Data Assimilation of Remotely Sensed Soil Moisture to Detect Water Stress Periods in Agricultural Areas.

IGARSS(2021)

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摘要
In this study, a data assimilation framework based on the Ensemble Kalman Filter was implemented including a soil-vegetation-atmosphere energy transfer (SVAT) model. The SVAT model has been calibrated with in-situ data in the central region of Mexico, with temperate subhumid climate. The soil moisture information from ten locations was scaled within a 36km satellite pixel. Both synthetic observations and SMAP SM retrieval were assimilated and they improved by 29% compared to open-loop simulations. Particularly, the assimilated soil moisture allows us to have a better characterization of periods of water stress for corn cultivation.
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关键词
soil moisture,SMAP,data assimilation,EnKF,SVAT,in-situ campaign,THEx-Mex
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