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首页> 外文期刊>Remote Sensing >An Improved Approach for Soil Moisture Estimation in Gully Fields of the Loess Plateau Using Sentinel-1A Radar Images
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An Improved Approach for Soil Moisture Estimation in Gully Fields of the Loess Plateau Using Sentinel-1A Radar Images

机译:利用Sentinel-1A雷达图像估算黄土高原沟壑区土壤水分的改进方法。

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As an essential ecological parameter, soil moisture is important for understanding the water exchange between the land surface and the atmosphere, especially in the Loess Plateau (China). Although Synthetic Aperture Radar (SAR) images can be used for soil moisture retrieval, it is still a challenge to mitigate the impacts of complex terrain over hilly areas. Therefore, the objective of this paper is to propose an improved approach for soil moisture estimation in gully fields based on the joint use of the Advanced Integral Equation Model (AIEM) and the Incidence Angle Correction Model (IACM) from Sentinel-1A observations. AIEM is utilized to build a simulation database of microwave backscattering coefficients from various radar parameters and surface parameters, which is the data basis for the retrieval modeling. IACM is proposed to correct the deviation between the local incidence angle at the scatterer and the radar viewing angle. The study area is located in the Loess Plateau of China, where the main land cover is mostly bare land and the terrain is complex. The Sentinel-1A SAR data in C-band with dual polarization acquired on October 19th, 2017 was adopted to extract the VV&VH polarimetric backscattering coefficients. The in situ measurements of soil moisture were collected on the same day of the SAR acquisition, for evaluating the accuracy of the SAR-derived soil moisture. The results showed that, firstly, the estimated soil moisture with volumetric content between 0% and 20% was in the majority. Subsequently, both the RMSE of estimation values (0.963%) and the standard deviation of absolute errors (0.957%) demonstrated a good accuracy of the improved approach. Moreover, the evaluation of IACM confirmed that the improved approach coupling IACM and AIEM was more efficient than employing AIEM solely. In conclusion, the proposed approach has a strong ability to estimate the soil moisture in the gully fields of the Loess Plateau from Sentinel-1A data.
机译:作为基本的生态参数,土壤湿度对于了解地表与大气之间的水交换非常重要,尤其是在黄土高原(中国)。尽管合成孔径雷达(SAR)图像可用于土壤水分的获取,但减轻丘陵地区复杂地形的影响仍然是一项挑战。因此,本文的目的是根据Sentinel-1A观测结果结合使用高级积分方程模型(AIEM)和入射角校正模型(IACM),提出一种改进的沟壑区土壤湿度估算方法。 AIEM用于根据各种雷达参数和表面参数建立微波反向散射系数的仿真数据库,这是检索建模的数据基础。建议使用IACM校正散射体上的局部入射角和雷达视角之间的偏差。研究区域位于中国黄土高原,主要土地覆盖大部分为裸地,地形复杂。采用2017年10月19日获取的双极化C波段Sentinel-1A SAR数据提取VV&VH极化背向散射系数。在采集SAR的当天收集土壤水分的原位测量值,以评估SAR衍生的土壤水分的准确性。结果表明,首先,估计的土壤水分含量在0%至20%之间。随后,估计值的RMSE(0.963%)和绝对误差的标准偏差(0.957%)都证明了改进方法的良好准确性。此外,对IACM的评估证实,将IACM和AIEM结合使用的改进方法比仅采用AIEM更有效。总之,该方法具有从Sentinel-1A数据估算黄土高原沟壑区土壤水分的强大能力。

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