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Comparison of Two Inversion Methods for Retrieval of Soil Moisture and Surface Roughness from Polarimetric Radar Observation of Soil Surfaces

机译:两种反转方法对土壤雷达雷达观测的土壤水分和表面粗糙度的两种反转方法

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This paper presents comparison of the Direct Inversion Method (DIM) and the Genetic Algorithm-based Inversion Method (GAIM) for retrieval of soil moisture and surface roughness from polarimetric radar observation of soil surfaces. Those inversion methods are based on the polarimetric semi-empirical model (PSEM), which was developed empirically to estimate the backscattering coefficients from the volumetric soil moisture content and the surface roughness parameters ks and kl, where k = 2πf/c, s is the rms height and l is the correlation length. The co-polarized ratio p and the vh-polarized backscattering coefficient of the semi-empirical model have been inverted directly to retrieve the soil parameters in the DIM. The cross-polarized ratio q can additionally be used to improve the inversion results in the DIM. A good agreement between the values of ks estimated by the inversion method and those measured in situ for ks<3.5, with a correlation coefficient of 0.822. The genetic algorithm (GA) is applied for an inversion method to retrieve both the volumetric soil moisture contents and the rms surface heights from multi-polarized radar observations of bare soil surfaces. The cost function for each chromosome is evaluated using the semi-empirical scattering model. Good agreement was found between the values of the rms height and the soil moisture content estimated by the inversion technique and those measured in situ. It was also found that the GATM shows higher accuracy than the DIM in the estimation of the surface parameters from the radar observations.
机译:本文介绍了从偏振雷达观察土壤表面检索土壤水分和表面粗糙度的直接反演方法(DIM)和基于遗传算法的反转方法(GAIM)。这些反转方法基于偏振半经验模型(PSEM),其经验开发,以估计来自体积土壤水分含量和表面粗糙度参数Ks和KL的反向散射系数,其中k =2πf/ c,s是RMS高度和L是相关长度。半经验模型的共偏振比P和VH偏振反向散射系数已直接倒置以检索暗淡的土壤参数。交叉极化比Q可以另外用于改善昏暗的反演结果。通过反转方法估计的Ks值与ks <3.5的原位测量的值之间的良好一致性,其相关系数为0.822。遗传算法(GA)施加用于反转方法,以从裸土壤表面的多极化雷达观察中检索体积土壤湿度含量和RMS表面高度。使用半经验散射模型评估每种染色体的成本函数。在RMS高度和通过反转技术估计的土壤水分含量和原位测量的那些之间存在良好的一致性。还发现,GATM在雷达观察结果估计表面参数中的昏暗时,GATM表示更高的精度。

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