Experimental Study on Soil Electrical Conductivity Inversion by Ground Spectral Measurement and SAR Data

Yin Chengshen, Liu Quanming, Wang Chunjuan, Wang Fuqiang
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Abstract

In this paper, the ground-measured spectral reflectance was combined with C-band microwave radar quadrupolarized backscattering data, and the characteristic bands were selected using partial least squares and correlation coefficient methods, and a model was developed to evaluate the degree of soil salinization. Using the spectral reflectance and its logarithmic, first-order and second-order derivatives of the four spectral data, correlation analysis was performed and found that the first and second order derivatives of the spectra were better correlated compared to the first two. The correlations of soil EC values in the four bands of 1584-1588 nm, 1802-1806 nm, 2201-2205 nm, and 2344-2348 nm transformed by second-order derivatives were 0.27, 0.34, 0.33, and 0.35, respectively, and there existed two bands of 1802-1806 nm and 2344-2348 nm that both had better soil EC correlation. The bands selected by the partial least squares method are more backward than those selected by the correlation coefficient method, and there are extremely sensitive bands, and the fit of the second-order derivative transformation model is better compared with that of the correlation coefficient method. By combining the second-order derivatives of reflectance, surface roughness and radar backscatter coefficients, the neural network model with the second-order derivatives of reflectance and radar backscatter characteristics was the best prediction model, and its R2 for soil EC was 0.8666.
基于地面光谱和SAR数据反演土壤电导率的试验研究
本文将地面实测光谱反射率与c波段微波雷达四极化后向散射数据相结合,采用偏最小二乘法和相关系数法选择特征波段,建立土壤盐渍化程度评价模型。利用四种光谱数据的光谱反射率及其对数、一阶和二阶导数进行相关分析,发现光谱的一阶和二阶导数比前两阶导数的相关性更好。土壤EC值在1584 ~ 1588 nm、1802 ~ 1806 nm、2201 ~ 2205 nm和2344 ~ 2348 nm 4个波段的二阶导数变换相关性分别为0.27、0.34、0.33和0.35,其中存在1802 ~ 1806 nm和2344 ~ 2348 nm两个波段土壤EC相关性较好。偏最小二乘法选择的波段比相关系数法选择的波段更后向,且存在极其敏感的波段,二阶导数变换模型的拟合优于相关系数法。综合反射率、表面粗糙度和雷达后向散射系数的二阶导数,具有反射率和雷达后向散射特性二阶导数的神经网络模型是土壤EC的最佳预测模型,其R2为0.8666。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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