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首页> 外文期刊>Spectrochimica acta, Part A. Molecular and biomolecular spectroscopy >Assessing heavy metal concentrations in earth-cumulic-orthic-anthrosols soils using Vis-NIR spectroscopy transform coupled with chemometrics
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Assessing heavy metal concentrations in earth-cumulic-orthic-anthrosols soils using Vis-NIR spectroscopy transform coupled with chemometrics

机译:使用Vis-Nir光谱转化与化学计量学相结合的vis-nir光谱转化评估土木 - 官蒽 - 蒽 - 蒽 - 蒽 - 蒽 - 蒽 - 蒽 - 蒽 - 蒽 - 蒽 - 蒽 - 蒽 - 蒽 - 蒽 - 蒽 - 蒽 - 蒽醇的重金属浓度

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Soil visible and near infrared (Vis-NIR) has become an applicable and interesting technique to predict soil properties because it is a fast, cost-effective, and non-destruction technique. This study presents an application of diffuse reflectance spectroscopy (DRS) and chemometric techniques for evaluating concentrations of heavy metals in earth-cumulic-orthic-anthrosols soils. 44 soil samples of 0-30 cm were collected from three representative agriculture areas (Fufeng, Yangling, and Wugong transacts with 16, 10, and 18 samples, respectively) and analyzed for Cr, Mn, Ni, Cu, Zn, As, Cd, Hg, and Pb by Vis-NIR spectroscopy (350-2500 nm). Average levels of Cr, Mn, Ni, Cu, Zn, As, Cd, Hg, and Pb were 17.95, 274, 12.77, 7.29, 15.81, 7.51, 0.40, 12.58, and 21.05 mg kg-1, respectively. Twenty-four preprocessing methods were extracted sensitive bands. Partial least squares regression (PLSR) used to obtain effective bands and predict soil heavy metals concentrations. The accuracy of the predictive models were assessed in terms of coefficient of determination (R-2), the root mean squared error (RMSE), standard error (SE) and the ratio of performance to deviation (RPD). The results revealed that excellent predictions for Hg(Rv(2) = 0.99, RPD = 8.59. RMSEP = 0.12, SEP = 0.13), Cr (Rv(2) = 0.97, RPD = 5.96, RMSEP = 0.10, SEP = 0.10), Ni (Rv(2) = 0.93, RPD = 3.74, RMSEP = 0.13. SEP = 0.13), Pb (Rv(2) = 0.97, RPD = 5.57. RMSEP = 0.10, SEP = 0.01), and Cu (Rv(2) = 0.92. RPD = 3.38, RMSEP = 0.08, SEP = 0.08). Models for As (Rv(2) = 0.87, RPD = 2.58), Mn (Rv(2) = 0.80, RPD = 2.09), and Cd (RPD = 2.77) had Rv(2) < 0.9 and RPD<3.0, not excellent predictions. For the element of Zn, although Rv2 = 0.91, RPD = 3.13, the offset had too much deviation, and it cannot be considered an excellent model. Therefore, a combination of spectroscopic and chemometric techniques can be applied as a practical, rapid, low-cost and quantitative approach for evaluating soil physical and chemical properties in Shaanxi, China. (C) 2019 Elsevier B.V. All lights reserved.
机译:可见和近红外线(Vis-NIR)已成为一种适用和有趣的技术,以预测土壤性质,因为它是一种快速,经济效益和非销毁技术。该研究介绍了弥漫反射光谱(DRS)和化学计量技术,用于评估地球 - 官蒽 - 蒽 - 蒽 - 蒽醇土壤中重金属浓度的应用。从三个代表性农业区(富力,杨凌,武甘分别分别为16,10和18个样品,收集44个土壤样品,分别为CR,Mn,Ni,Cu,Zn,As,Cd. Vis-Nir光谱(350-2500nm),Hg和Pb。 Cr,Mn,Ni,Cu,Zn,As,Cd,Hg和Pb的平均水平为17.95,274,12.77,7.29,15.81,7.51,0.40,12.58和21.05mg kg-1。提取二十四种预处理方法敏感带。局部最小二乘回归(PLSR)用于获得有效条带和预测土壤重金属浓度。在确定系数(R-2),根均方平方误差(RMSE),标准误差(SE)和偏差的比率(RPD)中,评估预测模型的准确性。结果表明,对Hg的优异预测(RV(2)= 0.99,RPD = 8.59。RMSEP = 0.12,SEP = 0.13),Cr(RV(2)= 0.97,RPD = 5.96,RMSEP = 0.10,SEP = 0.10) ,Ni(RV(2)= 0.93,RPD = 3.74,RMSEP = 0.13。SEP = 0.13),PB(RV(2)= 0.97,RPD = 5.57。RMSEP = 0.10,SEP = 0.01)和CU(RV( 2)= 0.92。RPD = 3.38,RMSEP = 0.08,SEP = 0.08)。型号(RV(2)= 0.87,RPD = 2.58),Mn(RV(2)= 0.80,RPD = 2.09)和CD(RPD = 2.77)具有RV(2)<0.9和RPD <3.0,而不是出色的预测。对于Zn的元素,虽然RV2 = 0.91,RPD = 3.13,偏移量过多偏差,并且不能被认为是一个优秀的模型。因此,光谱和化学技术的组合可以作为评估中国陕西土壤物理和化学性质的实用,快速,低成本和定量的方法。 (c)2019 Elsevier B.v.保留所有灯。

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