Retrieval of soil moisture using a decomposition-based model and optical-thermal model with Sentinel-1 and Landsat-8 images

Mohammad Moghaddas
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Abstract

Water content of the soil has a significant role to play in the hydrological cycle and environmental processes. This study includes two phases: (1) approximation of soil moisture at the farm level based on optical-thermal images of Landsat-8 satellite and (2) retrieval of soil moisture by the dual-polarized basis decomposition model with the help of approximate soil moisture that is obtained by the optical-thermal model. In this research, two mechanisms, volume scattering and surface scattering, are considered. Furthermore, in order to model surface scattering, Bragg matrix has been used. The proposed radar model estimates soil moisture without using ground data, although few ground measurements have been used in the optical-thermal model. The Carlson triangular model has been used to approximate soil moisture using optical-thermal images. Three indices, normalized difference vegetation index (NDVI), normalized difference moisture index (NDMI), and moisture stress index (MSI), have been used in the optical-thermal model. Two ground soil moisture datasets are used in this study: (1) Cook Agronomy Farm (CAF) soil moisture data located in the United States and (2) real-time in situ soil monitoring for agriculture (RISMA) soil moisture data located in Canada. The radar model (base decomposition model) achieved a lowest root mean square error (RMSE) of 3.33% and a highest of 11.21%, showing strong accuracy in soil moisture retrieval. The optical-thermal model had a slightly higher minimum RMSE of 4.04% and a maximum of 9.68%. These results suggest that the radar model generally outperforms the optical-thermal model, making it more reliable for accurate soil moisture estimation in agricultural applications, which is crucial for optimizing irrigation and managing resources.

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基于分解模型和基于Sentinel-1和Landsat-8图像的光学-热模型的土壤水分检索
土壤含水量在水循环和环境过程中起着重要的作用。本研究包括两个阶段:(1)基于Landsat-8卫星光热图像的农田土壤水分近似值和(2)利用光热模型获得的土壤水分近似值,利用双极化基分解模型反演土壤水分。在这项研究中,考虑了体积散射和表面散射两种机制。此外,为了模拟表面散射,还使用了Bragg矩阵。虽然在光学-热模型中很少使用地面测量数据,但提出的雷达模型在不使用地面数据的情况下估计土壤湿度。卡尔森三角模型已被用于利用光学-热图像近似土壤湿度。采用归一化植被指数(NDVI)、归一化水分指数(NDMI)和水分胁迫指数(MSI) 3个指标进行了光热模型的研究。本研究使用了两个地面土壤水分数据集:(1)位于美国的Cook Agronomy Farm (CAF)土壤水分数据;(2)位于加拿大的实时农业土壤监测(RISMA)土壤水分数据。雷达模型(基分解模型)的均方根误差(RMSE)最低为3.33%,最高为11.21%,具有较好的土壤水分反演精度。光-热模型的最小RMSE略高,为4.04%,最大值为9.68%。这些结果表明,雷达模型总体上优于光学-热模型,使其在农业应用中更可靠地准确估计土壤水分,这对优化灌溉和管理资源至关重要。
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