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Quantitative analysis of toxic elements in polypropylene (PP) via laser-induced breakdown spectroscopy (LIBS) coupled with random forest regression based on variable importance (VI-RFR)

机译:通过激光诱导的击穿光谱(LIBS)与基于可变重要性的随机森林回归(VI-RFR)的随机林回归进行定量分析

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摘要

With the extensive use of plastic products, determining the amount of toxic elements in plastic products has become a pressing issue for human health and environmental protection. A combination of laser-induced breakdown spectroscopy (LIBS) and analytical methods has been used for the quantitative analysis of plastics, such as calibration methods and calibration-free methods. However, these methods present low precision in the quantitative analysis of plastic, and they do not focus on the determination of toxic elements (Cr and Hg), which are also harmful for human health and cause environmental problems. Chemometrics, a new multidisciplinary branch of chemistry, can be used to extract the maximum useful information for processing the large data, and it has gradually displayed its advantages in the related LIBS research field. However, the combination of LIBS and chemometrics has not been used for the quantitative analysis of plastics. Random forest based on variable importance (VIRF), the latest pattern recognition method based on classification trees or regression trees, has a good tolerance for noise and avoids the over-fitting phenomenon, and it has shown excellent performance in classification analysis. However, there are few reports on quantitative analysis using VIRF combined with LIBS. In this work, the combination of LIBS and random forest regression based on variable importance (VI-RFR) was used for the quantitative analysis of Pb, Cr, and Hg in PP. The spectral library consisted of 480 LIBS spectra from 6 types of plastics, with the spectra in the test set fixed and correlated versus the spectral data in the training set. Different pre-processing methods (normalization and mean centering) and variable importance were employed to improve the performance of VI-RFR for plastic analysis. To validate its performance for plastic analysis, VI-RFR was compared with random forest regression and partial least squares regression. VI-RFR exhibited the lowest root mean squared error and highest correlation coefficient, which indicated a better performance for the quantification of Pb, Hg and Cr in plastics.
机译:随着塑料制品的广泛使用,确定塑料制品中有毒元素的量已成为人类健康和环境保护的压迫问题。激光诱导的击穿光谱(LIBS)和分析方法的组合已被用于塑料的定量分析,例如校准方法和无需校准方法。然而,这些方法在塑料的定量分析中具有低精度,并且它们不会专注于测定有毒元素(Cr和Hg),这对人类健康也有害,并导致环境问题。化学计量学,一种新的化学多学科分支,可用于提取用于处理大数据的最大有用信息,并逐渐显示出相关的Libs研究领域的优势。然而,Libs和Chemometrics的组合尚未用于塑料的定量分析。基于可变重要性(virf)的随机森林,基于分类树木或回归树的最新模式识别方法,对噪音具有良好的耐受性,避免了过度拟合现象,并且在分类分析中表现出优异的性能。然而,使用VIRF与LIBS结合的数量分析很少有关于定量分析的报道。在这项工作中,基于可变重要性(VI-RFR)的Libs和随机森林回归的组合用于PP中Pb,Cr和Hg的定量分析。光谱库由来自6种塑料的480个Libs光谱组成,测试集中的光谱固定并相关与训练集中的光谱数据。采用不同的预处理方法(归一化和均衡)和可变重要性来改善VI-RFR进行塑性分析的性能。为了验证其对塑性分析的性能,将VI-RFR与随机森林回归和偏最小二乘回归进行了比较。 VI-RFR表现出最低的根均匀误差和最高的相关系数,这表明塑料中Pb,Hg和Cr的定量更好的性能。

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  • 来源
    《Analytical methods》 |2019年第37期|共6页
  • 作者单位

    Jilin Univ Coll Instrumentat &

    Elect Engn Changchun 130061 Jilin Peoples R China;

    Jilin Univ Coll Instrumentat &

    Elect Engn Changchun 130061 Jilin Peoples R China;

    Jilin Univ Coll Instrumentat &

    Elect Engn Changchun 130061 Jilin Peoples R China;

    Jilin Univ Coll Instrumentat &

    Elect Engn Changchun 130061 Jilin Peoples R China;

    Jilin Univ Coll Instrumentat &

    Elect Engn Changchun 130061 Jilin Peoples R China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 分析化学;
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