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Explicit Inverse of Soil Moisture Retrieval with an Artificial Neural Network Using Passive Microwave Remote Sensing Data

机译:使用被动微波遥感数据用人工神经网络明确反向土壤湿度检索

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Soil moisture is an important variable that controls the partition of rainfall into infiltration and run-off. This plays an important role in the prediction of erosion, flood or drought. Passive microwave remote sensing data has great potential for providing estimates of soil moisture. This is mainly due to the minimal weather influence on passive microwave data and its ability to penetrate through clouds. The Artificial Neural Network (ANN) is a method that tries simulates human intelligence by crudely imitating the way a human brain learns. This method has been especially useful for mapping non-linear and ill-posed problems. Soil moisture retrieval is an example of a non-linear problem. An explicit inverse of the physical process can be built using an ANN to map the passive microwave measurements into land surface parameters such as soil moisture. For this paper, the ANN method used to create the explicit inverse function is divided into (i.) single parameter retrieval of the soil moisture value given the passive microwave measurements, and (ii.) multi-parameter retrieval of a number of land surface parameters, i.e. soil temperature, surface roughness, together with soil moisture value given the passive microwave measurements. This paper examines these methods in the context of retrieving surface soil moisture values given microwave radiometric data and discusses key issues that will need to be addressed to improve mapping performance and to produce operational systems.
机译:土壤水分是一个重要的变量,控制降雨分区进入渗透和径流。这在预测侵蚀,洪水或干旱方面发挥着重要作用。被动微波遥感数据具有提供土壤湿度估计的巨大潜力。这主要是由于天气对被动微波数据的影响最小及其穿透云的能力。人工神经网络(ANN)是一种通过粗略模仿人类脑学会的方式模拟人类智能的方法。该方法对于映射非线性和不良问题特别有用。土壤湿度检索是非线性问题的一个例子。可以使用ANN建立物理过程的明确逆,以将被动微波测量线映射到诸如土壤水分之类的土地面参数中。对于本文,用于创建显式逆函数的ANN方法被分为(i。)单个参数检索土壤湿度值的单个参数检索,给出了被动微波测量的(ii。)多参数检索许多陆地表面参数,即土壤温度,表面粗糙度,与被动微波测量的土壤湿度值一起。本文在给定微波辐射数据的检索表面土壤湿度值的背景下检查这些方法,并讨论需要解决的关键问题,以改善映射性能和生产操作系统。

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