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Predictions of Cu, Zn, and Cd Concentrations in Soil Using Portable X-Ray Fluorescence Measurements

机译:采用便携式X射线荧光测量的土壤中Cu,Zn和Cd浓度的预测

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Portable X-ray fluorescence (PXRF) measurements on 1520 soil samples were used to create national prediction models for copper (Cu), zinc (Zn), and cadmium (Cd) concentrations in agricultural soil. The models were validated at both national and farm scales. Multiple linear regression (MLR), random forest (RF), and multivariate adaptive regression spline (MARS) models were created and compared. National scale cross-validation of the models gave the following R-2 values for predictions of Cu (R-2 = 0.63), Zn (R-2 = 0.92), and Cd (R-2 = 0.70) concentrations. Independent validation at the farm scale revealed that Zn predictions were relatively successful regardless of the model used (R-2 > 0.90), showing that a simple MLR model can be sufficient for certain predictions. However, predictions at the farm scale revealed that the non-linear models, especially MARS, were more accurate than MLR for Cu (R-2 = 0.94) and Cd (R-2 = 0.80). These results show that multivariate modelling can compensate for some of the shortcomings of the PXRF device (e.g., high limits of detection for certain elements and some elements not being directly measurable), making PXRF sensors capable of predicting elemental concentrations in soil at comparable levels of accuracy to conventional laboratory analyses.
机译:1520个土壤样品上的便携式X射线荧光(PXRF)测量用于为农业土壤中的铜(Cu),锌(Zn)和镉(CD)浓度产生国家预测模型。该模型在国家和农业级别验证。创建并比较了多个线性回归(MLR),随机森林(RF)和多变量自适应回归样条(MARS)模型。模型的国家规模交叉验证给出了Cu(R-2 = 0.63),Zn(R-2 = 0.92)和Cd(R-2 = 0.70)浓度的预测的以下R-2值。在农场规模的独立验证显示,无论使用的模型(R-2> 0.90),Zn预测相对成功,表明一个简单的MLR模型可以足以进行某些预测。然而,农场规模的预测显示,对于Cu(R-2 = 0.94)和Cd(R-2 = 0.80),MLR的非线性模型,尤其是MARS更精确。这些结果表明,多变量建模可以补偿PXRF器件的一些缺点(例如,对某些元件的高限制,某些元素的检测和一些不可直接可测量的元件的限制),使得能够预测可比较水平的土壤中的元素浓度的PXRF传感器对传统实验室分析的准确性。

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