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Feasibility of estimating heavy metal contaminations in floodplain soils using laboratory-based hyperspectral data—A case study along Le’an River, China

机译:基于实验室的高光谱数据估算洪泛区土壤中重金属污染的可行性-以中国沿安河为例

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It is necessary to estimate heavy metal concentrations within soils for understanding heavy metal contaminations and for keeping the sustainable developments of ecosystems. This study, with the floodplain along Le’an River and its two branches in Jiangxi Province of China as a case study, aimed to explore the feasibility of estimating concentrations of heavy metal lead (Pb), copper (Cu) and zinc (Zn) within soils using laboratory-based hyperspectral data. Thirty soil samples were collected, and their hyperspectral data, soil organic matters and Pb, Cu and Zn concentrations were measured in the laboratory. The potential relations among hyperspectral data, soil organic matter and Pb, Cu and Zn concentrations were explored and further used to estimate Pb, Cu and Zn concentrations from hyperspectral data with soil organic matter as a bridge. The results showed that the ratio of the first-order derivatives of spectral absorbance at wavelengths 624 and 564 nm could explain 52% of the variation of soil organic matter; the soil organic matter could explain 59%, 51% and 50% of the variation of Pb, Cu and Zn concentrations with estimated standard errors of 1.41, 48.27 and 45.15 mg·kg?; and the absolute estimation errors were 8%–56%, 12%–118% and 2%–22%, and 50%, 67% and 100% of them were less than 25% for Pb, Cu and Zn concentration estimations. We concluded that the laboratory-based hyperspectral data hold potentials in estimating concentrations of heavy metal Pb, Cu and Zn in soils. More sampling points or other potential linear and non-linear regression methods should be used for improving the stabilities and accuracies of the estimation models.
机译:有必要估算土壤中的重金属浓度,以了解重金属污染并保持生态系统的可持续发展。这项研究以沿乐安河及其江西省的两个支流平原为例,旨在探讨估算重金属铅(Pb),铜(Cu)和锌(Zn)浓度的可行性在土壤中使用基于实验室的高光谱数据。收集了30个土壤样品,并在实验室中测量了它们的高光谱数据,土壤有机质以及Pb,Cu和Zn浓度。探索了高光谱数据,土壤有机质与Pb,Cu和Zn浓度之间的潜在关系,并进一步以土壤有机质为桥梁,根据高光谱数据估算了Pb,Cu和Zn浓度。结果表明,在波长624和564 nm处光谱吸光度的一阶导数比可以解释52%的土壤有机质变化。土壤有机质可解释铅,铜和锌浓度变化的59%,51%和50%,估计标准误为1.41、48.27和45.15 mg·kg ?;铅,铜和锌的浓度估计的绝对估计误差分别为8%–56%,12%–118%和2%–22%,其中50%,67%和100%小于25%。我们得出的结论是,基于实验室的高光谱数据具有估算土壤中重金属Pb,Cu和Zn浓度的潜力。应该使用更多的采样点或其他潜在的线性和非线性回归方法来提高估计模型的稳定性和准确性。

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