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Predicting heavy metal concentrations in soils and plants using field spectrophotometry

机译:使用现场分光光度法预测土壤和植物中的重金属浓度

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Aim of this study is to predict heavy metal (HM) concentrations in soils and plants using field remote sensing methods. The studied sites were an industrial town of Kajaran and city of Yerevan. The research also included sampling of soils and leaves of two tree species exposed to different pollution levels and determination of contents of HM in lab conditions. The obtained spectral values were then collated with contents of HM in Kajaran soils and the tree leaves sampled in Yerevan, and statistical analysis was done. Consequently, Zn and Pb have a negative correlation coefficient (p < 0.01) in a 2498 nm spectral range for soils. Pb has a significantly higher correlation at red edge for plants. A regression models and artificial neural network (ANN) for HM prediction were developed. Good results were obtamed for the best stress sensitive spectral band ANN (R~2~0.9, RPD~2.0), Simple Linear Regression (SLR) and Partial Least Squares Regression (PLSR) (R~2~0.7, RPD~1.4) models. Multiple Linear Regression (MLR) model was not applicable to predict Pb and Zn concentrations in soils in this research. Almost all full spectrum PLS models provide good calibration and validation results (RPD>1.4). Full spectrum ANN models are characterized by excellent calibration R2, rRMSE and RPD (0.9; 0.1 and >2.5 respectively). For prediction of Pb and Ni contents in plants SLR and PLS models were used. The latter provide almost the same results. Our findings indicate that it is possible to make coarse direct estimation of HM content in soils and plants using rapid and economic reflectance spectroscopy.
机译:这项研究的目的是使用野外遥感方法预测土壤和植物中的重金属(HM)浓度。被研究的地点是卡哈兰工业镇和埃里温市。该研究还包括对两种污染程度不同的树种的土壤和叶片进行采样,并在实验室条件下测定重金属含量。然后将获得的光谱值与Kajaran土壤中的HM含量和在埃里温采样的树叶进行核对,并进行统计分析。因此,在土壤的2498 nm光谱范围内,Zn和Pb具有负相关系数(p <0.01)。铅在植物的红色边缘具有显着更高的相关性。建立了用于HM预测的回归模型和人工神经网络(ANN)。最佳应力敏感谱带ANN(R〜2〜0.9,RPD〜2.0),简单线性回归(SLR)和偏最小二乘回归(PLSR)(R〜2〜0.7,RPD〜1.4)模型都取得了良好的结果。本研究不适用于多元线性回归(MLR)模型来预测土壤中铅和锌的浓度。几乎所有全谱PLS模型都提供了良好的校准和验证结果(RPD> 1.4)。全光谱人工神经网络模型的特点是具有出色的校准R2,rRMSE和RPD(分别为0.9、0.1和> 2.5)。为了预测植物中的Pb和Ni含量,使用了SLR和PLS模型。后者提供几乎相同的结果。我们的发现表明,可以使用快速和经济的反射光谱法对土壤和植物中的HM含量进行粗略的直接估算。

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