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Rapid elemental prediction of heterogeneous tropical soils from pXRF data: a comparison of models via linear regressions and machine learning algorithms

机译:手持式XRF光谱仪数据对非均质热带土壤进行快速元素预测:通过线性回归和机器学习算法对模型进行比较

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Context. USEPA 3051a is a standard analytical methodology for the extraction of inorganic substances in soils. However, these analyses are expensive, time-consuming and produce chemical residues. Conversely, proximal sensors such as portable X-ray fluorescence (pXRF) spectrometry reduce analysis time, costs and consequently offer a valuable alternative to laboratory analyses.Aim. We aimed to investigate the feasibility to predict the results of the USEPA 3051a method for 28 chemical elements from pXRF data.Methods. Samples (n = 179) representing a large area from Brazil were analysed for elemental composition using the USEPA 3051a method and pXRF scanning (Al, Ca, Cr, Cu, Fe, K, Mn, Ni, P, Pb, Sr, Ti, V, Zn and Zr). Linear regressions (simple linear regression - SLR and stepwise multiple linear regressions - SMLR) and machine learning algorithms (support vector machine - SVM and random forest - RF) were tested and compared. Modelling was developed with 70 of the data, while the remaining 30 were used for validation. Key results.Results demonstrated that SVM and RF performed better than SLR and SMLR for the prediction of Al, Ba, Bi, Ca, Cd, Ce, Co, Cr, Cu, Fe, Mg, Mn, Mo, P, Pb, Sn, Sr, Ti, Tl, V, Zn and Zr; R-2 and RPD values ranged from 0.52 to 0.94 and 1.43 to 3.62, respectively, as well as the lowest values of RMSE and NRMSE values (0.28 to 0.70 mg kg(-1)).Conclusions and implications. Most USEPA 3051a results can be accurately predicted from pXRF data saving cost, time, and ensuring large-scale routine geochemical characterisation of tropical soils in an environmentally friendly way.
机译:上下文。USEPA 3051a是用于提取土壤中无机物质的标准分析方法。然而,这些分析昂贵、耗时且会产生化学残留物。相反,便携式X射线荧光(pXRF)光谱仪等近端传感器可减少分析时间和成本,从而为实验室分析提供有价值的替代方案。目的。我们旨在研究从手持式XRF数据中预测28种化学元素的USEPA 3051a方法结果的可行性。方法。使用USEPA 3051a方法和手持式XRF光谱仪扫描(Al、Ca、Cr、Cu、Fe、K、Mn、Ni、P、Pb、Sr、Ti、V、Zn和Zr)分析了来自巴西的大面积样品(n = 179)的元素组成。测试并比较了线性回归(简单线性回归 - SLR 和逐步多元线性回归 - SMLR)和机器学习算法(支持向量机 - SVM 和随机森林 - RF)。使用 70% 的数据进行建模,其余 30% 用于验证。主要结果。结果表明,SVM和RF对Al、Ba、Bi、Ca、Cd、Ce、Co、Cr、Cu、Fe、Mg、Mn、Mo、P、Pb、Sn、Sr、Ti、Tl、V、Zn和Zr的预测效果优于SLR和SMLR;R-2 和 RPD 值分别为 0.52 至 0.94 和 1.43 至 3.62,RMSE 和 NRMSE 值的最低值为 0.28 至 0.70 mg kg(-1))。结论和影响。大多数USEPA 3051a结果都可以从手持式XRF数据中准确预测,从而节省成本和时间,并确保以环保的方式对热带土壤进行大规模的常规地球化学表征。

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