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Land-Based Scatterometer Measurements and Retrieval of Surface Parameters Using Neural Networks

机译:基于神经网络的陆基散射仪测量和表面参数检索

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In this study, a multi-band FM-CW land- based scatterometer is used to measure the backscattering coefficient of bare soil surface. And then combined with the neural network which can be simulated in any nonlinear problem in theory, and integrated equation model (IEM) which has a wide range of surface roughness, has realized all of the surface parameters inversion through the theoretical simulation and the experimental data, including dielectric constant, surface rms high and correlation length. The results have a better consistency with the actual measurement parameters, and the difference among different angles inversion results reflects the uneven characteristics of reality surface. Final shows that retrieval of multi-parameter using neural networks to be effective, at the same time that simultaneous measurement of backscattering coefficient and surface parameter is a effective means that study features of microwave scattering.
机译:在这项研究中,多波段FM-CW陆地散射仪用于测量裸露土壤表面的反向散射系数。然后结合理论上可以在任何非线性问题中进行仿真的神经网络,并通过理论模拟和实验数据,实现了具有广泛表面粗糙度的集成方程模型(IEM),实现了所有表面参数的反演。包括介电常数,高表面均方根值和相关长度。结果与实际测量参数具有较好的一致性,不同角度反演结果之间的差异反映了真实表面的不均匀特征。最终表明,使用神经网络检索多参数是有效的,同时反向散射系数和表面参数的同时测量是研究微波散射特征的有效手段。

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