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基于不同光谱变换和建模方法的金属尾矿区域土壤重金属反演

Inversion of soil heavy metals in metal tailings area based on different spectral transformation and modeling methods.

作者信息

Yang Nannan, Han Ling, Liu Ming

机构信息

School of Land Engineering, Chang'an University, Xi'an, 710054, China.

Shaanxi Key Laboratory of Land Consolidation, Chang'an University, Xi'an, 710054, China.

出版信息

Heliyon. 2023 Sep 7;9(9):e19782. doi: 10.1016/j.heliyon.2023.e19782. eCollection 2023 Sep.

Abstract

The exploitation of mineral resources has seriously polluted the environment around mines, notably in terms of heavy metal contamination of tailings pond soil. Hyperspectral remote sensing, as opposed to conventional on-site sampling and laboratory analysis, offers a potent tool for effective monitoring the content of soil heavy metals. Therefore, we investigated the inversion models of heavy metal content in metal tailings area based on measured hyperspectral and multispectral data. Hyperspectral and its transformation, as well as the simulated Landsat8-OLI multispectral were used for model inversion respectively. Stepwise Multiple Linear Regression (SMLR), Partial Least Squares Regression (PLSR) and Back Propagation Neuron Network (BPNN) were established to study the spectral inversion of eight heavy metals (Cu, Cd, Cr, Ni, Pb, Zn, As, and Hg). The direct inversion models were established on the basis of correlation analysis and the adjust coefficient of determination () and Root Mean Square Error () were used for model evaluation. Then the best combination of spectral transformation and inversion model were explored. The model inversion results suggested that: (1) Hyperspectral transformation can generally improve the model accuracy, especially the second derivative spectral, based on which the training _ of Hg SMLR and PLSR models are as high as 0.795 and 0.802. (2) The BP neural network inversion based on the denoised hyperspectrum demonstrate that both the training and testing _ of Cd, Ni and Hg models are all greater than 0.5, indicating good applicability in practical extrapolation. (3) Both the training and testing of Cu and Hg PLSR models based on simulated _Landsat8-OLI multispectral are greater than 0.5, and Hg has lower and lager with training and testing values of 0.833 and 0.553 respectively. (4) Multispectral remote sensing detection and mapping of Hg contamination were realized by the optimal simulation model of Hg. Hence, it is feasible to simulate the multispectral with hyperspectral data for investigating heavy metal contamination.

摘要

矿产资源的开发已严重污染了矿区周围的环境,尤其是尾矿库土壤的重金属污染。与传统的现场采样和实验室分析不同,高光谱遥感为有效监测土壤重金属含量提供了一个有力工具。因此,我们基于实测高光谱和多光谱数据,研究了金属尾矿区域重金属含量的反演模型。分别使用高光谱及其变换,以及模拟的Landsat8 - OLI多光谱数据进行模型反演。建立逐步多元线性回归(SMLR)、偏最小二乘回归(PLSR)和反向传播神经网络(BPNN)来研究8种重金属(铜、镉、铬、镍、铅、锌、砷和汞)的光谱反演。在相关性分析的基础上建立直接反演模型,并使用决定系数调整值()和均方根误差()进行模型评估。然后探索光谱变换和反演模型的最佳组合。模型反演结果表明:(1)高光谱变换一般可以提高模型精度,特别是二阶导数光谱,基于此汞的SMLR和PLSR模型的训练_分别高达0.795和0.802。(2)基于去噪高光谱的BP神经网络反演表明,镉、镍和汞模型的训练和测试_均大于0.5,表明在实际外推中具有良好的适用性。(3)基于模拟的Landsat8 - OLI多光谱的铜和汞PLSR模型的训练和测试均大于0.5,汞的较低且较大,训练和测试值分别为0.833和0.553。(4)通过汞的最优模拟模型实现了汞污染的多光谱遥感检测与制图。因此,用高光谱数据模拟多光谱来研究重金属污染是可行的。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/acfa/10559111/19495c8c4564/gr1.jpg

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