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Voltammetric Electronic Tongue and Support Vector Machines for Identification of Selected Features in Mexican Coffee

机译:伏安电子舌和支持向量机,用于识别墨西哥咖啡中的选定特征

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This paper describes a new method based on a voltammetric electronic tongue (ET) for the recognition of distinctive features in coffee samples. An ET was directly applied to different samples from the main Mexican coffee regions without any pretreatment before the analysis. The resulting electrochemical information was modeled with two different mathematical tools, namely Linear Discriminant Analysis (LDA) and Support Vector Machines (SVM). Growing conditions (i.e., organic or non-organic practices and altitude of crops) were considered for a first classification. LDA results showed an average discrimination rate of 88% ± 6.53% while SVM successfully accomplished an overall accuracy of 96.4% ± 3.50% for the same task. A second classification based on geographical origin of samples was carried out. Results showed an overall accuracy of 87.5% ± 7.79% for LDA and a superior performance of 97.5% ± 3.22% for SVM. Given the complexity of coffee samples, the high accuracy percentages achieved by ET coupled with SVM in both classification problems suggested a potential applicability of ET in the assessment of selected coffee features with a simpler and faster methodology along with a null sample pretreatment. In addition, the proposed method can be applied to authentication assessment while improving cost, time and accuracy of the general procedure.
机译:本文介绍了一种基于伏安电子舌(ET)的新方法来识别咖啡样品中的鲜明特征。在分析之前,无需进行任何预处理即可将ET直接应用于来自墨西哥主要咖啡地区的不同样品。用两种不同的数学工具对所得的电化学信息进行建模,即线性判别分析(LDA)和支持向量机(SVM)。第一类考虑了生长条件(即有机或非有机耕作方式和农作物的海拔高度)。 LDA结果显示平均辨别率为88%±6.53%,而SVM则成功完成了同一任务的96.4%±3.50%的总体准确度。根据样品的地理来源进行了第二次分类。结果显示,LDA的整体精度为87.5%±7.79%,SVM的优良性能为97.5%±3.22%。鉴于咖啡样品的复杂性,ET与SVM结合在两个分类问题中实现的高精度百分比表明,ET在通过更简单,更快速的方法进行零样品预处理的情况下对所选咖啡特征的评估具有潜在的适用性。另外,所提出的方法可以应用于认证评估,同时提高了通用过程的成本,时间和准确性。

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