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Stable Isotope Ratio and Elemental Profile Combined with Support Vector Machine for Provenance Discrimination of Oolong Tea (Wuyi-Rock Tea)

机译:稳定同位素比和元素谱与支持向量机相结合的乌龙茶(乌龙茶)种源鉴别

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摘要

This paper focused on an effective method to discriminate the geographical origin of Wuyi-Rock tea by the stable isotope ratio (SIR) and metallic element profiling (MEP) combined with support vector machine (SVM) analysis. Wuyi-Rock tea (n = 99) collected from nine producing areas and non-Wuyi-Rock tea (n = 33) from eleven nonproducing areas were analysed for SIR and MEP by established methods. The SVM model based on coupled data produced the best prediction accuracy (0.9773). This prediction shows that instrumental methods combined with a classification model can provide an effective and stable tool for provenance discrimination. Moreover, every feature variable in stable isotope and metallic element data was ranked by its contribution to the model. The results show that δ2H, δ18O, Cs, Cu, Ca, and Rb contents are significant indications for provenance discrimination and not all of the metallic elements improve the prediction accuracy of the SVM model.
机译:本文以稳定同位素比(SIR)和金属元素谱(MEP)结合支持向量机(SVM)分析为基础,判别武夷岩茶的地理来源。通过既定方法分析了从9个产区收集的武夷岩茶(n = 99)和从11个非产区的非武夷岩茶(n = 33)的SIR和MEP。基于耦合数据的SVM模型产生了最佳的预测精度(0.9773)。该预测表明,仪器方法与分类模型相结合可以提供有效且稳定的来源判别工具。此外,稳定同位素和金属元素数据中的每个特征变量均按其对模型的贡献进行排序。结果表明,δ 2 H,δ 18 O,Cs,Cu,Ca和Rb含量是鉴别来源的重要指标,并非所有金属元素都能改善支持向量机模型的预测精度。

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