Merging two passive microwave remote sensing (SMOS and AMSR_E) datasets to produce a long term record of soil moisture
DUCHARNE, Agnès
Milieux Environnementaux, Transferts et Interactions dans les hydrosystèmes et les Sols [METIS]
Leer más >
Milieux Environnementaux, Transferts et Interactions dans les hydrosystèmes et les Sols [METIS]
DUCHARNE, Agnès
Milieux Environnementaux, Transferts et Interactions dans les hydrosystèmes et les Sols [METIS]
< Leer menos
Milieux Environnementaux, Transferts et Interactions dans les hydrosystèmes et les Sols [METIS]
Idioma
en
Communication dans un congrès
Este ítem está publicado en
IEEE International Geoscience and Remote Sensing Symposium Proceedings, IEEE International Geoscience and Remote Sensing Symposium Proceedings, IGARSS 2014, International Geoscience and Remote Sensing Symposium, 2014-07-13, Québec. 2014
IEEE
Resumen en inglés
This study investigated the use of physically based statistical regressions to retrieve a global and long term (e.g. 2003–2014) surface soil moisture (SSM) record based on a combination of passive microwave remote sensing ...Leer más >
This study investigated the use of physically based statistical regressions to retrieve a global and long term (e.g. 2003–2014) surface soil moisture (SSM) record based on a combination of passive microwave remote sensing observations from the Advanced Microwave Scanning Radiometer (AMSR-E; 2003-Sept. 2011) and the Soil Moisture and Ocean Salinity (SMOS; 2010–2014) sensors. Statistical regression methods based on bi-polarization (horizontal and vertical) brightness temperatures (Tb) observations obtained from AMSR-E. The coefficients of these regression equations were calibrated using SMOS level 3 SSM maps (SMOSL3) as a reference. This calibration process was carried out over the June 2010-Sept. 2011 period, over which both SMOS and AMSR-E observations coincide. Based on these calibrated coefficients global SSM maps could be computed from the AMSR-E Tb observations over the whole 2003–2011 period. In this study, the SSM maps were successfully evaluated against the SMOSL3 SSM products over the period of calibration (Jun. 2010-Sept. 2011). Correlations (R) and Root Mean Square Error (RMSE) were computed between the AMSR-E retrievals and the reference (SMOSL3) SSM products. The R (mostly > 0.75) and RMSE (mostly < 0.04 m3/m3) maps showed a good agreement between the retrieved and SMOSL3 SSM products particularly over Australia, central USA, central Asia, and the Sahel. In conclusion, the statistical regression method is capable of retrieving a coherent "SMOS-AMSR-E" SSM time series for the period 2003–2014.< Leer menos
Palabras clave
SMOS
soil moisture
Palabras clave en inglés
regression analyses
AMSR-E
1.4 GHZ
Orígen
Importado de HalCentros de investigación