4.7 Article

Assessment of SMOS and SMAP soil moisture products against new estimates combining physical model, a statistical model, and in-situ observations: A case study over the Huai River Basin, China

Journal

JOURNAL OF HYDROLOGY
Volume 598, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.jhydrol.2021.126468

Keywords

Soil moisture; BPNN; SMOS; SMAP; Land surface modeled data; Irrigated area

Funding

  1. National Key Research and Development Program [2018YFA0605400]
  2. National Natural Science Foundation of China [41830752, 41971042, 41961134003]

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Soil moisture plays a critical role in global water and energy cycles, and recent satellite missions have provided opportunities for quasi-global monitoring of soil moisture. Post-processing of the CLDAS soil moisture product using a BPNN method has shown to reduce errors and maintain temporal correlations with in-situ observations in the highly irrigated Huai River Basin. The evaluations of the four satellite-derived soil moisture products revealed differences in spatial patterns and seasonal variations, with SMAP retrievals recommended for locations with valid SMOS and SMAP retrievals.
Soil moisture often governs the exchange of water between the land surface and the atmosphere and, as a result, has a profound effect on the global water and energy cycles. With the launch of the two new L-band satellite missions tasked with retrieving surface soil moisture (i.e., Soil Moisture and Ocean Salinity (SMOS) and Soil Moisture Active/Passive (SMAP) missions), new possibilities exist for quasi-global soil moisture monitoring. Here, new soil moisture estimates (CLDAS-BPNN), generated by fusing a land surface model soil moisture product (CLDAS) using in-situ observations via a Back Propagation Neural Network (BPNN) method, are used to evaluate four satellite-derived soil moisture products (SMOS-L3, SMOS-IC, SMAP_L3_SM_P, and SMAP_L3_SM_P_E) over the highly irrigated Huai River Basin in China. Results indicate that the post-processing of CLDAS (to generate CLDAS-BPNN) reduces soil moisture errors (particularly bias) and preserves temporal correlations with in-situ observations. Due to extensive irrigation present in the basin, CLDAS-BPNN soil moisture time series have weak seasonal differences and the spatial distribution of their means does not reflect known precipitation patterns. Based on the validation of SMOS and SMAP soil moisture retrievals against CLDAS-BPNN, several key findings can be obtained. First, SMAP retrievals are recommended for locations possessing both valid SMOS and SMAP retrievals. However, SMOS provides generally better spatial support than SMAP. Second, the four satellite retrievals present no significant seasonal variation in time-varying errors, and larger soil moisture underestimation is observed in winter than in summer. Finally, all four satellite products exhibit degraded accuracy in mountainous and forested areas of the Huai River Basin relative to flatter terrain in the Huaibei plain.

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