首页> 外文会议>IEEE International Geoscience and Remote Sensing Symposium >Retrieval of soil moisture using electromagnetic models and a Bayesian approach in view of the SAOCOM mission: Study on SARAT images in an agricultural site in Argentina
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Retrieval of soil moisture using electromagnetic models and a Bayesian approach in view of the SAOCOM mission: Study on SARAT images in an agricultural site in Argentina

机译:根据SAOCOM任务,使用电磁模型和贝叶斯方法进行土壤水分反演:阿根廷农业现场的SARAT图像研究

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The aim of this research is to examine the ability of an approach based on Bayesian inference to retrieve surface soil moisture in an experimental agricultural area located in the province of Córdoba, Argentina. Radar images from SARAT sensor were used, as well as measurements of biophysical parameters in the field. Several implementations of the main algorithm were designed to evaluate their different capability to reproduce the ground data. The Bayesian inversion was performed based on electromagnetic model: the Integral Equation Model (IEM) for bare soil, and the Water Cloud Model (WCM) for vegetated fields. For bare soil, the results showed high sensitivity of the algorithms to the different roughness conditions of each plot, while for vegetated areas, the availability of field measurements limited the comparisons between the obtained maps and the in situ data.
机译:该研究的目的是研究一种基于贝叶斯推理的方法的能力,以检索位于阿根廷科尔多瓦省的实验农业区的表面土壤水分。使用来自莎拉传感器的雷达图像,以及该领域的生物物理参数的测量。旨在评估其不同能力以重现地面数据的若干实施方式。基于电磁模型进行贝叶斯反演:裸机的整体方程模型(IEM),植被领域的水云模型(WCM)。对于裸露的土壤,结果显示了对每个曲线的不同粗糙度条件的算法的高灵敏度,而对于植被领域,现场测量的可用性限制了所获得的地图和原位数据之间的比较。

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