat_10km_10/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-dicca_forecast_fat_10km_10.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-dicca_forecast_fat_10km_10&showErrors=false&email= UNIGE-DICCA unige-dicca_forecast_fat_10km_10
https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_fat_wrf_apcp https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_fat_wrf_apcp.graph https://erddap.s4raise.it/erddap/files/unige-dicca_forecast_fat_wrf_apcp/ 5 days 10 km resolution forecast over Southern Europe and Mediterranean basin - Precipitation Hourly 3-dimensional atmospheric gridded data, with a temporal coverage of 5 day and a spatial resolution of 10 km. Data cover Southern Europe and Mediterranean basin. cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][y][x]): Total_precipitation_surface_3_Hour_Accumulation (Total precipitation (3 Hours Accumulation) @ Ground or water surface, kg.m-2) Total_precipitation_surface_Mixed_intervals_Accumulation (Total precipitation (Mixed_intervals Accumulation) @ Ground or water surface, kg.m-2) https://erddap.s4raise.it/erddap/info/unige-dicca_forecast_fat_wrf_apcp/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-dicca_forecast_fat_wrf_apcp.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-dicca_forecast_fat_wrf_apcp&showErrors=false&email= UNIGE-DICCA unige-dicca_forecast_fat_wrf_apcp
https://erddap.s4raise.it/erddap/griddap/cmems_obs_oc_med_bgc_tur-spm-chl_nrt_l3_hr_mosaic_P1D_m https://erddap.s4raise.it/erddap/griddap/cmems_obs_oc_med_bgc_tur-spm-chl_nrt_l3_hr_mosaic_P1D_m.graph https://erddap.s4raise.it/erddap/wms/cmems_obs_oc_med_bgc_tur-spm-chl_nrt_l3_hr_mosaic_P1D_m/request https://erddap.s4raise.it/erddap/files/cmems_obs_oc_med_bgc_tur-spm-chl_nrt_l3_hr_mosaic_P1D_m/ CMEMS HR-OC Mediterranean Sea transparency (spm, tur) and geophysical (chl) daily observations mosaic CMEMS HR-OC Mediterranean Sea transparency (spm, tur) and geophysical (chl) daily observations mosaic cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][latitude][longitude]): CHL (Chlorophyll-a concentration derived from MSI L2R using HR-OC L2W processor, mg m-3) https://erddap.s4raise.it/erddap/metadata/fgdc/xml/cmems_obs_oc_med_bgc_tur-spm-chl_nrt_l3_hr_mosaic_P1D_m_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/cmems_obs_oc_med_bgc_tur-spm-chl_nrt_l3_hr_mosaic_P1D_m_iso19115.xml https://erddap.s4raise.it/erddap/info/cmems_obs_oc_med_bgc_tur-spm-chl_nrt_l3_hr_mosaic_P1D_m/index.xhtml https://marine.copernicus.eu/ https://erddap.s4raise.it/erddap/rss/cmems_obs_oc_med_bgc_tur-spm-chl_nrt_l3_hr_mosaic_P1D_m.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=cmems_obs_oc_med_bgc_tur-spm-chl_nrt_l3_hr_mosaic_P1D_m&showErrors=false&email= Brockmann Consult GmbH, RBINS, VITO for CMEMS, Mercator Ocean cmems_obs_oc_med_bgc_tur-spm-chl_nrt_l3_hr_mosaic_P1D_m
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_laspezia_20180323 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_laspezia_20180323.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_laspezia_20180323/ Estimated chlorophyall-a concentration at 60 m spatial resolution (20180323) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_laspezia_20180323_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_laspezia_20180323_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_laspezia_20180323/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_laspezia_20180323.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_laspezia_20180323&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_laspezia_20180323
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_portofino_20180323 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_portofino_20180323.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_portofino_20180323/ Estimated chlorophyall-a concentration at 60 m spatial resolution (20180323) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_portofino_20180323_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_portofino_20180323_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_portofino_20180323/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_portofino_20180323.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_portofino_20180323&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_portofino_20180323
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_laspezia_20180427 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_laspezia_20180427.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_laspezia_20180427/ Estimated chlorophyall-a concentration at 60 m spatial resolution (20180427) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_laspezia_20180427_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_laspezia_20180427_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_laspezia_20180427/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_laspezia_20180427.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_laspezia_20180427&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_laspezia_20180427
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_portofino_20180427 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_portofino_20180427.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_portofino_20180427/ Estimated chlorophyall-a concentration at 60 m spatial resolution (20180427) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_portofino_20180427_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_portofino_20180427_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_portofino_20180427/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_portofino_20180427.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_portofino_20180427&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_portofino_20180427
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_laspezia_20181128 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_laspezia_20181128.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_laspezia_20181128/ Estimated chlorophyall-a concentration at 60 m spatial resolution (20181128) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_laspezia_20181128_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_laspezia_20181128_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_laspezia_20181128/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_laspezia_20181128.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_laspezia_20181128&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_laspezia_20181128
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_portofino_20181128 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_portofino_20181128.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_portofino_20181128/ Estimated chlorophyall-a concentration at 60 m spatial resolution (20181128) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_portofino_20181128_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_portofino_20181128_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_portofino_20181128/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_portofino_20181128.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_portofino_20181128&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_portofino_20181128
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_laspezia_20190221 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_laspezia_20190221.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_laspezia_20190221/ Estimated chlorophyall-a concentration at 60 m spatial resolution (20190221) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_laspezia_20190221_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_laspezia_20190221_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_laspezia_20190221/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_laspezia_20190221.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_laspezia_20190221&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_laspezia_20190221
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_portofino_20190221 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_portofino_20190221.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_portofino_20190221/ Estimated chlorophyall-a concentration at 60 m spatial resolution (20190221) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_portofino_20190221_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_portofino_20190221_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_portofino_20190221/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_portofino_20190221.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_portofino_20190221&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_portofino_20190221
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_laspezia_20190417 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_laspezia_20190417.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_laspezia_20190417/ Estimated chlorophyall-a concentration at 60 m spatial resolution (20190417) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_laspezia_20190417_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_laspezia_20190417_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_laspezia_20190417/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_laspezia_20190417.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_laspezia_20190417&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_laspezia_20190417
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_portofino_20190417 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_portofino_20190417.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_portofino_20190417/ Estimated chlorophyall-a concentration at 60 m spatial resolution (20190417) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_portofino_20190417_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_portofino_20190417_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_portofino_20190417/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_portofino_20190417.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_portofino_20190417&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_portofino_20190417
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_laspezia_20190726 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_laspezia_20190726.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_laspezia_20190726/ Estimated chlorophyall-a concentration at 60 m spatial resolution (20190726) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_laspezia_20190726_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_laspezia_20190726_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_laspezia_20190726/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_laspezia_20190726.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_laspezia_20190726&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_laspezia_20190726
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_portofino_20190726 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_portofino_20190726.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_portofino_20190726/ Estimated chlorophyall-a concentration at 60 m spatial resolution (20190726) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_portofino_20190726_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_portofino_20190726_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_portofino_20190726/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_portofino_20190726.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_portofino_20190726&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_portofino_20190726
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_laspezia_20200206 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_laspezia_20200206.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_laspezia_20200206/ Estimated chlorophyall-a concentration at 60 m spatial resolution (20200206) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_laspezia_20200206_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_laspezia_20200206_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_laspezia_20200206/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_laspezia_20200206.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_laspezia_20200206&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_laspezia_20200206
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_portofino_20200206 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_portofino_20200206.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_portofino_20200206/ Estimated chlorophyall-a concentration at 60 m spatial resolution (20200206) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_portofino_20200206_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_portofino_20200206_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_portofino_20200206/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_portofino_20200206.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_portofino_20200206&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_portofino_20200206
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_laspezia_20200710 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_laspezia_20200710.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_laspezia_20200710/ Estimated chlorophyall-a concentration at 60 m spatial resolution (20200710) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_laspezia_20200710_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_laspezia_20200710_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_laspezia_20200710/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_laspezia_20200710.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_laspezia_20200710&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_laspezia_20200710
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_portofino_20200710 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_portofino_20200710.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_portofino_20200710/ Estimated chlorophyall-a concentration at 60 m spatial resolution (20200710) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_portofino_20200710_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_portofino_20200710_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_portofino_20200710/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_portofino_20200710.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_portofino_20200710&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_portofino_20200710
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_laspezia_20220307 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_laspezia_20220307.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_laspezia_20220307/ Estimated chlorophyall-a concentration at 60 m spatial resolution (20220307) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_laspezia_20220307_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_laspezia_20220307_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_laspezia_20220307/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_laspezia_20220307.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_laspezia_20220307&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_laspezia_20220307
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_portofino_20220307 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_portofino_20220307.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_portofino_20220307/ Estimated chlorophyall-a concentration at 60 m spatial resolution (20220307) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_portofino_20220307_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_portofino_20220307_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_portofino_20220307/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_portofino_20220307.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_portofino_20220307&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_portofino_20220307
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_laspezia_20220411 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_laspezia_20220411.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_laspezia_20220411/ Estimated chlorophyall-a concentration at 60 m spatial resolution (20220411) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_laspezia_20220411_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_laspezia_20220411_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_laspezia_20220411/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_laspezia_20220411.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_laspezia_20220411&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_laspezia_20220411
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_portofino_20220411 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_portofino_20220411.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_portofino_20220411/ Estimated chlorophyall-a concentration at 60 m spatial resolution (20220411) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_portofino_20220411_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_portofino_20220411_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_portofino_20220411/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_portofino_20220411.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_portofino_20220411&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_portofino_20220411
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_laspezia_20220511 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_laspezia_20220511.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_laspezia_20220511/ Estimated chlorophyall-a concentration at 60 m spatial resolution (20220511) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_laspezia_20220511_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_laspezia_20220511_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_laspezia_20220511/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_laspezia_20220511.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_laspezia_20220511&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_laspezia_20220511
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_portofino_20220511 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_portofino_20220511.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_portofino_20220511/ Estimated chlorophyall-a concentration at 60 m spatial resolution (20220511) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_portofino_20220511_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_portofino_20220511_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_portofino_20220511/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_portofino_20220511.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_portofino_20220511&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_portofino_20220511
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_laspezia_20220824 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_laspezia_20220824.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_laspezia_20220824/ Estimated chlorophyall-a concentration at 60 m spatial resolution (20220824) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_laspezia_20220824_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_laspezia_20220824_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_laspezia_20220824/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_laspezia_20220824.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_laspezia_20220824&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_laspezia_20220824
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_portofino_20220824 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_portofino_20220824.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_portofino_20220824/ Estimated chlorophyall-a concentration at 60 m spatial resolution (20220824) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_portofino_20220824_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_portofino_20220824_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_portofino_20220824/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_portofino_20220824.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_portofino_20220824&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_portofino_20220824
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_laspezia_20221028 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_laspezia_20221028.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_laspezia_20221028/ Estimated chlorophyall-a concentration at 60 m spatial resolution (20221028) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_laspezia_20221028_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_laspezia_20221028_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_laspezia_20221028/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_laspezia_20221028.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_laspezia_20221028&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_laspezia_20221028
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_portofino_20221028 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_portofino_20221028.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_portofino_20221028/ Estimated chlorophyall-a concentration at 60 m spatial resolution (20221028) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_portofino_20221028_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_portofino_20221028_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_portofino_20221028/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_portofino_20221028.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_portofino_20221028&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_portofino_20221028
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_laspezia_20230506 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_laspezia_20230506.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_laspezia_20230506/ Estimated chlorophyall-a concentration at 60 m spatial resolution (20230506) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_laspezia_20230506_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_laspezia_20230506_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_laspezia_20230506/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_laspezia_20230506.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_laspezia_20230506&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_laspezia_20230506
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_portofino_20230506 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_portofino_20230506.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_portofino_20230506/ Estimated chlorophyall-a concentration at 60 m spatial resolution (20230506) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_portofino_20230506_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_portofino_20230506_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_portofino_20230506/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_portofino_20230506.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_portofino_20230506&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_portofino_20230506
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_laspezia_20230526 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_laspezia_20230526.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_laspezia_20230526/ Estimated chlorophyall-a concentration at 60 m spatial resolution (20230526) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_laspezia_20230526_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_laspezia_20230526_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_laspezia_20230526/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_laspezia_20230526.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_laspezia_20230526&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_laspezia_20230526
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_portofino_20230526 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_portofino_20230526.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_portofino_20230526/ Estimated chlorophyall-a concentration at 60 m spatial resolution (20230526) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_portofino_20230526_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_portofino_20230526_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_portofino_20230526/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_portofino_20230526.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_portofino_20230526&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_portofino_20230526
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_laspezia_20231207 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_laspezia_20231207.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_laspezia_20231207/ Estimated chlorophyall-a concentration at 60 m spatial resolution (20231207) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_laspezia_20231207_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_laspezia_20231207_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_laspezia_20231207/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_laspezia_20231207.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_laspezia_20231207&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_laspezia_20231207
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_portofino_20231207 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_portofino_20231207.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_portofino_20231207/ Estimated chlorophyall-a concentration at 60 m spatial resolution (20231207) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_portofino_20231207_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_portofino_20231207_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_portofino_20231207/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_portofino_20231207.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_portofino_20231207&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_portofino_20231207
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_laspezia_20240510 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_laspezia_20240510.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_laspezia_20240510/ Estimated chlorophyall-a concentration at 60 m spatial resolution (20240510) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_laspezia_20240510_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_laspezia_20240510_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_laspezia_20240510/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_laspezia_20240510.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_laspezia_20240510&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_laspezia_20240510
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_portofino_20240510 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_portofino_20240510.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_portofino_20240510/ Estimated chlorophyall-a concentration at 60 m spatial resolution (20240510) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_portofino_20240510_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_portofino_20240510_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_portofino_20240510/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_portofino_20240510.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_portofino_20240510&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_portofino_20240510
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_laspezia_20240604 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_laspezia_20240604.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_laspezia_20240604/ Estimated chlorophyall-a concentration at 60 m spatial resolution (20240604) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_laspezia_20240604_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_laspezia_20240604_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_laspezia_20240604/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_laspezia_20240604.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_laspezia_20240604&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_laspezia_20240604
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_portofino_20240604 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_portofino_20240604.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_portofino_20240604/ Estimated chlorophyall-a concentration at 60 m spatial resolution (20240604) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_portofino_20240604_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_portofino_20240604_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_portofino_20240604/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_portofino_20240604.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_portofino_20240604&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_portofino_20240604
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_laspezia_20240719 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_laspezia_20240719.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_laspezia_20240719/ Estimated chlorophyall-a concentration at 60 m spatial resolution (20240719) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_laspezia_20240719_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_laspezia_20240719_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_laspezia_20240719/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_laspezia_20240719.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_laspezia_20240719&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_laspezia_20240719
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_portofino_20240719 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_portofino_20240719.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_portofino_20240719/ Estimated chlorophyall-a concentration at 60 m spatial resolution (20240719) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_portofino_20240719_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_portofino_20240719_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_portofino_20240719/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_portofino_20240719.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_portofino_20240719&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_portofino_20240719
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_laspezia_20240729 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_laspezia_20240729.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_laspezia_20240729/ Estimated chlorophyall-a concentration at 60 m spatial resolution (20240729) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_laspezia_20240729_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_laspezia_20240729_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_laspezia_20240729/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_laspezia_20240729.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_laspezia_20240729&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_laspezia_20240729
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_portofino_20240729 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_portofino_20240729.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_portofino_20240729/ Estimated chlorophyall-a concentration at 60 m spatial resolution (20240729) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_portofino_20240729_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_portofino_20240729_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_portofino_20240729/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_portofino_20240729.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_portofino_20240729&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_portofino_20240729
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20180323 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20180323.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20180323/ Estimated chlorophyll-a concentration at 60 m spatial resolution - Mondrian forest (20180323) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20180323_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20180323_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20180323/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20180323.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20180323&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20180323
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20180323 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20180323.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20180323/ Estimated chlorophyll-a concentration at 60 m spatial resolution - Mondrian forest (20180323) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20180323_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20180323_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20180323/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20180323.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_MondrianForest_portofino_20180323&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_MondrianForest_portofino_20180323
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20180427 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20180427.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20180427/ Estimated chlorophyll-a concentration at 60 m spatial resolution - Mondrian forest (20180427) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20180427_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20180427_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20180427/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20180427.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20180427&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20180427
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20180427 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20180427.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20180427/ Estimated chlorophyll-a concentration at 60 m spatial resolution - Mondrian forest (20180427) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20180427_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20180427_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20180427/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20180427.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_MondrianForest_portofino_20180427&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_MondrianForest_portofino_20180427
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20181128 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20181128.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20181128/ Estimated chlorophyll-a concentration at 60 m spatial resolution - Mondrian forest (20181128) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20181128_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20181128_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20181128/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20181128.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20181128&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20181128
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20181128 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20181128.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20181128/ Estimated chlorophyll-a concentration at 60 m spatial resolution - Mondrian forest (20181128) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20181128_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20181128_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20181128/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20181128.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_MondrianForest_portofino_20181128&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_MondrianForest_portofino_20181128
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20190221 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20190221.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20190221/ Estimated chlorophyll-a concentration at 60 m spatial resolution - Mondrian forest (20190221) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20190221_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20190221_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20190221/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20190221.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20190221&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20190221
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20190221 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20190221.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20190221/ Estimated chlorophyll-a concentration at 60 m spatial resolution - Mondrian forest (20190221) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20190221_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20190221_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20190221/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20190221.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_MondrianForest_portofino_20190221&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_MondrianForest_portofino_20190221
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20190417 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20190417.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20190417/ Estimated chlorophyll-a concentration at 60 m spatial resolution - Mondrian forest (20190417) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20190417_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20190417_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20190417/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20190417.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20190417&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20190417
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20190417 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20190417.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20190417/ Estimated chlorophyll-a concentration at 60 m spatial resolution - Mondrian forest (20190417) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20190417_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20190417_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20190417/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20190417.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_MondrianForest_portofino_20190417&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_MondrianForest_portofino_20190417
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20190726 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20190726.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20190726/ Estimated chlorophyll-a concentration at 60 m spatial resolution - Mondrian forest (20190726) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20190726_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20190726_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20190726/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20190726.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20190726&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20190726
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20190726 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20190726.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20190726/ Estimated chlorophyll-a concentration at 60 m spatial resolution - Mondrian forest (20190726) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20190726_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20190726_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20190726/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20190726.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_MondrianForest_portofino_20190726&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_MondrianForest_portofino_20190726
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20200206 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20200206.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20200206/ Estimated chlorophyll-a concentration at 60 m spatial resolution - Mondrian forest (20200206) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20200206_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20200206_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20200206/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20200206.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20200206&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20200206
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20200206 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20200206.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20200206/ Estimated chlorophyll-a concentration at 60 m spatial resolution - Mondrian forest (20200206) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20200206_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20200206_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20200206/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20200206.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_MondrianForest_portofino_20200206&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_MondrianForest_portofino_20200206
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20200710 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20200710.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20200710/ Estimated chlorophyll-a concentration at 60 m spatial resolution - Mondrian forest (20200710) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20200710_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20200710_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20200710/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20200710.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20200710&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20200710
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20200710 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20200710.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20200710/ Estimated chlorophyll-a concentration at 60 m spatial resolution - Mondrian forest (20200710) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20200710_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20200710_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20200710/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20200710.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_MondrianForest_portofino_20200710&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_MondrianForest_portofino_20200710
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20220307 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20220307.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20220307/ Estimated chlorophyll-a concentration at 60 m spatial resolution - Mondrian forest (20220307) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20220307_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20220307_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20220307/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20220307.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20220307&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20220307
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20220307 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20220307.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20220307/ Estimated chlorophyll-a concentration at 60 m spatial resolution - Mondrian forest (20220307) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20220307_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20220307_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20220307/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20220307.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_MondrianForest_portofino_20220307&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_MondrianForest_portofino_20220307
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20220411 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20220411.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20220411/ Estimated chlorophyll-a concentration at 60 m spatial resolution - Mondrian forest (20220411) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20220411_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20220411_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20220411/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20220411.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20220411&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20220411
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20220411 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20220411.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20220411/ Estimated chlorophyll-a concentration at 60 m spatial resolution - Mondrian forest (20220411) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20220411_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20220411_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20220411/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20220411.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_MondrianForest_portofino_20220411&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_MondrianForest_portofino_20220411
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20220511 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20220511.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20220511/ Estimated chlorophyll-a concentration at 60 m spatial resolution - Mondrian forest (20220511) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20220511_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20220511_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20220511/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20220511.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20220511&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20220511
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20220511 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20220511.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20220511/ Estimated chlorophyll-a concentration at 60 m spatial resolution - Mondrian forest (20220511) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20220511_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20220511_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20220511/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20220511.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_MondrianForest_portofino_20220511&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_MondrianForest_portofino_20220511
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20220824 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20220824.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20220824/ Estimated chlorophyll-a concentration at 60 m spatial resolution - Mondrian forest (20220824) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20220824_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20220824_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20220824/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20220824.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20220824&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20220824
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20220824 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20220824.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20220824/ Estimated chlorophyll-a concentration at 60 m spatial resolution - Mondrian forest (20220824) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20220824_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20220824_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20220824/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20220824.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_MondrianForest_portofino_20220824&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_MondrianForest_portofino_20220824
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20221028 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20221028.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20221028/ Estimated chlorophyll-a concentration at 60 m spatial resolution - Mondrian forest (20221028) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20221028_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20221028_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20221028/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20221028.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20221028&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20221028
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20221028 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20221028.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20221028/ Estimated chlorophyll-a concentration at 60 m spatial resolution - Mondrian forest (20221028) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20221028_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20221028_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20221028/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20221028.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_MondrianForest_portofino_20221028&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_MondrianForest_portofino_20221028
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20230506 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20230506.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20230506/ Estimated chlorophyll-a concentration at 60 m spatial resolution - Mondrian forest (20230506) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20230506_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20230506_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20230506/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20230506.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20230506&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20230506
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20230506 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20230506.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20230506/ Estimated chlorophyll-a concentration at 60 m spatial resolution - Mondrian forest (20230506) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20230506_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20230506_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20230506/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20230506.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_MondrianForest_portofino_20230506&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_MondrianForest_portofino_20230506
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20230526 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20230526.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20230526/ Estimated chlorophyll-a concentration at 60 m spatial resolution - Mondrian forest (20230526) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20230526_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20230526_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20230526/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20230526.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20230526&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20230526
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20230526 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20230526.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20230526/ Estimated chlorophyll-a concentration at 60 m spatial resolution - Mondrian forest (20230526) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20230526_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20230526_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20230526/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20230526.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_MondrianForest_portofino_20230526&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_MondrianForest_portofino_20230526
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20231207 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20231207.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20231207/ Estimated chlorophyll-a concentration at 60 m spatial resolution - Mondrian forest (20231207) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20231207_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20231207_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20231207/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20231207.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20231207&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20231207
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20231207 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20231207.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20231207/ Estimated chlorophyll-a concentration at 60 m spatial resolution - Mondrian forest (20231207) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20231207_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20231207_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20231207/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20231207.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_MondrianForest_portofino_20231207&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_MondrianForest_portofino_20231207
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20240510 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20240510.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20240510/ Estimated chlorophyll-a concentration at 60 m spatial resolution - Mondrian forest (20240510) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20240510_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20240510_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20240510/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20240510.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20240510&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20240510
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20240510 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20240510.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20240510/ Estimated chlorophyll-a concentration at 60 m spatial resolution - Mondrian forest (20240510) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20240510_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20240510_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20240510/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20240510.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_MondrianForest_portofino_20240510&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_MondrianForest_portofino_20240510
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20240604 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20240604.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20240604/ Estimated chlorophyll-a concentration at 60 m spatial resolution - Mondrian forest (20240604) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20240604_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20240604_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20240604/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20240604.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20240604&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20240604
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20240604 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20240604.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20240604/ Estimated chlorophyll-a concentration at 60 m spatial resolution - Mondrian forest (20240604) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20240604_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20240604_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20240604/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20240604.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_MondrianForest_portofino_20240604&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_MondrianForest_portofino_20240604
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20240719 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20240719.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20240719/ Estimated chlorophyll-a concentration at 60 m spatial resolution - Mondrian forest (20240719) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20240719_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20240719_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20240719/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20240719.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20240719&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20240719
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20240719 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20240719.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20240719/ Estimated chlorophyll-a concentration at 60 m spatial resolution - Mondrian forest (20240719) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20240719_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20240719_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20240719/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_MondrianForest_portofino_20240719.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_MondrianForest_portofino_20240719&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_MondrianForest_portofino_20240719
https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20240729 https://erddap.s4raise.it/erddap/griddap/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20240729.graph https://erddap.s4raise.it/erddap/files/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20240729/ Estimated chlorophyll-a concentration at 60 m spatial resolution - Mondrian forest (20240729) The dataset consists of estimated chlorophyll-a (CHL-a) concentration maps obtained as the output of a machine learning model. Multispectral data from twelve bands of the Sentinel-2 mission of the Copernicus Programme of the European Union, together with in situ CHL-a measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework. cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_chl https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20240729_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20240729_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20240729/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20240729.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20240729&showErrors=false&email= UNIGE-DITEN unige-diten_chlorophyll_final_output_MondrianForest_laspezia_20240729
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20220307T093204 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20220307T093204.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_20220307T093204/ Estimated sea surface temperature at 1 km spatial resolution (20220307T093204Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_20220307T093204_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_20220307T093204_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_20220307T093204/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_20220307T093204.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_20220307T093204&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_20220307T093204
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20220411T092437 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20220411T092437.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_20220411T092437/ Estimated sea surface temperature at 1 km spatial resolution (20220411T092437Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_20220411T092437_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_20220411T092437_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_20220411T092437/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_20220411T092437.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_20220411T092437&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_20220411T092437
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20220428T094504 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20220428T094504.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_20220428T094504/ Estimated sea surface temperature at 1 km spatial resolution (20220428T094504Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_20220428T094504_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_20220428T094504_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_20220428T094504/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_20220428T094504.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_20220428T094504&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_20220428T094504
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20220510T101316 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20220510T101316.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_20220510T101316/ Estimated sea surface temperature at 1 km spatial resolution (20220510T101316Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_20220510T101316_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_20220510T101316_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_20220510T101316/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_20220510T101316.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_20220510T101316&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_20220510T101316
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20220511T094705 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20220511T094705.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_20220511T094705/ Estimated sea surface temperature at 1 km spatial resolution (20220511T094705Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_20220511T094705_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_20220511T094705_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_20220511T094705/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_20220511T094705.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_20220511T094705&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_20220511T094705
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20220701T092437 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20220701T092437.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_20220701T092437/ Estimated sea surface temperature at 1 km spatial resolution (20220701T092437Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_20220701T092437_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_20220701T092437_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_20220701T092437/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_20220701T092437.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_20220701T092437&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_20220701T092437
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20220716T093548 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20220716T093548.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_20220716T093548/ Estimated sea surface temperature at 1 km spatial resolution (20220716T093548Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_20220716T093548_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_20220716T093548_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_20220716T093548/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_20220716T093548.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_20220716T093548&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_20220716T093548
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20220719T091905 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20220719T091905.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_20220719T091905/ Estimated sea surface temperature at 1 km spatial resolution (20220719T091905Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_20220719T091905_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_20220719T091905_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_20220719T091905/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_20220719T091905.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_20220719T091905&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_20220719T091905
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20220719T095813 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20220719T095813.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_20220719T095813/ Estimated sea surface temperature at 1 km spatial resolution (20220719T095813Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_20220719T095813_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_20220719T095813_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_20220719T095813/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_20220719T095813.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_20220719T095813&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_20220719T095813
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20220824T092429 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20220824T092429.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_20220824T092429/ Estimated sea surface temperature at 1 km spatial resolution (20220824T092429Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_20220824T092429_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_20220824T092429_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_20220824T092429/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_20220824T092429.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_20220824T092429&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_20220824T092429
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20220913T090551 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20220913T090551.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_20220913T090551/ Estimated sea surface temperature at 1 km spatial resolution (20220913T090551Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_20220913T090551_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_20220913T090551_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_20220913T090551/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_20220913T090551.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_20220913T090551&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_20220913T090551
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20221005T093545 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20221005T093545.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_20221005T093545/ Estimated sea surface temperature at 1 km spatial resolution (20221005T093545Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_20221005T093545_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_20221005T093545_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_20221005T093545/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_20221005T093545.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_20221005T093545&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_20221005T093545
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20221007T094510 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20221007T094510.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_20221007T094510/ Estimated sea surface temperature at 1 km spatial resolution (20221007T094510Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_20221007T094510_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_20221007T094510_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_20221007T094510/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_20221007T094510.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_20221007T094510&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_20221007T094510
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20221028T093930 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20221028T093930.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_20221028T093930/ Estimated sea surface temperature at 1 km spatial resolution (20221028T093930Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_20221028T093930_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_20221028T093930_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_20221028T093930/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_20221028T093930.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_20221028T093930&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_20221028T093930
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20221111T101653 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20221111T101653.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_20221111T101653/ Estimated sea surface temperature at 1 km spatial resolution (20221111T101653Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_20221111T101653_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_20221111T101653_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_20221111T101653/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_20221111T101653.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_20221111T101653&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_20221111T101653
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20230213T093929 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20230213T093929.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_20230213T093929/ Estimated sea surface temperature at 1 km spatial resolution (20230213T093929Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_20230213T093929_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_20230213T093929_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_20230213T093929/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_20230213T093929.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_20230213T093929&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_20230213T093929
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20230304T094657 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20230304T094657.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_20230304T094657/ Estimated sea surface temperature at 1 km spatial resolution (20230304T094657Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_20230304T094657_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_20230304T094657_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_20230304T094657/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_20230304T094657.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_20230304T094657&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_20230304T094657
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20230417T090555 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20230417T090555.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_20230417T090555/ Estimated sea surface temperature at 1 km spatial resolution (20230417T090555Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_20230417T090555_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_20230417T090555_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_20230417T090555/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_20230417T090555.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_20230417T090555&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_20230417T090555
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20230505T093934 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20230505T093934.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_20230505T093934/ Estimated sea surface temperature at 1 km spatial resolution (20230505T093934Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_20230505T093934_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_20230505T093934_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_20230505T093934/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_20230505T093934.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_20230505T093934&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_20230505T093934
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20230523T101313 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20230523T101313.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_20230523T101313/ Estimated sea surface temperature at 1 km spatial resolution (20230523T101313Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_20230523T101313_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_20230523T101313_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_20230523T101313/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_20230523T101313.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_20230523T101313&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_20230523T101313
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20230524T094702 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20230524T094702.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_20230524T094702/ Estimated sea surface temperature at 1 km spatial resolution (20230524T094702Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_20230524T094702_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_20230524T094702_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_20230524T094702/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_20230524T094702.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_20230524T094702&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_20230524T094702
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20230626T095250 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20230626T095250.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_20230626T095250/ Estimated sea surface temperature at 1 km spatial resolution (20230626T095250Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_20230626T095250_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_20230626T095250_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_20230626T095250/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_20230626T095250.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_20230626T095250&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_20230626T095250
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20230711T100406 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20230711T100406.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_20230711T100406/ Estimated sea surface temperature at 1 km spatial resolution (20230711T100406Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_20230711T100406_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_20230711T100406_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_20230711T100406/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_20230711T100406.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_20230711T100406&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_20230711T100406
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20230823T094909 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20230823T094909.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_20230823T094909/ Estimated sea surface temperature at 1 km spatial resolution (20230823T094909Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_20230823T094909_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_20230823T094909_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_20230823T094909/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_20230823T094909.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_20230823T094909&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_20230823T094909
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20230927T094136 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20230927T094136.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_20230927T094136/ Estimated sea surface temperature at 1 km spatial resolution (20230927T094136Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_20230927T094136_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_20230927T094136_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_20230927T094136/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_20230927T094136.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_20230927T094136&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_20230927T094136
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20231009T093025 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20231009T093025.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_20231009T093025/ Estimated sea surface temperature at 1 km spatial resolution (20231009T093025Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_20231009T093025_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_20231009T093025_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_20231009T093025/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_20231009T093025.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_20231009T093025&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_20231009T093025
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20231009T100922 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20231009T100922.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_20231009T100922/ Estimated sea surface temperature at 1 km spatial resolution (20231009T100922Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_20231009T100922_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_20231009T100922_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_20231009T100922/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_20231009T100922.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_20231009T100922&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_20231009T100922
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20231207T093924 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20231207T093924.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_20231207T093924/ Estimated sea surface temperature at 1 km spatial resolution (20231207T093924Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_20231207T093924_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_20231207T093924_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_20231207T093924/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_20231207T093924.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_20231207T093924&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_20231207T093924
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20240221T100924 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20240221T100924.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_20240221T100924/ Estimated sea surface temperature at 1 km spatial resolution (20240221T100924Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_20240221T100924_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_20240221T100924_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_20240221T100924/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_20240221T100924.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_20240221T100924&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_20240221T100924
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20240307T094141 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20240307T094141.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_20240307T094141/ Estimated sea surface temperature at 1 km spatial resolution (20240307T094141Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_20240307T094141_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_20240307T094141_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_20240307T094141/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_20240307T094141.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_20240307T094141&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_20240307T094141
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20240424T093547 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20240424T093547.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_20240424T093547/ Estimated sea surface temperature at 1 km spatial resolution (20240424T093547Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_20240424T093547_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_20240424T093547_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_20240424T093547/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_20240424T093547.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_20240424T093547&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_20240424T093547
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20240527T102041 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20240527T102041.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_20240527T102041/ Estimated sea surface temperature at 1 km spatial resolution (20240527T102041Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_20240527T102041_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_20240527T102041_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_20240527T102041/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_20240527T102041.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_20240527T102041&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_20240527T102041
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20240607T095649 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20240607T095649.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_20240607T095649/ Estimated sea surface temperature at 1 km spatial resolution (20240607T095649Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_20240607T095649_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_20240607T095649_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_20240607T095649/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_20240607T095649.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_20240607T095649&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_20240607T095649
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20240618T101146 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20240618T101146.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_20240618T101146/ Estimated sea surface temperature at 1 km spatial resolution (20240618T101146Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_20240618T101146_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_20240618T101146_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_20240618T101146/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_20240618T101146.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_20240618T101146&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_20240618T101146
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20240719T090552 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20240719T090552.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_20240719T090552/ Estimated sea surface temperature at 1 km spatial resolution (20240719T090552Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_20240719T090552_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_20240719T090552_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_20240719T090552/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_20240719T090552.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_20240719T090552&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_20240719T090552
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20240719T100805 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20240719T100805.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_20240719T100805/ Estimated sea surface temperature at 1 km spatial resolution (20240719T100805Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_20240719T100805_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_20240719T100805_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_20240719T100805/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_20240719T100805.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_20240719T100805&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_20240719T100805
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20240729T090814 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20240729T090814.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_20240729T090814/ Estimated sea surface temperature at 1 km spatial resolution (20240729T090814Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_20240729T090814_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_20240729T090814_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_20240729T090814/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_20240729T090814.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_20240729T090814&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_20240729T090814
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20240729T094659 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_20240729T094659.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_20240729T094659/ Estimated sea surface temperature at 1 km spatial resolution (20240729T094659Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_20240729T094659_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_20240729T094659_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_20240729T094659/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_20240729T094659.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_20240729T094659&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_20240729T094659
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220307T093204 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220307T093204.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220307T093204/ Estimated sea surface temperature at 1 km spatial resolution - Mondrian forest (20220307T093204Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220307T093204_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220307T093204_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220307T093204/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220307T093204.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_MondrianForest_20220307T093204&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_MondrianForest_20220307T093204
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220411T092437 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220411T092437.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220411T092437/ Estimated sea surface temperature at 1 km spatial resolution - Mondrian forest (20220411T092437Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220411T092437_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220411T092437_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220411T092437/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220411T092437.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_MondrianForest_20220411T092437&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_MondrianForest_20220411T092437
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220428T094504 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220428T094504.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220428T094504/ Estimated sea surface temperature at 1 km spatial resolution - Mondrian forest (20220428T094504Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220428T094504_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220428T094504_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220428T094504/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220428T094504.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_MondrianForest_20220428T094504&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_MondrianForest_20220428T094504
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220510T101316 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220510T101316.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220510T101316/ Estimated sea surface temperature at 1 km spatial resolution - Mondrian forest (20220510T101316Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220510T101316_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220510T101316_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220510T101316/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220510T101316.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_MondrianForest_20220510T101316&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_MondrianForest_20220510T101316
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220511T094705 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220511T094705.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220511T094705/ Estimated sea surface temperature at 1 km spatial resolution - Mondrian forest (20220511T094705Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220511T094705_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220511T094705_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220511T094705/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220511T094705.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_MondrianForest_20220511T094705&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_MondrianForest_20220511T094705
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220701T092437 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220701T092437.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220701T092437/ Estimated sea surface temperature at 1 km spatial resolution - Mondrian forest (20220701T092437Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220701T092437_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220701T092437_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220701T092437/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220701T092437.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_MondrianForest_20220701T092437&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_MondrianForest_20220701T092437
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220716T093548 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220716T093548.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220716T093548/ Estimated sea surface temperature at 1 km spatial resolution - Mondrian forest (20220716T093548Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220716T093548_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220716T093548_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220716T093548/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220716T093548.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_MondrianForest_20220716T093548&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_MondrianForest_20220716T093548
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220719T095813 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220719T095813.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220719T095813/ Estimated sea surface temperature at 1 km spatial resolution - Mondrian forest (20220719T095813Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220719T095813_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220719T095813_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220719T095813/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220719T095813.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_MondrianForest_20220719T095813&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_MondrianForest_20220719T095813
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220824T092429 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220824T092429.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220824T092429/ Estimated sea surface temperature at 1 km spatial resolution - Mondrian forest (20220824T092429Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220824T092429_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220824T092429_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220824T092429/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220824T092429.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_MondrianForest_20220824T092429&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_MondrianForest_20220824T092429
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220913T090551 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220913T090551.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220913T090551/ Estimated sea surface temperature at 1 km spatial resolution - Mondrian forest (20220913T090551Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220913T090551_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220913T090551_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220913T090551/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_MondrianForest_20220913T090551.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_MondrianForest_20220913T090551&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_MondrianForest_20220913T090551
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20221005T093545 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20221005T093545.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_MondrianForest_20221005T093545/ Estimated sea surface temperature at 1 km spatial resolution - Mondrian forest (20221005T093545Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20221005T093545_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20221005T093545_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_MondrianForest_20221005T093545/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_MondrianForest_20221005T093545.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_MondrianForest_20221005T093545&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_MondrianForest_20221005T093545
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20221007T094510 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20221007T094510.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_MondrianForest_20221007T094510/ Estimated sea surface temperature at 1 km spatial resolution - Mondrian forest (20221007T094510Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20221007T094510_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20221007T094510_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_MondrianForest_20221007T094510/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_MondrianForest_20221007T094510.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_MondrianForest_20221007T094510&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_MondrianForest_20221007T094510
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20221028T093930 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20221028T093930.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_MondrianForest_20221028T093930/ Estimated sea surface temperature at 1 km spatial resolution - Mondrian forest (20221028T093930Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20221028T093930_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20221028T093930_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_MondrianForest_20221028T093930/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_MondrianForest_20221028T093930.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_MondrianForest_20221028T093930&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_MondrianForest_20221028T093930
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20221111T101653 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20221111T101653.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_MondrianForest_20221111T101653/ Estimated sea surface temperature at 1 km spatial resolution - Mondrian forest (20221111T101653Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20221111T101653_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20221111T101653_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_MondrianForest_20221111T101653/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_MondrianForest_20221111T101653.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_MondrianForest_20221111T101653&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_MondrianForest_20221111T101653
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230213T093929 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230213T093929.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230213T093929/ Estimated sea surface temperature at 1 km spatial resolution - Mondrian forest (20230213T093929Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230213T093929_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230213T093929_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230213T093929/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230213T093929.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_MondrianForest_20230213T093929&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_MondrianForest_20230213T093929
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230304T094657 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230304T094657.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230304T094657/ Estimated sea surface temperature at 1 km spatial resolution - Mondrian forest (20230304T094657Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230304T094657_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230304T094657_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230304T094657/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230304T094657.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_MondrianForest_20230304T094657&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_MondrianForest_20230304T094657
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230417T090555 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230417T090555.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230417T090555/ Estimated sea surface temperature at 1 km spatial resolution - Mondrian forest (20230417T090555Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230417T090555_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230417T090555_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230417T090555/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230417T090555.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_MondrianForest_20230417T090555&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_MondrianForest_20230417T090555
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230505T093934 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230505T093934.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230505T093934/ Estimated sea surface temperature at 1 km spatial resolution - Mondrian forest (20230505T093934Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230505T093934_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230505T093934_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230505T093934/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230505T093934.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_MondrianForest_20230505T093934&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_MondrianForest_20230505T093934
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230523T101313 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230523T101313.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230523T101313/ Estimated sea surface temperature at 1 km spatial resolution - Mondrian forest (20230523T101313Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230523T101313_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230523T101313_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230523T101313/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230523T101313.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_MondrianForest_20230523T101313&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_MondrianForest_20230523T101313
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230524T094702 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230524T094702.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230524T094702/ Estimated sea surface temperature at 1 km spatial resolution - Mondrian forest (20230524T094702Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230524T094702_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230524T094702_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230524T094702/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230524T094702.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_MondrianForest_20230524T094702&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_MondrianForest_20230524T094702
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230626T095250 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230626T095250.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230626T095250/ Estimated sea surface temperature at 1 km spatial resolution - Mondrian forest (20230626T095250Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230626T095250_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230626T095250_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230626T095250/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230626T095250.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_MondrianForest_20230626T095250&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_MondrianForest_20230626T095250
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230711T100406 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230711T100406.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230711T100406/ Estimated sea surface temperature at 1 km spatial resolution - Mondrian forest (20230711T100406Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230711T100406_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230711T100406_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230711T100406/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230711T100406.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_MondrianForest_20230711T100406&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_MondrianForest_20230711T100406
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230823T094909 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230823T094909.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230823T094909/ Estimated sea surface temperature at 1 km spatial resolution - Mondrian forest (20230823T094909Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230823T094909_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230823T094909_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230823T094909/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230823T094909.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_MondrianForest_20230823T094909&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_MondrianForest_20230823T094909
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230927T094136 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230927T094136.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230927T094136/ Estimated sea surface temperature at 1 km spatial resolution - Mondrian forest (20230927T094136Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230927T094136_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230927T094136_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230927T094136/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_MondrianForest_20230927T094136.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_MondrianForest_20230927T094136&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_MondrianForest_20230927T094136
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20231009T093025 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20231009T093025.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_MondrianForest_20231009T093025/ Estimated sea surface temperature at 1 km spatial resolution - Mondrian forest (20231009T093025Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20231009T093025_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20231009T093025_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_MondrianForest_20231009T093025/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_MondrianForest_20231009T093025.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_MondrianForest_20231009T093025&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_MondrianForest_20231009T093025
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20231009T100922 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20231009T100922.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_MondrianForest_20231009T100922/ Estimated sea surface temperature at 1 km spatial resolution - Mondrian forest (20231009T100922Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20231009T100922_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20231009T100922_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_MondrianForest_20231009T100922/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_MondrianForest_20231009T100922.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_MondrianForest_20231009T100922&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_MondrianForest_20231009T100922
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20231207T093924 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20231207T093924.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_MondrianForest_20231207T093924/ Estimated sea surface temperature at 1 km spatial resolution - Mondrian forest (20231207T093924Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20231207T093924_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20231207T093924_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_MondrianForest_20231207T093924/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_MondrianForest_20231207T093924.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_MondrianForest_20231207T093924&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_MondrianForest_20231207T093924
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240221T100924 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240221T100924.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240221T100924/ Estimated sea surface temperature at 1 km spatial resolution - Mondrian forest (20240221T100924Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240221T100924_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240221T100924_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240221T100924/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240221T100924.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_MondrianForest_20240221T100924&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_MondrianForest_20240221T100924
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240307T094141 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240307T094141.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240307T094141/ Estimated sea surface temperature at 1 km spatial resolution - Mondrian forest (20240307T094141Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240307T094141_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240307T094141_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240307T094141/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240307T094141.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_MondrianForest_20240307T094141&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_MondrianForest_20240307T094141
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240424T093547 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240424T093547.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240424T093547/ Estimated sea surface temperature at 1 km spatial resolution - Mondrian forest (20240424T093547Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240424T093547_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240424T093547_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240424T093547/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240424T093547.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_MondrianForest_20240424T093547&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_MondrianForest_20240424T093547
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240527T102041 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240527T102041.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240527T102041/ Estimated sea surface temperature at 1 km spatial resolution - Mondrian forest (20240527T102041Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240527T102041_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240527T102041_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240527T102041/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240527T102041.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_MondrianForest_20240527T102041&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_MondrianForest_20240527T102041
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240607T095649 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240607T095649.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240607T095649/ Estimated sea surface temperature at 1 km spatial resolution - Mondrian forest (20240607T095649Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240607T095649_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240607T095649_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240607T095649/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240607T095649.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_MondrianForest_20240607T095649&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_MondrianForest_20240607T095649
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240618T101146 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240618T101146.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240618T101146/ Estimated sea surface temperature at 1 km spatial resolution - Mondrian forest (20240618T101146Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240618T101146_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240618T101146_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240618T101146/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240618T101146.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_MondrianForest_20240618T101146&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_MondrianForest_20240618T101146
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240719T090552 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240719T090552.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240719T090552/ Estimated sea surface temperature at 1 km spatial resolution - Mondrian forest (20240719T090552Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240719T090552_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240719T090552_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240719T090552/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240719T090552.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_MondrianForest_20240719T090552&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_MondrianForest_20240719T090552
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240719T100805 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240719T100805.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240719T100805/ Estimated sea surface temperature at 1 km spatial resolution - Mondrian forest (20240719T100805Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240719T100805_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240719T100805_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240719T100805/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240719T100805.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_MondrianForest_20240719T100805&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_MondrianForest_20240719T100805
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240729T090814 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240729T090814.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240729T090814/ Estimated sea surface temperature at 1 km spatial resolution - Mondrian forest (20240729T090814Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240729T090814_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240729T090814_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240729T090814/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240729T090814.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_MondrianForest_20240729T090814&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_MondrianForest_20240729T090814
https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240729T094659 https://erddap.s4raise.it/erddap/griddap/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240729T094659.graph https://erddap.s4raise.it/erddap/files/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240729T094659/ Estimated sea surface temperature at 1 km spatial resolution - Mondrian forest (20240729T094659Z) The dataset consists of estimated sea surface temperature (SST) obtained as the output of a machine learning model. Thermal infrared data from the Sentinel-3 mission of the Copernicus programme of the European Union, together with in situ sea-truth temperature measurements provided by colleagues at UNIGE-DISTAV and ENEA, are used to train the model within a supervised machine learning framework cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude]): estimated_sst https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240729T094659_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240729T094659_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240729T094659/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-diten_sea_surface_temperature_final_output_MondrianForest_20240729T094659.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-diten_sea_surface_temperature_final_output_MondrianForest_20240729T094659&showErrors=false&email= UNIGE-DITEN unige-diten_sea_surface_temperature_final_output_MondrianForest_20240729T094659
https://erddap.s4raise.it/erddap/griddap/noaa_forecast_gfs_3h_02 https://erddap.s4raise.it/erddap/griddap/noaa_forecast_gfs_3h_02.graph https://erddap.s4raise.it/erddap/wms/noaa_forecast_gfs_3h_02/request https://erddap.s4raise.it/erddap/files/noaa_forecast_gfs_3h_02/ Global Forecast System (GFS) model (02) Global Forecast System (GFS) model cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][latitude][longitude]): Downward_Long_Wave_Radp_Flux_surface_Mixed_intervals_Average (Downward Long-Wave Rad. Flux (Mixed_intervals Average) @ Ground or water surface, W.m-2) Upward_Long_Wave_Radp_Flux_surface_Mixed_intervals_Average (Upward Long-Wave Rad. Flux (Mixed_intervals Average) @ Ground or water surface, W.m-2) Upward_Short_Wave_Radiation_Flux_surface_Mixed_intervals_Average (Upward Short-Wave Radiation Flux (Mixed_intervals Average) @ Ground or water surface, W.m-2) Downward_Short_Wave_Radiation_Flux_surface_Mixed_intervals_Average (Downward Short-Wave Radiation Flux (Mixed_intervals Average) @ Ground or water surface, W.m-2) https://erddap.s4raise.it/erddap/metadata/fgdc/xml/noaa_forecast_gfs_3h_02_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/noaa_forecast_gfs_3h_02_iso19115.xml https://erddap.s4raise.it/erddap/info/noaa_forecast_gfs_3h_02/index.xhtml https://www.noaa.gov/ https://erddap.s4raise.it/erddap/rss/noaa_forecast_gfs_3h_02.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=noaa_forecast_gfs_3h_02&showErrors=false&email= NOAA noaa_forecast_gfs_3h_02
https://erddap.s4raise.it/erddap/griddap/noaa_forecast_gfs_3h_03 https://erddap.s4raise.it/erddap/griddap/noaa_forecast_gfs_3h_03.graph https://erddap.s4raise.it/erddap/wms/noaa_forecast_gfs_3h_03/request https://erddap.s4raise.it/erddap/files/noaa_forecast_gfs_3h_03/ Global Forecast System (GFS) model (03) Global Forecast System (GFS) model cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][latitude][longitude]): Geopotential_height_surface (Geopotential height @ Ground or water surface, gpm) Pressure_reduced_to_MSL_msl (Pressure reduced to MSL @ Mean sea level, Pa) Pressure_surface (Pressure @ Ground or water surface, Pa) Temperature_surface (Temperature @ Ground or water surface, K) Water_equivalent_of_accumulated_snow_depth_surface (Water equivalent of accumulated snow depth @ Ground or water surface, kg.m-2) https://erddap.s4raise.it/erddap/metadata/fgdc/xml/noaa_forecast_gfs_3h_03_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/noaa_forecast_gfs_3h_03_iso19115.xml https://erddap.s4raise.it/erddap/info/noaa_forecast_gfs_3h_03/index.xhtml https://www.noaa.gov/ https://erddap.s4raise.it/erddap/rss/noaa_forecast_gfs_3h_03.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=noaa_forecast_gfs_3h_03&showErrors=false&email= NOAA noaa_forecast_gfs_3h_03
https://erddap.s4raise.it/erddap/griddap/noaa_forecast_gfs_3h_04 https://erddap.s4raise.it/erddap/griddap/noaa_forecast_gfs_3h_04.graph https://erddap.s4raise.it/erddap/wms/noaa_forecast_gfs_3h_04/request https://erddap.s4raise.it/erddap/files/noaa_forecast_gfs_3h_04/ Global Forecast System (GFS) model (04) Global Forecast System (GFS) model cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][altitude][latitude][longitude]): Temperature_height_above_ground (Temperature @ Specified height level above ground, K) https://erddap.s4raise.it/erddap/metadata/fgdc/xml/noaa_forecast_gfs_3h_04_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/noaa_forecast_gfs_3h_04_iso19115.xml https://erddap.s4raise.it/erddap/info/noaa_forecast_gfs_3h_04/index.xhtml https://www.noaa.gov/ https://erddap.s4raise.it/erddap/rss/noaa_forecast_gfs_3h_04.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=noaa_forecast_gfs_3h_04&showErrors=false&email= NOAA noaa_forecast_gfs_3h_04
https://erddap.s4raise.it/erddap/griddap/noaa_forecast_gfs_3h_05 https://erddap.s4raise.it/erddap/griddap/noaa_forecast_gfs_3h_05.graph https://erddap.s4raise.it/erddap/files/noaa_forecast_gfs_3h_05/ Global Forecast System (GFS) model (05) Global Forecast System (GFS) model cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][altitude][latitude][longitude]): u_component_of_wind_height_above_ground (u-component of wind @ Specified height level above ground, m/s) v_component_of_wind_height_above_ground (v-component of wind @ Specified height level above ground, m/s) https://erddap.s4raise.it/erddap/metadata/fgdc/xml/noaa_forecast_gfs_3h_05_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/noaa_forecast_gfs_3h_05_iso19115.xml https://erddap.s4raise.it/erddap/info/noaa_forecast_gfs_3h_05/index.xhtml https://www.noaa.gov/ https://erddap.s4raise.it/erddap/rss/noaa_forecast_gfs_3h_05.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=noaa_forecast_gfs_3h_05&showErrors=false&email= NOAA noaa_forecast_gfs_3h_05
https://erddap.s4raise.it/erddap/griddap/noaa_forecast_gfs_3h_06 https://erddap.s4raise.it/erddap/griddap/noaa_forecast_gfs_3h_06.graph https://erddap.s4raise.it/erddap/wms/noaa_forecast_gfs_3h_06/request https://erddap.s4raise.it/erddap/files/noaa_forecast_gfs_3h_06/ Global Forecast System (GFS) model (06) Global Forecast System (GFS) model cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][altitude][latitude][longitude]): Relative_humidity_height_above_ground (Relative humidity @ Specified height level above ground, percent) https://erddap.s4raise.it/erddap/metadata/fgdc/xml/noaa_forecast_gfs_3h_06_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/noaa_forecast_gfs_3h_06_iso19115.xml https://erddap.s4raise.it/erddap/info/noaa_forecast_gfs_3h_06/index.xhtml https://www.noaa.gov/ https://erddap.s4raise.it/erddap/rss/noaa_forecast_gfs_3h_06.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=noaa_forecast_gfs_3h_06&showErrors=false&email= NOAA noaa_forecast_gfs_3h_06
https://erddap.s4raise.it/erddap/griddap/noaa_forecast_gfs_humidity https://erddap.s4raise.it/erddap/griddap/noaa_forecast_gfs_humidity.graph https://erddap.s4raise.it/erddap/files/noaa_forecast_gfs_humidity/ Global Forecast System (GFS) model - Relative humidity at ground level Global Forecast System (GFS) model - Relative humidity at ground level cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][latitude][longitude]): Relative_humidity_height_above_ground https://erddap.s4raise.it/erddap/metadata/fgdc/xml/noaa_forecast_gfs_humidity_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/noaa_forecast_gfs_humidity_iso19115.xml https://erddap.s4raise.it/erddap/info/noaa_forecast_gfs_humidity/index.xhtml http://188.166.63.249/thredds/dodsC/SINDBAD-GFS-1HR/SINDBAD-GFS-Relative_humidity_height_above_ground.nc.html https://erddap.s4raise.it/erddap/rss/noaa_forecast_gfs_humidity.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=noaa_forecast_gfs_humidity&showErrors=false&email= NOAA noaa_forecast_gfs_humidity
https://erddap.s4raise.it/erddap/griddap/noaa_forecast_gfs_temperature_height_above_ground https://erddap.s4raise.it/erddap/griddap/noaa_forecast_gfs_temperature_height_above_ground.graph https://erddap.s4raise.it/erddap/files/noaa_forecast_gfs_temperature_height_above_ground/ Global Forecast System (GFS) model - Temperature  heght above ground Global Forecast System (GFS) model - Temperature  heght above ground cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][latitude][longitude]): Temperature_height_above_ground https://erddap.s4raise.it/erddap/metadata/fgdc/xml/noaa_forecast_gfs_temperature_height_above_ground_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/noaa_forecast_gfs_temperature_height_above_ground_iso19115.xml https://erddap.s4raise.it/erddap/info/noaa_forecast_gfs_temperature_height_above_ground/index.xhtml http://188.166.63.249/thredds/dodsC/SINDBAD-GFS-1HR/SINDBAD-GFS-Temperature_height_above_ground.nc.html https://erddap.s4raise.it/erddap/rss/noaa_forecast_gfs_temperature_height_above_ground.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=noaa_forecast_gfs_temperature_height_above_ground&showErrors=false&email= NOAA noaa_forecast_gfs_temperature_height_above_ground
https://erddap.s4raise.it/erddap/griddap/noaa_forecast_gfs_temperature_isobaric https://erddap.s4raise.it/erddap/griddap/noaa_forecast_gfs_temperature_isobaric.graph https://erddap.s4raise.it/erddap/wms/noaa_forecast_gfs_temperature_isobaric/request https://erddap.s4raise.it/erddap/files/noaa_forecast_gfs_temperature_isobaric/ Global Forecast System (GFS) model - Temperature isobaric Global Forecast System (GFS) model - Temperature isobaric cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][isobaric][latitude][longitude]): Temperature_isobaric (K) https://erddap.s4raise.it/erddap/metadata/fgdc/xml/noaa_forecast_gfs_temperature_isobaric_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/noaa_forecast_gfs_temperature_isobaric_iso19115.xml https://erddap.s4raise.it/erddap/info/noaa_forecast_gfs_temperature_isobaric/index.xhtml http://188.166.63.249/thredds/dodsC/SINDBAD-GFS-1HR/SINDBAD-GFS-Temperature_isobaric.nc.html https://erddap.s4raise.it/erddap/rss/noaa_forecast_gfs_temperature_isobaric.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=noaa_forecast_gfs_temperature_isobaric&showErrors=false&email= NOAA noaa_forecast_gfs_temperature_isobaric
https://erddap.s4raise.it/erddap/griddap/noaa_forecast_gfs_wind https://erddap.s4raise.it/erddap/griddap/noaa_forecast_gfs_wind.graph https://erddap.s4raise.it/erddap/files/noaa_forecast_gfs_wind/ Global Forecast System (GFS) model - Wind Global Forecast System (GFS) model - Wind cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][latitude][longitude]): eastward_component_of_wind_height_above_ground (m/s) northward_component_of_wind_height_above_ground (m/s) https://erddap.s4raise.it/erddap/metadata/fgdc/xml/noaa_forecast_gfs_wind_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/noaa_forecast_gfs_wind_iso19115.xml https://erddap.s4raise.it/erddap/info/noaa_forecast_gfs_wind/index.xhtml http://188.166.63.249/thredds/dodsC/SINDBAD-GFS-1HR/SINDBAD-GFS-wind_height_above_ground.nc.html https://erddap.s4raise.it/erddap/rss/noaa_forecast_gfs_wind.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=noaa_forecast_gfs_wind&showErrors=false&email= NOAA noaa_forecast_gfs_wind
https://erddap.s4raise.it/erddap/griddap/cnr-ismar_HFRADAR_TIRLIG_Totals https://erddap.s4raise.it/erddap/griddap/cnr-ismar_HFRADAR_TIRLIG_Totals.graph https://erddap.s4raise.it/erddap/wms/cnr-ismar_HFRADAR_TIRLIG_Totals/request HF RADAR TOTAL, TirLig (HFRADAR TIRLIG Totals), 2019-present High Frequency (HF) RADAR TOTAL - TirLig. National Research Council - Institute of Marine Science - S.S. Lerici; National Research Council - Institute of Marine Science; S.S. Lerici data from https://erddap.emodnet-physics.eu/erddap/griddap/HFRADAR_TIRLIG_Totals.das . cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][depth][latitude][longitude]): EWCT (West-east current component, m s-1) NSCT (South-north current component, m s-1) EWCS (Standard deviation of surface eastward sea water velocity, m s-1) NSCS (Standard deviation of surface northward sea water velocity, m s-1) CCOV (Covariance of surface sea water velocity, m2 s-2) GDOP (Geometrical dilution of precision, 1) POSITION_QC (Position quality flag, 1) QCflag (Overall quality flag, 1) VART_QC (Variance threshold quality flag, 1) GDOP_QC (GDOP threshold quality flag, 1) DDNS_QC (Data density threshold quality flag, 1) CSPD_QC (Velocity threshold quality flag, 1) https://erddap.s4raise.it/erddap/metadata/fgdc/xml/cnr-ismar_HFRADAR_TIRLIG_Totals_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/cnr-ismar_HFRADAR_TIRLIG_Totals_iso19115.xml https://erddap.s4raise.it/erddap/info/cnr-ismar_HFRADAR_TIRLIG_Totals/index.xhtml https://www.hfrnode.eu/ https://erddap.s4raise.it/erddap/rss/cnr-ismar_HFRADAR_TIRLIG_Totals.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=cnr-ismar_HFRADAR_TIRLIG_Totals&showErrors=false&email= National Research Council - Institute of Marine Science - S.S. Lerici; National Research Council - Institute of Marine Science; S.S. Lerici cnr-ismar_HFRADAR_TIRLIG_Totals
https://erddap.s4raise.it/erddap/griddap/cmems_mod_med_phy-cur_anfc_4_2km_3D_PT1H_m https://erddap.s4raise.it/erddap/griddap/cmems_mod_med_phy-cur_anfc_4_2km_3D_PT1H_m.graph https://erddap.s4raise.it/erddap/wms/cmems_mod_med_phy-cur_anfc_4_2km_3D_PT1H_m/request https://erddap.s4raise.it/erddap/files/cmems_mod_med_phy-cur_anfc_4_2km_3D_PT1H_m/ Horizontal Velocity (3D), Hourly Mean Horizontal Velocity (3D) - Hourly Mean. Please check in CMEMS catalogue the INFO section for product MEDSEA_ANALYSISFORECAST_PHY_006_013 - http://marine.copernicus.eu cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][depth][latitude][longitude]): uo (eastward ocean current velocity, m s-1) vo (northward ocean current velocity, m s-1) https://erddap.s4raise.it/erddap/metadata/fgdc/xml/cmems_mod_med_phy-cur_anfc_4_2km_3D_PT1H_m_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/cmems_mod_med_phy-cur_anfc_4_2km_3D_PT1H_m_iso19115.xml https://erddap.s4raise.it/erddap/info/cmems_mod_med_phy-cur_anfc_4_2km_3D_PT1H_m/index.xhtml https://www.ec.gc.ca/scitech/default.asp?lang=En&n=61B33C26-1#cmc https://erddap.s4raise.it/erddap/rss/cmems_mod_med_phy-cur_anfc_4_2km_3D_PT1H_m.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=cmems_mod_med_phy-cur_anfc_4_2km_3D_PT1H_m&showErrors=false&email= Centro Euro-Mediterraneo sui Cambiamenti Climatici - CMCC, Italy cmems_mod_med_phy-cur_anfc_4_2km_3D_PT1H_m
https://erddap.s4raise.it/erddap/griddap/unige-distav_camogli_runup_scirocco https://erddap.s4raise.it/erddap/griddap/unige-distav_camogli_runup_scirocco.graph https://erddap.s4raise.it/erddap/wms/unige-distav_camogli_runup_scirocco/request https://erddap.s4raise.it/erddap/files/unige-distav_camogli_runup_scirocco/ Maximum wave run-up considering SE storms The dataset was generated using the XBeach model, a numerical tool developed to simulate the impacts of extreme events on coastal areas and their associated dynamics. In this case, the model was applied to 20 historical SE storm scenarios, also considering the storm surge (wave set-up), to estimate the wave run-up on the Camogli coast. The wave conditions were derived from the hindcast dataset produced by the MeteOcean research group at the University of Genoa (https://meteocean.science/#research), while the digital elevation model was constructed using a combination of field survey data and elevation data provided by Regione Liguria (https://geoportal.regione.liguria.it/). This approach makes it possible to define offshore wave conditions that may pose potential hazards to coastal infrastructure and human safety. cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][latitude][longitude]): zs (water level, m) zb (bed level, m) ue (Eulerian velocity in cell centre, x-component, m/s) ve (Eulerian velocity in cell centre, y-component, m/s) H (Hrms wave height based on instantaneous wave energy, m) E (wave energy, Nm/m2) L1 (wave length (used in dispersion relation), m) Qb (fraction breaking waves) sedero (cum. sedimentation/erosion, m) thetamean (mean wave angle, rad) https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-distav_camogli_runup_scirocco_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-distav_camogli_runup_scirocco_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-distav_camogli_runup_scirocco/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-distav_camogli_runup_scirocco.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-distav_camogli_runup_scirocco&showErrors=false&email= UNIGE-DISTAV unige-distav_camogli_runup_scirocco
https://erddap.s4raise.it/erddap/griddap/unige-distav_camogli_runup_libeccio https://erddap.s4raise.it/erddap/griddap/unige-distav_camogli_runup_libeccio.graph https://erddap.s4raise.it/erddap/wms/unige-distav_camogli_runup_libeccio/request https://erddap.s4raise.it/erddap/files/unige-distav_camogli_runup_libeccio/ Maximum wave run-up considering SW storms The dataset was generated using the XBeach model, a numerical tool developed to simulate the impacts of extreme events on coastal areas and their associated dynamics. In this case, the model was applied to 20 historical SW storm scenarios, also considering the storm surge (wave set-up), to estimate the wave run-up on the Camogli coast. The wave conditions were derived from the hindcast dataset produced by the MeteOcean research group at the University of Genoa (https://meteocean.science/#research), while the digital elevation model was constructed using a combination of field survey data and elevation data provided by Regione Liguria (https://geoportal.regione.liguria.it/). This approach makes it possible to define offshore wave conditions that may pose potential hazards to coastal infrastructure and human safety. cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][latitude][longitude]): zs (water level, m) zb (bed level, m) ue (Eulerian velocity in cell centre, x-component, m/s) ve (Eulerian velocity in cell centre, y-component, m/s) H (Hrms wave height based on instantaneous wave energy, m) E (wave energy, Nm/m2) L1 (wave length (used in dispersion relation), m) Qb (fraction breaking waves) sedero (cum. sedimentation/erosion, m) thetamean (mean wave angle, rad) https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-distav_camogli_runup_libeccio_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-distav_camogli_runup_libeccio_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-distav_camogli_runup_libeccio/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-distav_camogli_runup_libeccio.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-distav_camogli_runup_libeccio&showErrors=false&email= UNIGE-DISTAV unige-distav_camogli_runup_libeccio
https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_ww3 https://erddap.s4raise.it/erddap/griddap/unige-dicca_forecast_ww3.graph https://erddap.s4raise.it/erddap/wms/unige-dicca_forecast_ww3/request Mediterranean Wave and Wind Forecast Five days hourly forecast of wind and ocean waves generation and propagation in the Mediterranean basin. Resolution from 25km on open ocean to 300 m close to the shoreline cdm_data_type = Grid VARIABLES (all of which use the dimensions [latitude][longitude][time]): hs (significant height of wind and swell waves, m) fp (wave peak frequency, s-1) dir (wave mean direction, degree) dp (peak direction, degree) tm (mean period, s) uwnd (Eastward Wind, m s-1) vwnd (Northward Wind, m s-1) https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-dicca_forecast_ww3_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-dicca_forecast_ww3_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-dicca_forecast_ww3/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-dicca_forecast_ww3.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-dicca_forecast_ww3&showErrors=false&email= UNIGE-DICCA unige-dicca_forecast_ww3
https://erddap.s4raise.it/erddap/griddap/cmems_mod_med_bgc-pft_anfc_4_2km_P1D_m https://erddap.s4raise.it/erddap/griddap/cmems_mod_med_bgc-pft_anfc_4_2km_P1D_m.graph https://erddap.s4raise.it/erddap/wms/cmems_mod_med_bgc-pft_anfc_4_2km_P1D_m/request https://erddap.s4raise.it/erddap/files/cmems_mod_med_bgc-pft_anfc_4_2km_P1D_m/ Phytoplankton Carbon Biomass, Zooplankton Carbon Biomass, Chlorophyll and PFTs (3D), Daily Mean Phytoplankton Carbon Biomass, Zooplankton Carbon Biomass, Chlorophyll and PFTs (3D) - Daily Mean. Please check in CMEMS catalogue the INFO section for product MEDSEA_ANALYSISFORECAST_BGC_006_014 - http://marine.copernicus.eu/ cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][depth][latitude][longitude]): chl (Chlorophyll, mg m-3) diatoC (Diatoms Carbon Biomass, MMol' 'M-3) diatoChla (Diatoms Chlorophyll concentration, mg m-3) dinoC (Dinoflagellates Carbon Biomass, MMol' 'M-3) dinoChla (Dinoflagellates Chlorophyll concentration, mg m-3) nanoC (Nanophytoplankton Carbon Biomass, MMol' 'M-3) nanoChla (Nanophytoplankton Chlorophyll concentration, mg m-3) phyc (Phytoplankton Carbon Biomass, MMol' 'M-3) picoC (Picophytoplankton Carbon Biomass, MMol' 'M-3) picoChla (Picophytoplankton Chlorophyll concentration, mg m-3) zooc (Zooplankton Carbon Biomass, MMol' 'M-3) https://erddap.s4raise.it/erddap/metadata/fgdc/xml/cmems_mod_med_bgc-pft_anfc_4_2km_P1D_m_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/cmems_mod_med_bgc-pft_anfc_4_2km_P1D_m_iso19115.xml https://erddap.s4raise.it/erddap/info/cmems_mod_med_bgc-pft_anfc_4_2km_P1D_m/index.xhtml ??? https://erddap.s4raise.it/erddap/rss/cmems_mod_med_bgc-pft_anfc_4_2km_P1D_m.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=cmems_mod_med_bgc-pft_anfc_4_2km_P1D_m&showErrors=false&email= OGS, Trieste - Italy cmems_mod_med_bgc-pft_anfc_4_2km_P1D_m
https://erddap.s4raise.it/erddap/griddap/cmems_mod_med_phy-sal_anfc_4_2km_2D_PT1H_m https://erddap.s4raise.it/erddap/griddap/cmems_mod_med_phy-sal_anfc_4_2km_2D_PT1H_m.graph https://erddap.s4raise.it/erddap/wms/cmems_mod_med_phy-sal_anfc_4_2km_2D_PT1H_m/request https://erddap.s4raise.it/erddap/files/cmems_mod_med_phy-sal_anfc_4_2km_2D_PT1H_m/ Sea Surface Salinity (2D), Hourly Mean Sea Surface Salinity (2D) - Hourly Mean. Please check in CMEMS catalogue the INFO section for product MEDSEA_ANALYSISFORECAST_PHY_006_013 - http://marine.copernicus.eu cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][latitude][longitude]): so (salinity, PSU) https://erddap.s4raise.it/erddap/metadata/fgdc/xml/cmems_mod_med_phy-sal_anfc_4_2km_2D_PT1H_m_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/cmems_mod_med_phy-sal_anfc_4_2km_2D_PT1H_m_iso19115.xml https://erddap.s4raise.it/erddap/info/cmems_mod_med_phy-sal_anfc_4_2km_2D_PT1H_m/index.xhtml https://www.ec.gc.ca/scitech/default.asp?lang=En&n=61B33C26-1#cmc https://erddap.s4raise.it/erddap/rss/cmems_mod_med_phy-sal_anfc_4_2km_2D_PT1H_m.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=cmems_mod_med_phy-sal_anfc_4_2km_2D_PT1H_m&showErrors=false&email= Centro Euro-Mediterraneo sui Cambiamenti Climatici - CMCC, Italy cmems_mod_med_phy-sal_anfc_4_2km_2D_PT1H_m
https://erddap.s4raise.it/erddap/griddap/cmems_mod_med_phy-tem_anfc_4_2km_3D_PT1H_m https://erddap.s4raise.it/erddap/griddap/cmems_mod_med_phy-tem_anfc_4_2km_3D_PT1H_m.graph https://erddap.s4raise.it/erddap/wms/cmems_mod_med_phy-tem_anfc_4_2km_3D_PT1H_m/request https://erddap.s4raise.it/erddap/files/cmems_mod_med_phy-tem_anfc_4_2km_3D_PT1H_m/ Sea Temperature (3D), Hourly Mean Sea Temperature (3D) - Hourly Mean. Please check in CMEMS catalogue the INFO section for product MEDSEA_ANALYSISFORECAST_PHY_006_013 - http://marine.copernicus.eu cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][depth][latitude][longitude]): thetao (sea temperature, degree_C) https://erddap.s4raise.it/erddap/metadata/fgdc/xml/cmems_mod_med_phy-tem_anfc_4_2km_3D_PT1H_m_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/cmems_mod_med_phy-tem_anfc_4_2km_3D_PT1H_m_iso19115.xml https://erddap.s4raise.it/erddap/info/cmems_mod_med_phy-tem_anfc_4_2km_3D_PT1H_m/index.xhtml https://www.ec.gc.ca/scitech/default.asp?lang=En&n=61B33C26-1#cmc https://erddap.s4raise.it/erddap/rss/cmems_mod_med_phy-tem_anfc_4_2km_3D_PT1H_m.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=cmems_mod_med_phy-tem_anfc_4_2km_3D_PT1H_m&showErrors=false&email= Centro Euro-Mediterraneo sui Cambiamenti Climatici - CMCC, Italy cmems_mod_med_phy-tem_anfc_4_2km_3D_PT1H_m
https://erddap.s4raise.it/erddap/griddap/unige-distav_voltri_water_level_scirocco https://erddap.s4raise.it/erddap/griddap/unige-distav_voltri_water_level_scirocco.graph https://erddap.s4raise.it/erddap/wms/unige-distav_voltri_water_level_scirocco/request https://erddap.s4raise.it/erddap/files/unige-distav_voltri_water_level_scirocco/ Water level considering SE storms The dataset was generated using the XBeach model, a numerical tool developed to simulate the impacts of extreme events on coastal areas and their associated dynamics. In this case, the model was applied to 20 historical SE storm scenarios to estimate water level under extreme conditions. The wave conditions were derived from the hindcast dataset produced by the MeteOcean research group at the University of Genoa (https://meteocean.science/#research), while the digital elevation model was constructed using a combination of field survey data and elevation data provided by Regione Liguria (https://geoportal.regione.liguria.it/). This approach makes it possible to define offshore wave conditions that may pose potential hazards to coastal infrastructure and human safety. cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][latitude][longitude]): zs (water level, m) zb (bed level, m) ue (Eulerian velocity in cell centre, x-component, m/s) ve (Eulerian velocity in cell centre, y-component, m/s) H (Hrms wave height based on instantaneous wave energy, m) E (wave energy, Nm/m2) https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-distav_voltri_water_level_scirocco_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-distav_voltri_water_level_scirocco_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-distav_voltri_water_level_scirocco/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-distav_voltri_water_level_scirocco.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-distav_voltri_water_level_scirocco&showErrors=false&email= UNIGE-DISTAV unige-distav_voltri_water_level_scirocco
https://erddap.s4raise.it/erddap/griddap/unige-distav_voltri_water_level_scirocco_setup https://erddap.s4raise.it/erddap/griddap/unige-distav_voltri_water_level_scirocco_setup.graph https://erddap.s4raise.it/erddap/wms/unige-distav_voltri_water_level_scirocco_setup/request https://erddap.s4raise.it/erddap/files/unige-distav_voltri_water_level_scirocco_setup/ Water level considering SE storms and storm surge The dataset was generated using the XBeach model, a numerical tool developed to simulate the impacts of extreme events on coastal areas and their associated dynamics. In this case, the model was applied to 20 historical SE storm scenarios, also considering the storm surge (wave set-up) to estimate water level under extreme conditions. The wave conditions were derived from the hindcast dataset produced by the MeteOcean research group at the University of Genoa (https://meteocean.science/#research), while the digital elevation model was constructed using a combination of field survey data and elevation data provided by Regione Liguria (https://geoportal.regione.liguria.it/). This approach makes it possible to define offshore wave conditions that may pose potential hazards to coastal infrastructure and human safety. cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][latitude][longitude]): zs (water level, m) zb (bed level, m) ue (Eulerian velocity in cell centre, x-component, m/s) ve (Eulerian velocity in cell centre, y-component, m/s) H (Hrms wave height based on instantaneous wave energy, m) E (wave energy, Nm/m2) https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-distav_voltri_water_level_scirocco_setup_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-distav_voltri_water_level_scirocco_setup_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-distav_voltri_water_level_scirocco_setup/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-distav_voltri_water_level_scirocco_setup.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-distav_voltri_water_level_scirocco_setup&showErrors=false&email= UNIGE-DISTAV unige-distav_voltri_water_level_scirocco_setup
https://erddap.s4raise.it/erddap/griddap/unige-distav_voltri_water_level_libeccio https://erddap.s4raise.it/erddap/griddap/unige-distav_voltri_water_level_libeccio.graph https://erddap.s4raise.it/erddap/wms/unige-distav_voltri_water_level_libeccio/request https://erddap.s4raise.it/erddap/files/unige-distav_voltri_water_level_libeccio/ Water level considering SW storms The dataset was generated using the XBeach model, a numerical tool developed to simulate the impacts of extreme events on coastal areas and their associated dynamics. In this case, the model was applied to 20 historical SW storm scenarios to estimate water level under extreme conditions. The wave conditions were derived from the hindcast dataset produced by the MeteOcean research group at the University of Genoa (https://meteocean.science/#research), while the digital elevation model was constructed using a combination of field survey data and elevation data provided by Regione Liguria (https://geoportal.regione.liguria.it/). This approach makes it possible to define offshore wave conditions that may pose potential hazards to coastal infrastructure and human safety. cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][latitude][longitude]): zs (water level, m) zb (bed level, m) ue (Eulerian velocity in cell centre, x-component, m/s) ve (Eulerian velocity in cell centre, y-component, m/s) H (Hrms wave height based on instantaneous wave energy, m) E (wave energy, Nm/m2) https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-distav_voltri_water_level_libeccio_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-distav_voltri_water_level_libeccio_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-distav_voltri_water_level_libeccio/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-distav_voltri_water_level_libeccio.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-distav_voltri_water_level_libeccio&showErrors=false&email= UNIGE-DISTAV unige-distav_voltri_water_level_libeccio
https://erddap.s4raise.it/erddap/griddap/unige-distav_voltri_water_level_libeccio_setup https://erddap.s4raise.it/erddap/griddap/unige-distav_voltri_water_level_libeccio_setup.graph https://erddap.s4raise.it/erddap/wms/unige-distav_voltri_water_level_libeccio_setup/request https://erddap.s4raise.it/erddap/files/unige-distav_voltri_water_level_libeccio_setup/ Water level considering SW storms and storm surge The dataset was generated using the XBeach model, a numerical tool developed to simulate the impacts of extreme events on coastal areas and their associated dynamics. In this case, the model was applied to 20 historical SW storm scenarios, also considering the storm surge (wave set-up) to estimate water level under extreme conditions. The wave conditions were derived from the hindcast dataset produced by the MeteOcean research group at the University of Genoa (https://meteocean.science/#research), while the digital elevation model was constructed using a combination of field survey data and elevation data provided by Regione Liguria (https://geoportal.regione.liguria.it/). This approach makes it possible to define offshore wave conditions that may pose potential hazards to coastal infrastructure and human safety. cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][latitude][longitude]): zs (water level, m) zb (bed level, m) ue (Eulerian velocity in cell centre, x-component, m/s) ve (Eulerian velocity in cell centre, y-component, m/s) H (Hrms wave height based on instantaneous wave energy, m) E (wave energy, Nm/m2) https://erddap.s4raise.it/erddap/metadata/fgdc/xml/unige-distav_voltri_water_level_libeccio_setup_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/unige-distav_voltri_water_level_libeccio_setup_iso19115.xml https://erddap.s4raise.it/erddap/info/unige-distav_voltri_water_level_libeccio_setup/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/unige-distav_voltri_water_level_libeccio_setup.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=unige-distav_voltri_water_level_libeccio_setup&showErrors=false&email= UNIGE-DISTAV unige-distav_voltri_water_level_libeccio_setup
https://erddap.s4raise.it/erddap/griddap/cmems_mod_med_wav_anfc_4_2km_PT1H_i https://erddap.s4raise.it/erddap/griddap/cmems_mod_med_wav_anfc_4_2km_PT1H_i.graph https://erddap.s4raise.it/erddap/wms/cmems_mod_med_wav_anfc_4_2km_PT1H_i/request https://erddap.s4raise.it/erddap/files/cmems_mod_med_wav_anfc_4_2km_PT1H_i/ Wave fields (2D), Hourly Instantaneous Wave fields (2D) - Hourly Instantaneous. Please check in CMEMS catalogue the INFO section for product MEDSEA_ANALYSISFORECAST_WAV_006_017 - http://marine.copernicus.eu cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][latitude][longitude]): VCMX (Maximum crest trough wave height (Hc,max), m) VHM0 (Spectral significant wave height (Hm0), m) VHM0_SW1 (Spectral significant primary swell wave height, m) VHM0_SW2 (Spectral significant secondary swell wave height, m) VHM0_WW (Spectral significant wind wave height, m) VMDR (Mean wave direction from (Mdir), degree) VMDR_SW1 (Mean primary swell wave direction from, degree) VMDR_SW2 (Mean secondary swell wave direction from, degree) VMDR_WW (Mean wind wave direction from, degree) VMXL (Height of the highest crest, m) VPED (Wave principal direction at spectral peak, degree) VSDX (Stokes drift U, m/s) VSDY (Stokes drift V, m/s) VTM01_SW1 (Spectral moments (0,1) primary swell wave period, s) VTM01_SW2 (Spectral moments (0,1) secondary swell wave period, s) VTM01_WW (Spectral moments (0,1) wind wave period, s) VTM02 (Spectral moments (0,2) wave period (Tm02), s) VTM10 (Spectral moments (-1,0) wave period (Tm-10), s) VTPK (Wave period at spectral peak / peak period (Tp), s) https://erddap.s4raise.it/erddap/metadata/fgdc/xml/cmems_mod_med_wav_anfc_4_2km_PT1H_i_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/cmems_mod_med_wav_anfc_4_2km_PT1H_i_iso19115.xml https://erddap.s4raise.it/erddap/info/cmems_mod_med_wav_anfc_4_2km_PT1H_i/index.xhtml ??? https://erddap.s4raise.it/erddap/rss/cmems_mod_med_wav_anfc_4_2km_PT1H_i.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=cmems_mod_med_wav_anfc_4_2km_PT1H_i&showErrors=false&email= HCMR -Athens,Greece cmems_mod_med_wav_anfc_4_2km_PT1H_i
https://erddap.s4raise.it/erddap/griddap/cima_forecast_1_5km_01 https://erddap.s4raise.it/erddap/griddap/cima_forecast_1_5km_01.graph https://erddap.s4raise.it/erddap/wms/cima_forecast_1_5km_01/request WRF (Weather Research and Forecasting Model)  1.5 km (01) WRF-1.5km OL: Open loop configuration (without data assimilation) with 3 two-way nested domains respectively having spatial resolution 13.5, 4.5 and 1.5 km with 50 vertical levels. The analysis and boundary data (hourly frequency) data are obtained from the Global Forecasting System (GFS) model at 0.25 degrees of resolution. One run per day (00 UTC) is made with the GFS data with a forecast time horizon of 48 hours to have 2 full days of forecasting (hourly time resolution). This forecast is performed on computing resources at CINECA (about 1600 cores) and is delivered to within 7:00 UTC. cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][latitude][longitude]): Q2 (kg kg-1) T2 (K) TH2 (K) PSFC (Pa) U10 (Eastward Wind Component, m s-1) V10 (Northward Wind Component, m s-1) LPI (m^2 s-2) ACSNOW (kg m-2) RAINC (mm) RAINNC (mm) SNOWNC (mm) GRAUPELNC (mm) HAILNC (mm) SWDOWN (W m-2) SWDOWNC (W m-2) PBLH (m) HFX (W m-2) QFX (kg m-2 s-1) LH (W m-2) WSPD10MAX (WSPD10 MAX, m s-1) W_UP_MAX (m s-1) ... (10 more variables) https://erddap.s4raise.it/erddap/metadata/fgdc/xml/cima_forecast_1_5km_01_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/cima_forecast_1_5km_01_iso19115.xml https://erddap.s4raise.it/erddap/info/cima_forecast_1_5km_01/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/cima_forecast_1_5km_01.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=cima_forecast_1_5km_01&showErrors=false&email= CIMA cima_forecast_1_5km_01
https://erddap.s4raise.it/erddap/griddap/cima_forecast_1_5km_02 https://erddap.s4raise.it/erddap/griddap/cima_forecast_1_5km_02.graph https://erddap.s4raise.it/erddap/wms/cima_forecast_1_5km_02/request WRF (Weather Research and Forecasting Model)  1.5 km (02) WRF-1.5km OL: Open loop configuration (without data assimilation) with 3 two-way nested domains respectively having spatial resolution 13.5, 4.5 and 1.5 km with 50 vertical levels. The analysis and boundary data (hourly frequency) data are obtained from the Global Forecasting System (GFS) model at 0.25 degrees of resolution. One run per day (00 UTC) is made with the GFS data with a forecast time horizon of 48 hours to have 2 full days of forecasting (hourly time resolution). This forecast is performed on computing resources at CINECA (about 1600 cores) and is delivered to within 7:00 UTC. cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][lev][latitude][longitude]): U_PL (m s-1) V_PL (m s-1) T_PL (K) RH_PL (Relative Humidity, percent) GHT_PL (m) S_PL (m s-1) TD_PL (K) Q_PL (kg/kg) https://erddap.s4raise.it/erddap/metadata/fgdc/xml/cima_forecast_1_5km_02_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/cima_forecast_1_5km_02_iso19115.xml https://erddap.s4raise.it/erddap/info/cima_forecast_1_5km_02/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/cima_forecast_1_5km_02.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=cima_forecast_1_5km_02&showErrors=false&email= CIMA cima_forecast_1_5km_02
https://erddap.s4raise.it/erddap/griddap/cima_forecast_2_5km_01 https://erddap.s4raise.it/erddap/griddap/cima_forecast_2_5km_01.graph https://erddap.s4raise.it/erddap/wms/cima_forecast_2_5km_01/request WRF (Weather Research and Forecasting Model)  2.5 km including 3DVAR assimilation (radar data) (01) Configuration with 3DVAR variational assimilation with 3 two-way nested domains respectively with spatial resolution 22.5, 7.5 and 2.5 km with 50 vertical levels. The analysis data and boundary conditions (with tri-hourly frequency) are obtained from the GFS model at 0.25 degrees of resolution. This forecast is performed on computing resources at CIMA and is delivered within 3:30 UTC. The assimilation scheme is performed as it follows: WRF-2.5 km is initialized with the GFS model of the 18UTC, whose analysis is integrated, by means of 3DVAR, by CAPPI radar remote sensing data of the Italian Civil Protection Department (ICPD). The WRF model is thus executed for 3 hours until 21UTC, when a second 3DVAR assimilation cycle is applied. Finally, the WRF model is executed until 00UTC when the final assimilation cycle is performed. The simulation is then carried out for a further 48 hours starting from 00UTC in order to have 2 complete days of forecasting. cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][latitude][longitude]): Q2 (kg kg-1) T2 (K) TH2 (K) PSFC (Pa) U10 (Eastward Wind Component, m s-1) V10 (Northward Wind Component, m s-1) LPI (m^2 s-2) ACSNOW (kg m-2) RAINC (mm) RAINNC (mm) SNOWNC (mm) GRAUPELNC (mm) HAILNC (mm) SWDOWN (W m-2) SWDOWNC (W m-2) PBLH (m) HFX (W m-2) QFX (kg m-2 s-1) ... (11 more variables) https://erddap.s4raise.it/erddap/metadata/fgdc/xml/cima_forecast_2_5km_01_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/cima_forecast_2_5km_01_iso19115.xml https://erddap.s4raise.it/erddap/info/cima_forecast_2_5km_01/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/cima_forecast_2_5km_01.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=cima_forecast_2_5km_01&showErrors=false&email= CIMA cima_forecast_2_5km_01
https://erddap.s4raise.it/erddap/griddap/cima_forecast_2_5km_02 https://erddap.s4raise.it/erddap/griddap/cima_forecast_2_5km_02.graph https://erddap.s4raise.it/erddap/wms/cima_forecast_2_5km_02/request WRF (Weather Research and Forecasting Model)  2.5 km including 3DVAR assimilation (radar data) (02) Configuration with 3DVAR variational assimilation with 3 two-way nested domains respectively with spatial resolution 22.5, 7.5 and 2.5 km with 50 vertical levels. The analysis data and boundary conditions (with tri-hourly frequency) are obtained from the GFS model at 0.25 degrees of resolution. This forecast is performed on computing resources at CIMA and is delivered within 3:30 UTC. The assimilation scheme is performed as it follows: WRF-2.5 km is initialized with the GFS model of the 18UTC, whose analysis is integrated, by means of 3DVAR, by CAPPI radar remote sensing data of the Italian Civil Protection Department (ICPD). The WRF model is thus executed for 3 hours until 21UTC, when a second 3DVAR assimilation cycle is applied. Finally, the WRF model is executed until 00UTC when the final assimilation cycle is performed. The simulation is then carried out for a further 48 hours starting from 00UTC in order to have 2 complete days of forecasting. cdm_data_type = Grid VARIABLES (all of which use the dimensions [time][lev][latitude][longitude]): U_PL (m s-1) V_PL (m s-1) T_PL (K) RH_PL (Relative Humidity, percent) GHT_PL (m) S_PL (m s-1) TD_PL (K) Q_PL (kg/kg) https://erddap.s4raise.it/erddap/metadata/fgdc/xml/cima_forecast_2_5km_02_fgdc.xml https://erddap.s4raise.it/erddap/metadata/iso19115/xml/cima_forecast_2_5km_02_iso19115.xml https://erddap.s4raise.it/erddap/info/cima_forecast_2_5km_02/index.xhtml https://www.raiseliguria.it/spoke-3/ https://erddap.s4raise.it/erddap/rss/cima_forecast_2_5km_02.rss https://erddap.s4raise.it/erddap/subscriptions/add.html?datasetID=cima_forecast_2_5km_02&showErrors=false&email= CIMA cima_forecast_2_5km_02