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The use of diffuse reflectance mid-infrared spectroscopy for the prediction of the concentration of chemical elements estimated by X-ray fluorescence in agricultural and grazing European soils

机译:使用漫反射中红外光谱法预测通过农业和放牧欧洲土壤中X射线荧光估算的化学元素的浓度

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摘要

The aim of this study was to develop partial least-squares (PLS) regression models using diffuse reflectance Fourier transform mid-infrared (MIR) spectroscopy for the prediction of the concentration of elements in soil determined by X-ray fluorescence (XRF). A total of 4130 soils from the GEMAS European soil sampling program (geochemical mapping of agricultural soils and grazing land of Europe) were used for the development of models to predict concentrations of Al, As, Ba, Ca, Ce, Co, Cr, Cs, Cu, Fe, Ga, Hf, K, La, Mg, Mn, Na, Nb, Ni, P, Pb, Rb, Sc, Si, Sr, Th, Ti, V, Y, Zn and Zr in soil using MIR spectroscopy. The results were compared with those obtained where MIR models were developed with the same soils but using the concentration of elements extracted with aqua regia (AR).The PLS models were cross-validated against the experimental log-transformed XRF values of all the elements. The calibration models were derived from a set of 1000 randomly selected calibration samples. The rest of the samples (3130) were used as an independent validation set. According to the residual predictive deviation (RPD), predictions were classified as follows: “Good quality”, Ca (2.9), Mg (2.5), Al (2.3), Fe (2.2), Ga (2.2), Si (2.1), Na (2.0); “Indicator quality”, V (1.9), Ni (1.9), Sc (1.9), K (1.8), Ti (1.8), Rb (1.8), Zn (1.7), Co (1.7), Zr (1.6), Cr (1.6), Sr (1.6), Y (1.6), Nb (1.6), Ba (1.5), Mn (1.5), As (1.5), Ce (1.5); “Poor quality”, Cs (1.4), Th (1.4), P (1.4), Cu (1.4), Pb (1.3), La (1.2), Hf (1.1).Good agreement was observed between the RPD values obtained for the elements analysed in this study and those from the AR study. Despite the different elemental concentrations determined by the XRF method compared to the AR method, MIR spectroscopy was still capable of predicting elemental concentrations.
机译:这项研究的目的是使用漫反射傅里叶变换中红外(MIR)光谱技术开发偏最小二乘(PLS)回归模型,以预测X射线荧光(XRF)测定的土壤中元素的浓度。来自GEMAS欧洲土壤采样计划(欧洲的农业土壤和牧场的地球化学绘图)的总共4130种土壤用于模型开发,以预测Al,As,Ba,Ca,Ce,Co,Cr,Cs的浓度MIR法测定土壤中的铜,铁,镓,H,H,钾,镧,镁,锰,钠,铌,镍,磷,铅,R,Sc,Sc,硅,锶,Th,钛,钒,Y,锌和锆光谱学。将结果与在相同土壤但使用王水(AR)提取的元素浓度开发MIR模型时获得的结果进行比较.PLS模型针对所有元素的对数转换后的实验XRF值进行了交叉验证。校准模型来自一组1000个随机选择的校准样品。其余样本(3130)用作独立的验证集。根据剩余的预测偏差(RPD),将预测分类如下:“好质量”,钙(2.9),镁(2.5),铝(2.3),铁(2.2),镓(2.2),硅(2.1) ,Na(2.0); “指标质量”,V(1.9),Ni(1.9),Sc(1.9),K(1.8),Ti(1.8),Rb(1.8),Zn(1.7),Co(1.7),Zr(1.6), Cr(1.6),Sr(1.6),Y(1.6),Nb(1.6),Ba(1.5),Mn(1.5),As(1.5),Ce(1.5); “差的质量”,Cs(1.4),Th(1.4),P(1.4),Cu(1.4),Pb(1.3),La(1.2),Hf(1.1)。观察到的RPD值一致本研究和AR研究中分析的元素。尽管通过XRF方法测定的元素浓度与AR方法相比有所不同,但MIR光谱学仍能够预测元素浓度。

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