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Estimation of Soil Arsenic Content with Hyperspectral Remote Sensing

机译:高光谱遥感土壤砷含量的估算

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摘要

With the continuous application of arsenic-containing chemicals, arsenic pollution in soil has become a serious problem worldwide. The detection of arsenic pollution in soil is of great significance to the protection and restoration of soil. Hyperspectral remote sensing is able to effectively monitor heavy metal pollution in soil. However, due to the possible complex nonlinear relationship between soil arsenic (As) content and the spectrum and data redundancy, an estimation model with high efficiency and accuracy is urgently needed. In response to this situation, 62 samples and 27 samples were collected in Daye and Honghu, Hubei Province, respectively. Spectral measurement and physical and chemical analysis were performed in the laboratory to obtain the As content and spectral reflectance. After the continuum removal (CR) was performed, the stable competitive adaptive reweighting sampling algorithm coupled the successive projections algorithm (sCARS-SPA) was used for characteristic band selection, which effectively solves the problem of data redundancy and collinearity. Partial least squares regression (PLSR), radial basis function neural network (RBFNN), and shuffled frog leaping algorithm optimization of the RBFNN (SFLA-RBFNN) were established in the characteristic wavelengths to predict soil As content. These results show that the sCARS-SPA-SFLA-RBFNN model has the best universality and high prediction accuracy in different land-use types, which is a scientific and effective method for estimating the soil As content.
机译:随着含砷化学物质的连续应用,土壤中的砷污染已成为全球严重的问题。土壤中砷污染的检测对于土壤的保护和恢复具有重要意义。高光谱遥感能够有效监测土壤中的重金属污染。然而,由于土壤砷(AS)内容和频谱和数据冗余之间可能的复杂非线性关系,迫切需要高效率和精度的估计模型。响应这种情况,分别收集了62个样本和27个样品,分别在湖北省湖和洪湖收集。在实验室中进行光谱测量和物理分析,以获得作为含量和光谱反射率。在执行连续移除(CR)之后,使用稳定的竞争自适应重载采样采样算法耦合连续投影算法(SCARS-SPA)用于特征频带选择,从而有效地解决了数据冗余和共线性的问题。在特征波长的特征波长中建立了局部最小二乘回归(PLSR),径向基函数神经网络(RBFNN)和研入的青蛙跳跃算法优化RBFNN(SFLA-RBFNN)的优化,以预测土壤作为内容。这些结果表明,疤痕-SPA-SFLA-RBFNN模型具有不同土地使用类型的最佳普遍性和高预测准确性,这是一种估算土壤作为内容的科学和有效的方法。

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