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Hyperspectral Analysis of Soil Total Nitrogen in Subsided Land Using the Local Correlation Maximization-Complementary Superiority (LCMCS) Method

机译:利用局部相关最大化-互补优势(LCMCS)方法对塌陷区土壤全氮进行高光谱分析

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The measurement of soil total nitrogen (TN) by hyperspectral remote sensing provides an important tool for soil restoration programs in areas with subsided land caused by the extraction of natural resources. This study used the local correlation maximization-complementary superiority method (LCMCS) to establish TN prediction models by considering the relationship between spectral reflectance (measured by an ASD FieldSpec 3 spectroradiometer) and TN based on spectral reflectance curves of soil samples collected from subsided land which is determined by synthetic aperture radar interferometry (InSAR) technology. Based on the 1655 selected effective bands of the optimal spectrum (OSP) of the first derivate differential of reciprocal logarithm ([log{1/R}]′), (correlation coefficients, p 0.01), the optimal model of LCMCS method was obtained to determine the final model, which produced lower prediction errors (root mean square error of validation [RMSEV] = 0.89, mean relative error of validation [MREV] = 5.93%) when compared with models built by the local correlation maximization (LCM), complementary superiority (CS) and partial least squares regression (PLS) methods. The predictive effect of LCMCS model was optional in Cangzhou, Renqiu and Fengfeng District. Results indicate that the LCMCS method has great potential to monitor TN in subsided lands caused by the extraction of natural resources including groundwater, oil and coal.
机译:通过高光谱遥感测量土壤总氮(TN),为自然资源开采导致土地塌陷的土壤恢复计划提供了重要工具。这项研究使用局部相关最大化-互补优势法(LCMCS),根据从沉降土地采集的土壤样品的光谱反射率曲线,考虑光谱反射率(由ASD FieldSpec 3光谱仪测量)与TN之间的关系,建立TN预测模型。由合成孔径雷达干涉测量(InSAR)技术确定。基于1655个对数一阶对数微分([log {1 / R}]')的有效谱(OSP)的有效谱带(相关系数,p <0.01),LCMCS方法的最优模型为与确定局部相关性最大化(LCM)的模型相比,获得确定最终模型的结果,该模型产生较低的预测误差(验证的均方根误差[RMSEV] = 0.89,验证的平均相对误差[MREV] = 5.93%) ,互补优势(CS)和偏最小二乘回归(PLS)方法。 LCMCS模型的预测效果在沧州,任丘和凤峰区是可选的。结果表明,LCMCS方法在监测地下水,石油和煤炭等自然资源引起的塌陷土地中总氮方面具有很大的潜力。

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