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Multi-element quantitative analysis of soils by laser induced breakdown spectroscopy (LIBS) coupled with univariate and multivariate regression methods

机译:激光诱导击穿光谱法(LIBS)结合单变量和多变量回归方法对土壤进行多元素定量分析

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It is crucial to make comprehensive assessments of soil under economic and efficiency requirements in order to guide the rational use of soil resources, including the identification of attributes, the control of pollutants, and the management of nutrients. Laser induced breakdown spectroscopy (LIBS) is excellent for such applications due to its unique advantages of simple preparation, rapid measurement, and multiple-element analysis. An analysis of Si, Al, Mg, Ca, Na, K, Mn, Ba, Ti, Cr, Cu, Sr and P in different standard soils using LIBS is reported here for the comparison of the quantitative results of a univariate regression method (calibration curve) and two multivariate regression methods (partial least squares regression (PLSR) and support vector regression (SVR)). As a result, the correlation coefficients (R2) of the Ca, K, Mg, Na and Sr elements were all greater than 0.90, while the calibration curves of Al, Ba, Cr, Cu, Mn, Ti and P presented poor linear performances with low R2 values of below 0.90. The robustness of the SVR model was superior to the PLSR model with a better prediction ability and a lower relative standard deviation (RSD) for both the training data and the test data, whilst the opposite was observed for the predicted data set used as external verification. The predicted relative errors of the prediction data given by PLSR for all analysis elements except Na and K were lower than those given by SVR. The relative errors of PLSR for Si, Al and Sr were within 10%, while the values for the other elements were between 10% and 20%, and 45% for Cu. It is therefore meaningful to propose a quantitative reference among the univariate linear regression, the multivariate linear regression and the multivariate nonlinear regression methods for the multi-element analysis of soil samples under complex matrix conditions.
机译:至关重要的是对经济和效率要求下的土壤进行综合评估,以指导土壤资源的合理利用,包括属性的识别,污染物的控制和养分的管理。激光诱导击穿光谱法(LIBS)由于其制备简单,测量快速和多元素分析的独特优势而非常适合此类应用。本文报道了使用LIBS分析不同标准土壤中Si,Al,Mg,Ca,Na,K,Mn,Ba,Ti,Cr,Cu,Sr和P的分析,以比较单变量回归方法的定量结果(校正曲线)和两种多元回归方法(偏最小二乘回归(PLSR)和支持向量回归(SVR))。结果,Ca,K,Mg,Na和Sr元素的相关系数(R2)均大于0.90,而Al,Ba,Cr,Cu,Mn,Ti和P的校正曲线表现出较差的线性性能具有低于0.90的低R2值。 SVR模型的鲁棒性优于PLSR模型,对训练数据和测试数据均具有更好的预测能力和较低的相对标准偏差(RSD),而用作外部验证的预测数据集则相反。除Na和K以外,PLSR给出的所有分析元素的预测数据的预测相对误差均低于SVR给出的预测相对误差。 Si,Al和Sr的PLSR相对误差在10%以内,而其他元素的值在10%至20%之间,Cu的相对误差在45%之间。因此,有必要在单变量线性回归,多元线性回归和多元非线性回归方法之间提出定量参考,以用于复杂基质条件下土壤样品的多元素分析。

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