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Estimation of Potentially Toxic Elements Contamination in Anthropogenic Soils on a Brown Coal Mining Dumpsite by Reflectance Spectroscopy: A Case Study

机译:反射光谱法估算褐煤开采场上人为土壤中潜在的有毒元素污染:一个案例研究

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摘要

In order to monitor Potentially Toxic Elements (PTEs) in anthropogenic soils on brown coal mining dumpsites, a large number of samples and cumbersome, time-consuming laboratory measurements are required. Due to its rapidity, convenience and accuracy, reflectance spectroscopy within the Visible-Near Infrared (Vis-NIR) region has been used to predict soil constituents. This study evaluated the suitability of Vis-NIR (350–2500 nm) reflectance spectroscopy for predicting PTEs concentration, using samples collected on large brown coal mining dumpsites in the Czech Republic. Partial Least Square Regression (PLSR) and Support Vector Machine Regression (SVMR) with cross-validation were used to relate PTEs data to the reflectance spectral data by applying different preprocessing strategies. According to the criteria of minimal Root Mean Square Error of Prediction of Cross Validation (RMSEPcv) and maximal coefficient of determination (R2 cv) and Residual Prediction Deviation (RPD), the SVMR models with the first derivative pretreatment provided the most accurate prediction for As (R2 cv) = 0.89, RMSEPcv = 1.89, RPD = 2.63). Less accurate, but acceptable prediction for screening purposes for Cd and Cu (0.66 ˂ R2 cv) ˂ 0.81, RMSEPcv = 0.0.8 and 4.08 respectively, 2.0 ˂ RPD ˂ 2.5) were obtained. The PLSR model for predicting Mn (R2 cv) = 0.44, RMSEPcv = 116.43, RPD = 1.45) presented an inadequate model. Overall, SVMR models for the Vis-NIR spectra could be used indirectly for an accurate assessment of PTEs’ concentrations.
机译:为了监测褐煤采矿场上人为土壤中的潜在有毒元素(PTE),需要大量样本以及繁琐且费时的实验室测量。由于其快速,方便和准确,近可见红外(Vis-NIR)区域内的反射光谱已用于预测土壤成分。这项研究使用了在捷克共和国的大型褐煤开采场上收集的样品,评估了Vis-NIR(350-2500 nm)反射光谱在预测PTE浓度方面的适用性。通过应用不同的预处理策略,使用具有交叉验证的偏最小二乘回归(PLSR)和支持向量机回归(SVMR)将PTE数据与反射光谱数据相关联。根据交叉验证预测的最小均方根误差(RMSEPcv),最大确定系数(R 2 cv)和残差预测偏差(RPD)的准则,使用一阶导数的SVMR模型预处理可以最准确地预测As(R 2 cv)= 0.89,RMSEPcv = 1.89,RPD = 2.63)。获得的筛查结果对Cd和Cu的准确度较低,但可接受的预测值(0.66×R 2 cv)≤0.81,RMSEPcv分别为0.0.8和4.08,2.0≤RPD≤2.5。用于预测Mn(R 2 cv)= 0.44,RMSEPcv = 116.43,RPD = 1.45的PLSR模型提出的模型不足。总体而言,用于Vis-NIR光谱的SVMR模型可以间接用于准确评估PTE的浓度。

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