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A sequential model for disaggregating near-surface soil moisture observations using multi-resolution thermal sensors
Authors:Olivier Merlin  Ahmad Al Bitar  Yann Kerr
Affiliation:a Centre d'Etudes Spatiales de la Biosphère (CESBIO), Toulouse, France
b Civil and Environmental Engineering, The University of Melbourne, Australia
Abstract:A sequential model is developed to disaggregate microwave-derived soil moisture from 40 km to 4 km resolution using MODIS (Moderate Imaging Spectroradiometer) data and subsequently from 4 km to 500 m resolution using ASTER (Advanced Scanning Thermal Emission and Reflection Radiometer) data. The 1 km resolution airborne data collected during the three-week National Airborne Field Experiment 2006 (NAFE'06) are used to simulate the 40 km pixels, and a thermal-based disaggregation algorithm is applied using 1 km resolution MODIS and 100 m resolution ASTER data. The downscaled soil moisture data are subsequently evaluated using a combination of airborne and in situ soil moisture measurements. A key step in the procedure is to identify an optimal downscaling resolution in terms of disaggregation accuracy and sub-pixel soil moisture variability. Very consistent optimal downscaling resolutions are obtained for MODIS aboard Terra, MODIS aboard Aqua and ASTER, which are 4 to 5 times the thermal sensor resolution. The root mean square error between the 500 m resolution sequentially disaggregated and ground-measured soil moisture is 0.062 vol./vol. with a bias of − 0.045 vol./vol. and values ranging from 0.08 to 0.40 vol./vol.
Keywords:Disaggregation  Soil moisture  Fractal  Scaling  Multi-sensor  NAFE  SMOS  MODIS  ASTER
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