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Estimation of Arsenic Content in Soil Based on Laboratory and Field Reflectance Spectroscopy

机译:基于实验室反射光谱法的土壤中砷含量的估算

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摘要

In this study, in order to solve the difficulty of the inversion of soil arsenic (As) content using laboratory and field reflectance spectroscopy, we examined the transferability of the prediction method. Sixty-three soil samples from the Daye city area of the Jianghan Plain region of China were taken and studied in this research. The characteristic wavelengths of soil As content were then extracted from the full bands based on iteratively retaining informative variables (IRIV) coupled with Spearman’s rank correlation analysis (SCA). Firstly, the IRIV algorithm was used to roughly select the original spectral data. Gaussian filtering (GF), first derivative (FD) filtering, and gaussian filtering again (GFA) pretreatments were then used to improve the correlation between the spectra and soil As content. A subset with absolute correlation values greater than 0.6 was then retained as the optimal subset after each pretreatment. Finally, partial least squares regression (PLSR), Bayesian ridge regression (BRR), ridge regression (RR), kernel ridge regression (KRR), support vector machine regression (SVMR), eXtreme gradient boosting (XGBoost) regression, and random forest regression (RFR) models were used to estimate the soil As values using the different characteristic variables. The results showed that, compared with the traditional method based on IRIV, using the characteristic bands selected by the IRIV-SCA method can effectively improve the prediction accuracy of the models. For the laboratory spectra experiment stage, the six most representative characteristic bands were selected. The performance of IRIV-SCA-SVMR was found to be the best, with the coefficient of determination (R2), root-mean-square error (RMSE), and mean absolute error (MAE) in the validation set being 0.97, 0.22, and 0.11, respectively. For the field spectra experiment stage, the 12 most representative characteristic bands were selected. The performance of IRIV-SCA-XGBoost was found to be the best, with the R2, RMSE, and MAE in the validation set being 0.83, 0.35, and 0.29, respectively. The accuracy and stability of the inversion of soil As content are significantly improved by the use of the proposed method, and the method could be used to provide accurate data for decision support for the treatment and recovery of As pollution over a large area.
机译:在本研究中,为了解决使用实验室反射光谱的土壤砷(AS)含量的难度的难度,我们检查了预测方法的可转移性。在这项研究中采取了江汉平地区大冶市区的六十三个土壤样本。然后基于迭代保留信息变量(IRIV)与Spearman的等级相关性分析(SCA)相结合的全带,从满带中提取土壤的特征波长。首先,使用IRIV算法粗略地选择原始频谱数据。然后使用高斯滤波(GF),第一导数(FD)滤波和再次高斯滤波(GFA)预处理,以改善光谱和土壤之间的相关性作为含量。然后在每次预处理之后将具有大于0.6大于0.6的绝对相关值的子集。最后,部分最小二乘回归(PLSR),贝叶斯岭回归(BRR),RIDGE回归(RR),内核RIDGE回归(KRR),支持向量机回归(SVMR),极端梯度升压(XGBoost)回归和随机林回归(RFR)模型用于使用不同特征变量估计土壤作为值。结果表明,与基于IRIV的传统方法相比,使用IRIV-SCA方法选择的特征频带可以有效地提高模型的预测精度。对于实验室光谱实验阶段,选择了六种最具代表性的特征条带。发现IRIV-SCA-SVMR的性能是最佳的,在验证集中的确定系数(R2),根均方误差(RMSE)和平均绝对误差(MAE)是0.97,0.22,和0.11分别。对于场光谱实验阶段,选择12个最代表性的特征频带。发现IRIV-SCA-XGBoost的性能是最好的,验证中的R2,RMSE和MAE分别为0.83,0.35和0.29。通过使用所提出的方法,土壤反转作为含量的倒置的准确性和稳定性,并且该方法可用于提供准确的决策支持,以便在大面积上进行处理和恢复污染。

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