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http://dx.doi.org/10.3741/JKWRA.2021.54.2.81

Estimation of soil moisture based on Sentinel-1 SAR data: Assessment of soil moisture estimation in different vegetation condition  

Cho, Seongkeun (Department of Water Resources, Sungkyunkwan University)
Jeong, Jaehwan (Department of Water Resources, Sungkyunkwan University)
Lee, Seulchan (Department of Water Resources, Sungkyunkwan University)
Choi, Minha (Department of Water Resources, Sungkyunkwan University)
Publication Information
Journal of Korea Water Resources Association / v.54, no.2, 2021 , pp. 81-91 More about this Journal
Abstract
Synthetic Apreture Radar (SAR) is attracting attentions with its possibility of producing high resolution data that can be used for soil moisture estimation. High resolution soil moisture data enables more specific observation of soil moisture than existing soil moisture products from other satellites. It can also be used for studies of wildfire, landslide, and flood. The SAR based soil moisture estimation should be conducted considering vegetation, which affects backscattering signals from the SAR sensor. In this study, a SAR based soil moisture estimation at regions covered with various vegetation types on the middle area of Korea (Cropland, Grassland, Forest) is conducted. The representative backscattering model, Water Cloud Model (WCM) is used for soil moisture estimation over vegetated areas. Radar Vegetation Index (RVI) and in-situ soil moisture data are used as input factors for the model. Total 6 study areas are selected for 3 vegetation types according to land cover classification with 2 sites per each vegetation type. Soil moisture evaluation result shows that the accuracy of each site stands out in the order of grassland, forest, and cropland. Forested area shows correlation coefficient value higher than 0.5 even with the most dense vegetation, while cropland shows correlation coefficient value lower than 0.3. The proper vegetation and soil moisture conditions for SAR based soil moisture estimation are suggested through the results of the study. Future study, which utilizes additional ancillary vegetation data (vegetation height, vegetation type) is thought to be necessary.
Keywords
Soil moisture; Synthetic aperture radar; Vegetation; Water cloud model; Backscattering coefficient;
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