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首页> 外文期刊>Journal of the Indian Society of Remote Sensing >Estimation of Heavy-Metal Contamination in Soil Using Remote Sensing Spectroscopy and a Statistical Approach
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Estimation of Heavy-Metal Contamination in Soil Using Remote Sensing Spectroscopy and a Statistical Approach

机译:利用遥感光谱估算土壤重金属污染及统计方法

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Heavy-metal-contaminated soil is a critical environmental issue in suburban regions. This paper focuses on utilizing field spectroscopy to predict the heavy metal contents in soil for two suburban areas in the Jiangning District (JN) and the Baguazhou District (BGZ) in China. The relationship between the surface soil heavy metal contents and spectral features was investigated through statistical modeling. Spectral features of several spectral techniques, including reflectance spectra (RF), the logarithm of reciprocal spectra (LG) and continuum-removal spectra (CR), were employed to establish and calibrate models regarding to Cd, Hg and Pb contents. The optimal bands for each spectral feature were first selected based on the spectra of soil samples with artificially added heavy metals using stepwise multiple linear regressions. With the chosen bands, the average predictive accuracies of the cross-validation, using the coefficient of determination R-2, for estimating the heavy metal contents in the two field regions were 0.816, 0.796 and 0.652 for Cd; 0.787, 0.888 and 0.832 for Pb; and 0.906 and 0.867 for Hg based on partial least squares regression. Results show that better prediction accuracies were obtained for Cd and Hg, while the poorest prediction was obtained for Pb. Moreover, the performances of the LG and CR models were better than that of the RF model for Pb and Hg, indicating that LG and CR can provide alternative features in determining heavy metal contents. Overall, it's concluded that Cd, Hg and Pb contents can be assessed using remote-sensing spectroscopy with reasonable accuracy, especially when combined with library and field-collected spectra.
机译:重金属受污染的土壤是郊区区域的关键环境问题。本文侧重于利用现场光谱,预测江宁区(JN)和中国蒲国区(BGZ)的两个郊区土壤中的重金属含量。通过统计建模研究了表面土壤重金属含量和光谱特征之间的关系。采用几种光谱技术的光谱特征,包括反射谱谱(RF),往复光谱(LG)和连续去除光谱(CR)的对数,用于建立和校准关于CD,HG和Pb内容物的模型。首先基于使用逐步多个线性回归的人工添加的重金属的土壤样本的光谱选择每个光谱特征的最佳条带。利用所选择的带,使用测定系数R-2的交叉验证的平均预测精度R-2,用于估计两个场区域中的重金属含量为0.816,0.796和0.652用于Cd; 0.787,0.888和0.832用于Pb;基于偏最小二乘回归的HG为0.906和0.867。结果表明,为CD和Hg获得更好的预测精度,而Pb获得最贫困的预测。此外,LG和Cr模型的性能优于Pb和Hg的RF模型的性能,表明LG和Cr可以提供确定重金属内容物的替代特征。总体而言,它的结论是,可以使用具有合理精度的遥感光谱来评估CD,Hg和Pb内容,尤其是与图书馆和现场收集的光谱相结合。

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