SlideShare ist ein Scribd-Unternehmen logo
1 von 21
Constructing a long time series of soil moisture using SMOS data with statistics Leroux Delphine, CESBIO, France Yann Kerr, CESBIO, France Eric Wood, Princeton University, USA
Inventory of existing products time Aquarius SMAP 78 79 80 81 82 83 84 85 86 87 88 89 90 91 92 93 94 95 96 97 98 99 00 01 02 03 04 05 06 07 08 09 10 11 SMMR F8 F11 F13 F14 F15 AMSR-E ASCAT SMOS C X Ku Ka 12h-24h Ku Ka W 6h-18h C X K Ka 13h30-1h30 C  (active) 21h30-9h30 L 6h-18h
Inventory of existing products ,[object Object]
Structure ,[object Object],[object Object],[object Object],[object Object],[object Object]
Statistical background ,[object Object],1) Statistics theory General CDF matching Copulas 0 1 Density or histogram Cumulative density 3.5 0.15 15% of the dataset is under the value 3.5
CDF matching - Principle ,[object Object],[object Object],[object Object],u x y v 1) Statistics theory General CDF matching Copulas t y, x t x,y x,y Pr Pr x,y Pr x,y u x y v
CDF matching – Starting assumption  ,[object Object],[object Object],[object Object],1) Statistics theory General CDF matching Copulas u v Pr x,y u x y v
Copulas - Theory ,[object Object],1) Statistics theory General CDF matching Copulas
Copulas – Family examples ,[object Object],[object Object],[object Object],1) Statistics theory General CDF matching Copulas
Simulation from copulas x, u v 1 v N y 1 y N 1) Statistics theory General CDF matching Copulas t x,y x, u Pr x,y t x,y Pr x,y
Examples of Walnut Gulch, Arizona, and Little Washita, Oklahoma, USA ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],2) Results for 2010 Presentation Walnut Gulch Little Washita Jackson et al., 2010
2) Results for 2010 Presentation Walnut Gulch Little Washita R RMSE SMOS 0.82 0.040 VUA 0.75 0.138 Simu by CDF 0.80 0.054 Simu by Cop 0.77 0.043
2) Results for 2010 Presentation Walnut Gulch Little Washita R RMSE SMOS 0.78 0.049 VUA 0.59 0.148 Simu by CDF 0.71 0.059 Simu by Cop 0.71 0.043
3) Time series Results for 2009 Little Washita Walnut Gulch R RMSE VUA 0.52 0.149 Simu by CDF 0.53 0.069 Simu by Cop 0.58 0.051 R RMSE VUA 0.64 0.128 Simu by CDF 0.79 0.076 Simu by Cop 0.75 0.060
3) Time series Results for 2009 Little Washita Walnut Gulch ,[object Object],[object Object]
3) Time series Results for 2009 Little Washita Walnut Gulch ,[object Object],[object Object]
Conclusion ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Thank you (again) for your attention Any questions ?
Simulation from copulas ,[object Object],Derivative : Pr ~ U (0,1) Thus : y simulated mean  (y)
Results for Walnut Gulch, Arizona, USA Mar-Apr-May Jun-Jul-Aug Sep-Oct-Nov Original data Simulation with CDF matching Simulation with copulas R=0.50 RMSE=0.073 R=0.71 RMSE=0.058 R=0.44 RMSE=0.070 R=0.51 RMSE=0.063 R=0.68 RMSE=0.056 R=0.48 RMSE=0.058
Results for Little Washita, Oklahoma, USA Mar-Apr-May Jun-Jul-Aug Sep-Oct-Nov Original data Simulation with CDF matching Simulation with copulas R=0.87 RMSE=0.028 R=0.71 RMSE=0.071 R=0.36 RMSE=0.048 R=0.84 RMSE=0.030 R=0.70 RMSE=0.069 R=0.38 RMSE=0.040

Weitere ähnliche Inhalte

Was ist angesagt?

Klosterhalfen, Anne: Two-level Eddy Covariance Measurements Improve Land-atmo...
Klosterhalfen, Anne: Two-level Eddy Covariance Measurements Improve Land-atmo...Klosterhalfen, Anne: Two-level Eddy Covariance Measurements Improve Land-atmo...
Klosterhalfen, Anne: Two-level Eddy Covariance Measurements Improve Land-atmo...Integrated Carbon Observation System (ICOS)
 
Andy Jarvis Parasid Near Real Time Monitoring Of Habitat Change Using A Neura...
Andy Jarvis Parasid Near Real Time Monitoring Of Habitat Change Using A Neura...Andy Jarvis Parasid Near Real Time Monitoring Of Habitat Change Using A Neura...
Andy Jarvis Parasid Near Real Time Monitoring Of Habitat Change Using A Neura...CIAT
 
2005-12-05 Aerosol Characterization Using the SeaWiFS Sensor and Surface Data
2005-12-05 Aerosol Characterization Using the SeaWiFS Sensor and Surface Data2005-12-05 Aerosol Characterization Using the SeaWiFS Sensor and Surface Data
2005-12-05 Aerosol Characterization Using the SeaWiFS Sensor and Surface DataRudolf Husar
 
Inter annual insolation variability (solar resource)
Inter annual insolation variability (solar resource)Inter annual insolation variability (solar resource)
Inter annual insolation variability (solar resource)chaudharichetan
 
soil moisture retrieval.pptx
soil moisture retrieval.pptxsoil moisture retrieval.pptx
soil moisture retrieval.pptxgrssieee
 
Carlos N - CIAT Experience In Climate Modeling; Scenarios of future climate c...
Carlos N - CIAT Experience In Climate Modeling; Scenarios of future climate c...Carlos N - CIAT Experience In Climate Modeling; Scenarios of future climate c...
Carlos N - CIAT Experience In Climate Modeling; Scenarios of future climate c...Decision and Policy Analysis Program
 
Datta-Barua, URSI AT-RASC, 2015, Canary Islands, Ionospheric-Thermospheric St...
Datta-Barua, URSI AT-RASC, 2015, Canary Islands, Ionospheric-Thermospheric St...Datta-Barua, URSI AT-RASC, 2015, Canary Islands, Ionospheric-Thermospheric St...
Datta-Barua, URSI AT-RASC, 2015, Canary Islands, Ionospheric-Thermospheric St...Daniel Miladinovich
 
POLCAL_shimada.pptx
POLCAL_shimada.pptxPOLCAL_shimada.pptx
POLCAL_shimada.pptxgrssieee
 
Andy Jarvis - Parasid Near Real Time Monitoring Of Habitat Change Tnc Slt
Andy Jarvis - Parasid Near Real Time Monitoring Of Habitat Change Tnc SltAndy Jarvis - Parasid Near Real Time Monitoring Of Habitat Change Tnc Slt
Andy Jarvis - Parasid Near Real Time Monitoring Of Habitat Change Tnc SltDecision and Policy Analysis Program
 
EcoTas13 BradEvans e-Mast UNSW
EcoTas13 BradEvans e-Mast UNSWEcoTas13 BradEvans e-Mast UNSW
EcoTas13 BradEvans e-Mast UNSWTERN Australia
 
Hui-Lu-improving-flux.ppt
Hui-Lu-improving-flux.pptHui-Lu-improving-flux.ppt
Hui-Lu-improving-flux.pptgrssieee
 

Was ist angesagt? (17)

Klosterhalfen, Anne: Two-level Eddy Covariance Measurements Improve Land-atmo...
Klosterhalfen, Anne: Two-level Eddy Covariance Measurements Improve Land-atmo...Klosterhalfen, Anne: Two-level Eddy Covariance Measurements Improve Land-atmo...
Klosterhalfen, Anne: Two-level Eddy Covariance Measurements Improve Land-atmo...
 
Andy Jarvis Parasid Near Real Time Monitoring Of Habitat Change Using A Neura...
Andy Jarvis Parasid Near Real Time Monitoring Of Habitat Change Using A Neura...Andy Jarvis Parasid Near Real Time Monitoring Of Habitat Change Using A Neura...
Andy Jarvis Parasid Near Real Time Monitoring Of Habitat Change Using A Neura...
 
2005-12-05 Aerosol Characterization Using the SeaWiFS Sensor and Surface Data
2005-12-05 Aerosol Characterization Using the SeaWiFS Sensor and Surface Data2005-12-05 Aerosol Characterization Using the SeaWiFS Sensor and Surface Data
2005-12-05 Aerosol Characterization Using the SeaWiFS Sensor and Surface Data
 
2014 PV Performance Modeling Workshop: Satellite Irradiance Models and Datase...
2014 PV Performance Modeling Workshop: Satellite Irradiance Models and Datase...2014 PV Performance Modeling Workshop: Satellite Irradiance Models and Datase...
2014 PV Performance Modeling Workshop: Satellite Irradiance Models and Datase...
 
Inter annual insolation variability (solar resource)
Inter annual insolation variability (solar resource)Inter annual insolation variability (solar resource)
Inter annual insolation variability (solar resource)
 
soil moisture retrieval.pptx
soil moisture retrieval.pptxsoil moisture retrieval.pptx
soil moisture retrieval.pptx
 
Carlos N - CIAT Experience In Climate Modeling; Scenarios of future climate c...
Carlos N - CIAT Experience In Climate Modeling; Scenarios of future climate c...Carlos N - CIAT Experience In Climate Modeling; Scenarios of future climate c...
Carlos N - CIAT Experience In Climate Modeling; Scenarios of future climate c...
 
Program on Mathematical and Statistical Methods for Climate and the Earth Sys...
Program on Mathematical and Statistical Methods for Climate and the Earth Sys...Program on Mathematical and Statistical Methods for Climate and the Earth Sys...
Program on Mathematical and Statistical Methods for Climate and the Earth Sys...
 
Datta-Barua, URSI AT-RASC, 2015, Canary Islands, Ionospheric-Thermospheric St...
Datta-Barua, URSI AT-RASC, 2015, Canary Islands, Ionospheric-Thermospheric St...Datta-Barua, URSI AT-RASC, 2015, Canary Islands, Ionospheric-Thermospheric St...
Datta-Barua, URSI AT-RASC, 2015, Canary Islands, Ionospheric-Thermospheric St...
 
Program on Mathematical and Statistical Methods for Climate and the Earth Sys...
Program on Mathematical and Statistical Methods for Climate and the Earth Sys...Program on Mathematical and Statistical Methods for Climate and the Earth Sys...
Program on Mathematical and Statistical Methods for Climate and the Earth Sys...
 
#5
#5#5
#5
 
Fire Poster
Fire PosterFire Poster
Fire Poster
 
POLCAL_shimada.pptx
POLCAL_shimada.pptxPOLCAL_shimada.pptx
POLCAL_shimada.pptx
 
Andy Jarvis - Parasid Near Real Time Monitoring Of Habitat Change Tnc Slt
Andy Jarvis - Parasid Near Real Time Monitoring Of Habitat Change Tnc SltAndy Jarvis - Parasid Near Real Time Monitoring Of Habitat Change Tnc Slt
Andy Jarvis - Parasid Near Real Time Monitoring Of Habitat Change Tnc Slt
 
EcoTas13 BradEvans e-Mast UNSW
EcoTas13 BradEvans e-Mast UNSWEcoTas13 BradEvans e-Mast UNSW
EcoTas13 BradEvans e-Mast UNSW
 
CLIM: Transition Workshop - Advances in Understanding of Climate Extremes - K...
CLIM: Transition Workshop - Advances in Understanding of Climate Extremes - K...CLIM: Transition Workshop - Advances in Understanding of Climate Extremes - K...
CLIM: Transition Workshop - Advances in Understanding of Climate Extremes - K...
 
Hui-Lu-improving-flux.ppt
Hui-Lu-improving-flux.pptHui-Lu-improving-flux.ppt
Hui-Lu-improving-flux.ppt
 

Andere mochten auch

FR2.L10.3: TOWARDS VALIDATION OF SMOS LAND PRODUCTS USING THE SYNERGY BETWEE...
 FR2.L10.3: TOWARDS VALIDATION OF SMOS LAND PRODUCTS USING THE SYNERGY BETWEE... FR2.L10.3: TOWARDS VALIDATION OF SMOS LAND PRODUCTS USING THE SYNERGY BETWEE...
FR2.L10.3: TOWARDS VALIDATION OF SMOS LAND PRODUCTS USING THE SYNERGY BETWEE...grssieee
 
TH4.L10.1: SMOS SMAP SYNERGISMS FOR THE RETRIEVAL OF SOIL MOISTURE
  TH4.L10.1: SMOS SMAP SYNERGISMS FOR THE RETRIEVAL OF SOIL MOISTURE  TH4.L10.1: SMOS SMAP SYNERGISMS FOR THE RETRIEVAL OF SOIL MOISTURE
TH4.L10.1: SMOS SMAP SYNERGISMS FOR THE RETRIEVAL OF SOIL MOISTUREgrssieee
 
Jackson072311.ppt
Jackson072311.pptJackson072311.ppt
Jackson072311.pptgrssieee
 
TH1.L09 - ALGAE: A FAST ALGEBRAIC ESTIMATION OF INTERFEROGRAM PHASE OFFSETS I...
TH1.L09 - ALGAE: A FAST ALGEBRAIC ESTIMATION OF INTERFEROGRAM PHASE OFFSETS I...TH1.L09 - ALGAE: A FAST ALGEBRAIC ESTIMATION OF INTERFEROGRAM PHASE OFFSETS I...
TH1.L09 - ALGAE: A FAST ALGEBRAIC ESTIMATION OF INTERFEROGRAM PHASE OFFSETS I...grssieee
 
THE SENTINEL-1 MISSION AND ITS APPLICATION CAPABILITIES
THE SENTINEL-1 MISSION AND ITS APPLICATION CAPABILITIESTHE SENTINEL-1 MISSION AND ITS APPLICATION CAPABILITIES
THE SENTINEL-1 MISSION AND ITS APPLICATION CAPABILITIESgrssieee
 
TWO-POINT STATISTIC OF POLARIMETRIC SAR DATA TWO-POINT STATISTIC OF POLARIMET...
TWO-POINT STATISTIC OF POLARIMETRIC SAR DATA TWO-POINT STATISTIC OF POLARIMET...TWO-POINT STATISTIC OF POLARIMETRIC SAR DATA TWO-POINT STATISTIC OF POLARIMET...
TWO-POINT STATISTIC OF POLARIMETRIC SAR DATA TWO-POINT STATISTIC OF POLARIMET...grssieee
 
SEGMENTATION OF POLARIMETRIC SAR DATA WITH A MULTI-TEXTURE PRODUCT MODEL
SEGMENTATION OF POLARIMETRIC SAR DATA WITH A MULTI-TEXTURE PRODUCT MODELSEGMENTATION OF POLARIMETRIC SAR DATA WITH A MULTI-TEXTURE PRODUCT MODEL
SEGMENTATION OF POLARIMETRIC SAR DATA WITH A MULTI-TEXTURE PRODUCT MODELgrssieee
 
Tangent height accuracy of Superconducting Submillimeter-Wave Limb-Emission S...
Tangent height accuracy of Superconducting Submillimeter-Wave Limb-Emission S...Tangent height accuracy of Superconducting Submillimeter-Wave Limb-Emission S...
Tangent height accuracy of Superconducting Submillimeter-Wave Limb-Emission S...grssieee
 

Andere mochten auch (9)

FR2.L10.3: TOWARDS VALIDATION OF SMOS LAND PRODUCTS USING THE SYNERGY BETWEE...
 FR2.L10.3: TOWARDS VALIDATION OF SMOS LAND PRODUCTS USING THE SYNERGY BETWEE... FR2.L10.3: TOWARDS VALIDATION OF SMOS LAND PRODUCTS USING THE SYNERGY BETWEE...
FR2.L10.3: TOWARDS VALIDATION OF SMOS LAND PRODUCTS USING THE SYNERGY BETWEE...
 
TH4.L10.1: SMOS SMAP SYNERGISMS FOR THE RETRIEVAL OF SOIL MOISTURE
  TH4.L10.1: SMOS SMAP SYNERGISMS FOR THE RETRIEVAL OF SOIL MOISTURE  TH4.L10.1: SMOS SMAP SYNERGISMS FOR THE RETRIEVAL OF SOIL MOISTURE
TH4.L10.1: SMOS SMAP SYNERGISMS FOR THE RETRIEVAL OF SOIL MOISTURE
 
Jackson072311.ppt
Jackson072311.pptJackson072311.ppt
Jackson072311.ppt
 
TH1.L09 - ALGAE: A FAST ALGEBRAIC ESTIMATION OF INTERFEROGRAM PHASE OFFSETS I...
TH1.L09 - ALGAE: A FAST ALGEBRAIC ESTIMATION OF INTERFEROGRAM PHASE OFFSETS I...TH1.L09 - ALGAE: A FAST ALGEBRAIC ESTIMATION OF INTERFEROGRAM PHASE OFFSETS I...
TH1.L09 - ALGAE: A FAST ALGEBRAIC ESTIMATION OF INTERFEROGRAM PHASE OFFSETS I...
 
THE SENTINEL-1 MISSION AND ITS APPLICATION CAPABILITIES
THE SENTINEL-1 MISSION AND ITS APPLICATION CAPABILITIESTHE SENTINEL-1 MISSION AND ITS APPLICATION CAPABILITIES
THE SENTINEL-1 MISSION AND ITS APPLICATION CAPABILITIES
 
TWO-POINT STATISTIC OF POLARIMETRIC SAR DATA TWO-POINT STATISTIC OF POLARIMET...
TWO-POINT STATISTIC OF POLARIMETRIC SAR DATA TWO-POINT STATISTIC OF POLARIMET...TWO-POINT STATISTIC OF POLARIMETRIC SAR DATA TWO-POINT STATISTIC OF POLARIMET...
TWO-POINT STATISTIC OF POLARIMETRIC SAR DATA TWO-POINT STATISTIC OF POLARIMET...
 
SEGMENTATION OF POLARIMETRIC SAR DATA WITH A MULTI-TEXTURE PRODUCT MODEL
SEGMENTATION OF POLARIMETRIC SAR DATA WITH A MULTI-TEXTURE PRODUCT MODELSEGMENTATION OF POLARIMETRIC SAR DATA WITH A MULTI-TEXTURE PRODUCT MODEL
SEGMENTATION OF POLARIMETRIC SAR DATA WITH A MULTI-TEXTURE PRODUCT MODEL
 
Tangent height accuracy of Superconducting Submillimeter-Wave Limb-Emission S...
Tangent height accuracy of Superconducting Submillimeter-Wave Limb-Emission S...Tangent height accuracy of Superconducting Submillimeter-Wave Limb-Emission S...
Tangent height accuracy of Superconducting Submillimeter-Wave Limb-Emission S...
 
Slideshare ppt
Slideshare pptSlideshare ppt
Slideshare ppt
 

Ähnlich wie Constructing a long time series of soil moisture using SMOS data with statistics.ppt

EcoTas13 BradEvans e-MAST
EcoTas13 BradEvans e-MASTEcoTas13 BradEvans e-MAST
EcoTas13 BradEvans e-MASTTERN Australia
 
Andy Jarvis Parasid Near Real Time Monitoring Of Habitat Change Using A Neura...
Andy Jarvis Parasid Near Real Time Monitoring Of Habitat Change Using A Neura...Andy Jarvis Parasid Near Real Time Monitoring Of Habitat Change Using A Neura...
Andy Jarvis Parasid Near Real Time Monitoring Of Habitat Change Using A Neura...CIAT
 
Application of the extreme learning machine algorithm for the
Application of the extreme learning machine algorithm for theApplication of the extreme learning machine algorithm for the
Application of the extreme learning machine algorithm for themehmet şahin
 
Andy Jarvis - Parasid Near Real Time Monitoring Of Habitat Change Using A Neu...
Andy Jarvis - Parasid Near Real Time Monitoring Of Habitat Change Using A Neu...Andy Jarvis - Parasid Near Real Time Monitoring Of Habitat Change Using A Neu...
Andy Jarvis - Parasid Near Real Time Monitoring Of Habitat Change Using A Neu...CIAT
 
4_bindlish_igarss2011.pptx
4_bindlish_igarss2011.pptx4_bindlish_igarss2011.pptx
4_bindlish_igarss2011.pptxgrssieee
 
Julian R - Spatial downscaling of future climate predictions for agriculture ...
Julian R - Spatial downscaling of future climate predictions for agriculture ...Julian R - Spatial downscaling of future climate predictions for agriculture ...
Julian R - Spatial downscaling of future climate predictions for agriculture ...Decision and Policy Analysis Program
 
Andy J Humane Near Real Time Monitoring Of Deforestation Using A Neural Aug...
Andy J   Humane Near Real Time Monitoring Of Deforestation Using A Neural Aug...Andy J   Humane Near Real Time Monitoring Of Deforestation Using A Neural Aug...
Andy J Humane Near Real Time Monitoring Of Deforestation Using A Neural Aug...guest121fc9
 
Andy J Humane Near Real Time Monitoring Of Deforestation Using A Neural Aug...
Andy J   Humane Near Real Time Monitoring Of Deforestation Using A Neural Aug...Andy J   Humane Near Real Time Monitoring Of Deforestation Using A Neural Aug...
Andy J Humane Near Real Time Monitoring Of Deforestation Using A Neural Aug...guest121fc9
 
TERN eMAST : Observations and terrestrial ecosystem models : Terrestrial Ecos...
TERN eMAST : Observations and terrestrial ecosystem models : Terrestrial Ecos...TERN eMAST : Observations and terrestrial ecosystem models : Terrestrial Ecos...
TERN eMAST : Observations and terrestrial ecosystem models : Terrestrial Ecos...Brad Evans
 
Modellistica Lagrangiana in ISAC Torino - risultati e nuovi sviluppi
Modellistica Lagrangiana in ISAC Torino - risultati e nuovi sviluppiModellistica Lagrangiana in ISAC Torino - risultati e nuovi sviluppi
Modellistica Lagrangiana in ISAC Torino - risultati e nuovi sviluppiARIANET
 
Andy Jarvis PARASID Near Real Time Monitoring Of Habitat Change Using A Neur...
Andy  Jarvis PARASID Near Real Time Monitoring Of Habitat Change Using A Neur...Andy  Jarvis PARASID Near Real Time Monitoring Of Habitat Change Using A Neur...
Andy Jarvis PARASID Near Real Time Monitoring Of Habitat Change Using A Neur...CIAT
 
Understanding climate model evaluation and validation
Understanding climate model evaluation and validationUnderstanding climate model evaluation and validation
Understanding climate model evaluation and validationPuneet Sharma
 
Improving Physical Parametrizations in Climate Models using Machine Learning
Improving Physical Parametrizations in Climate Models using Machine LearningImproving Physical Parametrizations in Climate Models using Machine Learning
Improving Physical Parametrizations in Climate Models using Machine LearningNoah Brenowitz
 
Estimating SMOS error structure using triple collocation.ppt
Estimating SMOS error structure using triple collocation.pptEstimating SMOS error structure using triple collocation.ppt
Estimating SMOS error structure using triple collocation.pptgrssieee
 
2013-04-30 EE DSS Approach and Demo
2013-04-30 EE DSS Approach and Demo2013-04-30 EE DSS Approach and Demo
2013-04-30 EE DSS Approach and DemoRudolf Husar
 

Ähnlich wie Constructing a long time series of soil moisture using SMOS data with statistics.ppt (20)

EcoTas13 BradEvans e-MAST
EcoTas13 BradEvans e-MASTEcoTas13 BradEvans e-MAST
EcoTas13 BradEvans e-MAST
 
Scheel et al_2011_trmm_andes
Scheel et al_2011_trmm_andesScheel et al_2011_trmm_andes
Scheel et al_2011_trmm_andes
 
Program on Mathematical and Statistical Methods for Climate and the Earth Sys...
Program on Mathematical and Statistical Methods for Climate and the Earth Sys...Program on Mathematical and Statistical Methods for Climate and the Earth Sys...
Program on Mathematical and Statistical Methods for Climate and the Earth Sys...
 
Andy Jarvis Parasid Near Real Time Monitoring Of Habitat Change Using A Neura...
Andy Jarvis Parasid Near Real Time Monitoring Of Habitat Change Using A Neura...Andy Jarvis Parasid Near Real Time Monitoring Of Habitat Change Using A Neura...
Andy Jarvis Parasid Near Real Time Monitoring Of Habitat Change Using A Neura...
 
Application of the extreme learning machine algorithm for the
Application of the extreme learning machine algorithm for theApplication of the extreme learning machine algorithm for the
Application of the extreme learning machine algorithm for the
 
Andy Jarvis - Parasid Near Real Time Monitoring Of Habitat Change Using A Neu...
Andy Jarvis - Parasid Near Real Time Monitoring Of Habitat Change Using A Neu...Andy Jarvis - Parasid Near Real Time Monitoring Of Habitat Change Using A Neu...
Andy Jarvis - Parasid Near Real Time Monitoring Of Habitat Change Using A Neu...
 
Program on Mathematical and Statistical Methods for Climate and the Earth Sys...
Program on Mathematical and Statistical Methods for Climate and the Earth Sys...Program on Mathematical and Statistical Methods for Climate and the Earth Sys...
Program on Mathematical and Statistical Methods for Climate and the Earth Sys...
 
4_bindlish_igarss2011.pptx
4_bindlish_igarss2011.pptx4_bindlish_igarss2011.pptx
4_bindlish_igarss2011.pptx
 
Julian R - Spatial downscaling of future climate predictions for agriculture ...
Julian R - Spatial downscaling of future climate predictions for agriculture ...Julian R - Spatial downscaling of future climate predictions for agriculture ...
Julian R - Spatial downscaling of future climate predictions for agriculture ...
 
Program on Mathematical and Statistical Methods for Climate and the Earth Sys...
Program on Mathematical and Statistical Methods for Climate and the Earth Sys...Program on Mathematical and Statistical Methods for Climate and the Earth Sys...
Program on Mathematical and Statistical Methods for Climate and the Earth Sys...
 
Andy J Humane Near Real Time Monitoring Of Deforestation Using A Neural Aug...
Andy J   Humane Near Real Time Monitoring Of Deforestation Using A Neural Aug...Andy J   Humane Near Real Time Monitoring Of Deforestation Using A Neural Aug...
Andy J Humane Near Real Time Monitoring Of Deforestation Using A Neural Aug...
 
Andy J Humane Near Real Time Monitoring Of Deforestation Using A Neural Aug...
Andy J   Humane Near Real Time Monitoring Of Deforestation Using A Neural Aug...Andy J   Humane Near Real Time Monitoring Of Deforestation Using A Neural Aug...
Andy J Humane Near Real Time Monitoring Of Deforestation Using A Neural Aug...
 
TERN eMAST : Observations and terrestrial ecosystem models : Terrestrial Ecos...
TERN eMAST : Observations and terrestrial ecosystem models : Terrestrial Ecos...TERN eMAST : Observations and terrestrial ecosystem models : Terrestrial Ecos...
TERN eMAST : Observations and terrestrial ecosystem models : Terrestrial Ecos...
 
Modellistica Lagrangiana in ISAC Torino - risultati e nuovi sviluppi
Modellistica Lagrangiana in ISAC Torino - risultati e nuovi sviluppiModellistica Lagrangiana in ISAC Torino - risultati e nuovi sviluppi
Modellistica Lagrangiana in ISAC Torino - risultati e nuovi sviluppi
 
Andy Jarvis PARASID Near Real Time Monitoring Of Habitat Change Using A Neur...
Andy  Jarvis PARASID Near Real Time Monitoring Of Habitat Change Using A Neur...Andy  Jarvis PARASID Near Real Time Monitoring Of Habitat Change Using A Neur...
Andy Jarvis PARASID Near Real Time Monitoring Of Habitat Change Using A Neur...
 
Understanding climate model evaluation and validation
Understanding climate model evaluation and validationUnderstanding climate model evaluation and validation
Understanding climate model evaluation and validation
 
Improving Physical Parametrizations in Climate Models using Machine Learning
Improving Physical Parametrizations in Climate Models using Machine LearningImproving Physical Parametrizations in Climate Models using Machine Learning
Improving Physical Parametrizations in Climate Models using Machine Learning
 
CLIM Fall 2017 Course: Statistics for Climate Research, Analysis for Climate ...
CLIM Fall 2017 Course: Statistics for Climate Research, Analysis for Climate ...CLIM Fall 2017 Course: Statistics for Climate Research, Analysis for Climate ...
CLIM Fall 2017 Course: Statistics for Climate Research, Analysis for Climate ...
 
Estimating SMOS error structure using triple collocation.ppt
Estimating SMOS error structure using triple collocation.pptEstimating SMOS error structure using triple collocation.ppt
Estimating SMOS error structure using triple collocation.ppt
 
2013-04-30 EE DSS Approach and Demo
2013-04-30 EE DSS Approach and Demo2013-04-30 EE DSS Approach and Demo
2013-04-30 EE DSS Approach and Demo
 

Mehr von grssieee

GMES SPACE COMPONENT:PROGRAMMATIC STATUS
GMES SPACE COMPONENT:PROGRAMMATIC STATUSGMES SPACE COMPONENT:PROGRAMMATIC STATUS
GMES SPACE COMPONENT:PROGRAMMATIC STATUSgrssieee
 
PROGRESSES OF DEVELOPMENT OF CFOSAT SCATTEROMETER
PROGRESSES OF DEVELOPMENT OF CFOSAT SCATTEROMETERPROGRESSES OF DEVELOPMENT OF CFOSAT SCATTEROMETER
PROGRESSES OF DEVELOPMENT OF CFOSAT SCATTEROMETERgrssieee
 
DEVELOPMENT OF ALGORITHMS AND PRODUCTS FOR SUPPORTING THE ITALIAN HYPERSPECTR...
DEVELOPMENT OF ALGORITHMS AND PRODUCTS FOR SUPPORTING THE ITALIAN HYPERSPECTR...DEVELOPMENT OF ALGORITHMS AND PRODUCTS FOR SUPPORTING THE ITALIAN HYPERSPECTR...
DEVELOPMENT OF ALGORITHMS AND PRODUCTS FOR SUPPORTING THE ITALIAN HYPERSPECTR...grssieee
 
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...grssieee
 
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...grssieee
 
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...grssieee
 
test 34mb wo animations
test  34mb wo animationstest  34mb wo animations
test 34mb wo animationsgrssieee
 
2011_Fox_Tax_Worksheets.pdf
2011_Fox_Tax_Worksheets.pdf2011_Fox_Tax_Worksheets.pdf
2011_Fox_Tax_Worksheets.pdfgrssieee
 
DLR open house
DLR open houseDLR open house
DLR open housegrssieee
 
DLR open house
DLR open houseDLR open house
DLR open housegrssieee
 
DLR open house
DLR open houseDLR open house
DLR open housegrssieee
 
Tana_IGARSS2011.ppt
Tana_IGARSS2011.pptTana_IGARSS2011.ppt
Tana_IGARSS2011.pptgrssieee
 
Solaro_IGARSS_2011.ppt
Solaro_IGARSS_2011.pptSolaro_IGARSS_2011.ppt
Solaro_IGARSS_2011.pptgrssieee
 
Sakkas.ppt
Sakkas.pptSakkas.ppt
Sakkas.pptgrssieee
 
Lagios_et_al_IGARSS_2011.ppt
Lagios_et_al_IGARSS_2011.pptLagios_et_al_IGARSS_2011.ppt
Lagios_et_al_IGARSS_2011.pptgrssieee
 
IGARSS-GlobWetland-II_2011-07-20_v2-0.ppt
IGARSS-GlobWetland-II_2011-07-20_v2-0.pptIGARSS-GlobWetland-II_2011-07-20_v2-0.ppt
IGARSS-GlobWetland-II_2011-07-20_v2-0.pptgrssieee
 

Mehr von grssieee (20)

GMES SPACE COMPONENT:PROGRAMMATIC STATUS
GMES SPACE COMPONENT:PROGRAMMATIC STATUSGMES SPACE COMPONENT:PROGRAMMATIC STATUS
GMES SPACE COMPONENT:PROGRAMMATIC STATUS
 
PROGRESSES OF DEVELOPMENT OF CFOSAT SCATTEROMETER
PROGRESSES OF DEVELOPMENT OF CFOSAT SCATTEROMETERPROGRESSES OF DEVELOPMENT OF CFOSAT SCATTEROMETER
PROGRESSES OF DEVELOPMENT OF CFOSAT SCATTEROMETER
 
DEVELOPMENT OF ALGORITHMS AND PRODUCTS FOR SUPPORTING THE ITALIAN HYPERSPECTR...
DEVELOPMENT OF ALGORITHMS AND PRODUCTS FOR SUPPORTING THE ITALIAN HYPERSPECTR...DEVELOPMENT OF ALGORITHMS AND PRODUCTS FOR SUPPORTING THE ITALIAN HYPERSPECTR...
DEVELOPMENT OF ALGORITHMS AND PRODUCTS FOR SUPPORTING THE ITALIAN HYPERSPECTR...
 
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...
 
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...
 
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...
 
Test
TestTest
Test
 
test 34mb wo animations
test  34mb wo animationstest  34mb wo animations
test 34mb wo animations
 
Test 70MB
Test 70MBTest 70MB
Test 70MB
 
Test 70MB
Test 70MBTest 70MB
Test 70MB
 
2011_Fox_Tax_Worksheets.pdf
2011_Fox_Tax_Worksheets.pdf2011_Fox_Tax_Worksheets.pdf
2011_Fox_Tax_Worksheets.pdf
 
DLR open house
DLR open houseDLR open house
DLR open house
 
DLR open house
DLR open houseDLR open house
DLR open house
 
DLR open house
DLR open houseDLR open house
DLR open house
 
Tana_IGARSS2011.ppt
Tana_IGARSS2011.pptTana_IGARSS2011.ppt
Tana_IGARSS2011.ppt
 
Solaro_IGARSS_2011.ppt
Solaro_IGARSS_2011.pptSolaro_IGARSS_2011.ppt
Solaro_IGARSS_2011.ppt
 
Sakkas.ppt
Sakkas.pptSakkas.ppt
Sakkas.ppt
 
Rocca.ppt
Rocca.pptRocca.ppt
Rocca.ppt
 
Lagios_et_al_IGARSS_2011.ppt
Lagios_et_al_IGARSS_2011.pptLagios_et_al_IGARSS_2011.ppt
Lagios_et_al_IGARSS_2011.ppt
 
IGARSS-GlobWetland-II_2011-07-20_v2-0.ppt
IGARSS-GlobWetland-II_2011-07-20_v2-0.pptIGARSS-GlobWetland-II_2011-07-20_v2-0.ppt
IGARSS-GlobWetland-II_2011-07-20_v2-0.ppt
 

Constructing a long time series of soil moisture using SMOS data with statistics.ppt

  • 1. Constructing a long time series of soil moisture using SMOS data with statistics Leroux Delphine, CESBIO, France Yann Kerr, CESBIO, France Eric Wood, Princeton University, USA
  • 2. Inventory of existing products time Aquarius SMAP 78 79 80 81 82 83 84 85 86 87 88 89 90 91 92 93 94 95 96 97 98 99 00 01 02 03 04 05 06 07 08 09 10 11 SMMR F8 F11 F13 F14 F15 AMSR-E ASCAT SMOS C X Ku Ka 12h-24h Ku Ka W 6h-18h C X K Ka 13h30-1h30 C (active) 21h30-9h30 L 6h-18h
  • 3.
  • 4.
  • 5.
  • 6.
  • 7.
  • 8.
  • 9.
  • 10. Simulation from copulas x, u v 1 v N y 1 y N 1) Statistics theory General CDF matching Copulas t x,y x, u Pr x,y t x,y Pr x,y
  • 11.
  • 12. 2) Results for 2010 Presentation Walnut Gulch Little Washita R RMSE SMOS 0.82 0.040 VUA 0.75 0.138 Simu by CDF 0.80 0.054 Simu by Cop 0.77 0.043
  • 13. 2) Results for 2010 Presentation Walnut Gulch Little Washita R RMSE SMOS 0.78 0.049 VUA 0.59 0.148 Simu by CDF 0.71 0.059 Simu by Cop 0.71 0.043
  • 14. 3) Time series Results for 2009 Little Washita Walnut Gulch R RMSE VUA 0.52 0.149 Simu by CDF 0.53 0.069 Simu by Cop 0.58 0.051 R RMSE VUA 0.64 0.128 Simu by CDF 0.79 0.076 Simu by Cop 0.75 0.060
  • 15.
  • 16.
  • 17.
  • 18. Thank you (again) for your attention Any questions ?
  • 19.
  • 20. Results for Walnut Gulch, Arizona, USA Mar-Apr-May Jun-Jul-Aug Sep-Oct-Nov Original data Simulation with CDF matching Simulation with copulas R=0.50 RMSE=0.073 R=0.71 RMSE=0.058 R=0.44 RMSE=0.070 R=0.51 RMSE=0.063 R=0.68 RMSE=0.056 R=0.48 RMSE=0.058
  • 21. Results for Little Washita, Oklahoma, USA Mar-Apr-May Jun-Jul-Aug Sep-Oct-Nov Original data Simulation with CDF matching Simulation with copulas R=0.87 RMSE=0.028 R=0.71 RMSE=0.071 R=0.36 RMSE=0.048 R=0.84 RMSE=0.030 R=0.70 RMSE=0.069 R=0.38 RMSE=0.040

Hinweis der Redaktion

  1. From 1978, many satellites have been launched and soil moisture has been derived from some of them: SMMR, SSM/I, AMSR-E, ASCAT, SMOS, and others like SMAP will be launched in the near future. However, these satellites have different technical differences as the frequency, crossing time, swath that can lead to very different SM retrievals.
  2. An example of the gaps that can be observed when we plot the time series of soil moisture : Namib in South Africa. There is a crucial need to build a homogeneous time series As SMOS is the best, SMOS will be used as the reference.
  3. Rouge N(3,0.5) Bleu N(8,2)
  4. Puisque c’est une fonction de répartition, sa propre distribution suit une loi uniforme sur [0,1] Probabilité conditionnelle
  5. Toutes les familles que je présente n’ont qu’un seul paramètre qui permet de gérer à quel point u et v sont liés
  6. There will be 2 application examples for 2 sites in the US : Walnut Gulch in Arizona (dry site) and Little Washita in Oklahoma (with more dynamic). We will use 2010 to compute SMOS cdf and choose the copula family in order to simulate an homogeneous time series from 2003 until 2010. The goal is to put VUA at “SMOS level” so that we will be able to simulate VUA at “SMOS level” even when there will not be any SMOS data. We have divided the year into seasons as we except to have different behaviors for each season. Winter will not be treated here because there is not enough points.
  7. The three other seasons have been treated separately. At the bottom, scatter plots with the original data VUA vs. SMOS, in green the simulation from the CDF matching and in red from the copulas. No difference during Spring period. Summer and Autumn are only giving different results for high values of SM. Some statistics have been computed for each site. And from the original stats of VUA, we can see a big improvement in the R value but mostly in the RMSE. Here the simulations with copulas are giving very good results in terms of RMSE (almost the same as SMOS).
  8. In this example there is a difference in the simulations for the low and high values, especially during Spring and Autumn. Simulations from copulas and from CDF matching give the same R value but the RMSE is much better for the copulas.
  9. We have ground measurements for 2009 as well so it has been possible to compute some statistics with the simulations. Once again here, the R value is almost the same for both methods but the RMSE is much lower with the simulations from copulas method.
  10. Homogeneous time series from 2003 to 2010 Green higher for high values and lower for low values A long time series would be interesting to validate.
  11. Homogeneous time series from 2003 to 2010
  12. Possible question : how do you choose the best copula family that fits your data ? By a Bayesian approach where we compute the probability that “this” family has been able to simulate our original dataset.