4.7 Article

Estimation of Root-Zone Soil Moisture in Semi-Arid Areas Based on Remotely Sensed Data

Journal

REMOTE SENSING
Volume 15, Issue 8, Pages -

Publisher

MDPI
DOI: 10.3390/rs15082003

Keywords

surface soil moisture; root-zone soil moisture; remote sensing; SMAR; random forest

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Soil moisture is crucial for the energy exchange and transformation between the atmosphere, vegetation, and soil. Reliable estimation of root zone soil moisture at the regional scale is important for various applications. Currently, satellite products only provide surface soil moisture, making it challenging to obtain regional-scale root zone soil moisture. The soil moisture analytical relationship (SMAR) model based on a simplified soil water balance equation shows promise in linking surface and root zone soil moisture.
Soil moisture (SM) is a bridge between the atmosphere, vegetation and soil, and its dynamics reflect the energy exchange and transformation between the three. Among SM at different soil profiles, root zone soil moisture (RZSM) plays a significant role in vegetation growth. Therefore, reliable estimation of RZSM at the regional scale is of great importance for drought warning, agricultural yield estimation, forest fire monitoring, etc. Many satellite products provide surface soil moisture (SSM) at the thin top layer of the soil, approximately 2 cm from the surface. However, the acquisition of RZSM at the regional scale is still a tough issue to solve, especially in the semi-arid areas with a lack of in situ observations. Linking the dynamics of SSM and RZSM is promising to solve this issue. The soil moisture analytical relationship (SMAR) model can relate RZSM to SSM based on a simplified soil water balance equation, which is suitable for the simulation of soil moisture mechanisms in semi-arid areas. In this study, the Xiliaohe River Basin is the study area. The SMAR model at the pixels where in situ sites were located is established, and parameters (a, b, s(w2), s(c1)) at these pixels are calibrated by a genetic algorithm (GA). Then the spatial parameters are estimated by the random forest (RF) regression method with the soil, meteorological and vegetation characteristics of the study area as explanatory variables. In addition, the importance of soil, climatic and vegetation characteristics for predicting SMAR parameters is analyzed. Finally, the spatial RZSM in the Xiliaohe River Basin is estimated by the SMAR model at the regional scale with the predicted spatial parameters, and the variation of the regional SMAR model performance is discussed. A comparison of estimated RZSM and in-situ RZSM showed that the SMAR model at the point and regional scales can both meet the RMSE benchmark from NASA of 0.06 cm(3)center dot cm(-3), indicating that the method this study proposed could effectively estimate RZSM in semi-arid areas based on remotely sensed SSM data.

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