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A reduced latency regional gap-filling method for SMAP using random forest regression.


ABSTRACT: The soil moisture active/passive (SMAP) mission represents a significant advance in measuring soil moisture from satellites. However, its large spatial-temporal data gaps limit the use of its values in near-real-time (NRT) applications. Considering this, the study uses NRT operational metadata (precipitation and skin temperature), together with some surface parameterization information, to feed into a random forest model to retrieve the missing values of the SMAP L3 soil moisture product. This practice was tested in filling the missing points for both SMAP descending (6:00 AM) and ascending orbits (6:00 PM) in a crop-dominated area from 2015 to 2019. The trained models with optimized hyper-parameters show the goodness of fit (R2 ≥ 0.86), and their resulting gap-filled estimates were compared against a range of competing products with in situ and triple collocation validation. This gap-filling scheme driven by low-latency data sources is first attempted to enhance NRT spatiotemporal support for SMAP L3 soil moisture.

SUBMITTER: Wang X 

PROVIDER: S-EPMC9817173 | biostudies-literature | 2023 Jan

REPOSITORIES: biostudies-literature

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A reduced latency regional gap-filling method for SMAP using random forest regression.

Wang Xiaoyi X   Lü Haishen H   Crow Wade T WT   Corzo Gerald G   Zhu Yonghua Y   Su Jianbin J   Zheng Jingyao J   Gou Qiqi Q  

iScience 20221222 1


The soil moisture active/passive (SMAP) mission represents a significant advance in measuring soil moisture from satellites. However, its large spatial-temporal data gaps limit the use of its values in near-real-time (NRT) applications. Considering this, the study uses NRT operational metadata (precipitation and skin temperature), together with some surface parameterization information, to feed into a random forest model to retrieve the missing values of the SMAP L3 soil moisture product. This p  ...[more]

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