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The Electronic Nose Coupled with Chemometric Tools for Discriminating the Quality of Black Tea Samples In Situ

机译:电子鼻子与化学计量工具相结合,以鉴别原位的黑茶样品的质量

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An electronic nose (E-nose), comprising eight metal oxide semiconductor (MOS) gas sensors, was used in situ for real-time classification of black tea according to its quality level. Principal component analysis (PCA) coupled with signal preprocessing techniques (i.e., time set value preprocessing, F 1; area under curve preprocessing, F 2; and maximum value preprocessing, F 3), allowed grouping the samples from seven brands according to the quality level. The E-nose performance was further checked using multivariate supervised statistical methods, namely, the linear and quadratic discriminant analysis, support vector machine together with linear or radial kernels (SVM-linear and SVM-radial, respectively). For this purpose, the experimental dataset was split into two subsets, one used for model training and internal validation using a repeated K-fold cross-validation procedure (containing the samples collected during the first three days of tea production); and the other, for external validation purpose (i.e., test dataset, containing the samples collected during the 4th and 5th production days). The results pointed out that the E-nose-SVM-linear model together with the F 3 signal preprocessing method was the most accurate, allowing 100% of correct predictive classifications (external-validation data subset) of the samples according to their quality levels. So, the E-nose-chemometric approach could be foreseen has a practical and feasible classification tool for assessing the black tea quality level, even when applied in-situ, at the harsh industrial environment, requiring a minimum and simple sample preparation. The proposed approach is a cost-effective and fast, green procedure that could be implemented in the near future by the tea industry.
机译:包括八个金属氧化物半导体(MOS)气体传感器的电子鼻子(E-鼻子)原位用于根据其质量水平实时分类红茶。主成分分析(PCA)与信号预处理技术(即,时间设定值预处理,F 1;曲线下的区域,F 2;和最大值预处理,F 3),允许根据质量将样本从七个品牌分组。等级。使用多变量监督统计方法进一步检查电子鼻部性能,即线性和二次判别分析,支持向量机与线性或径向核(SVM-LINEAR和SVM-RADIAL)一起使用。为此目的,实验数据集被分成两个子集,用于使用重复的k折交叉验证程序的模型培训和内部验证(含有在茶叶生产的前三天收集的样品);另一个,对于外部验证目的(即,测试数据集,包含在第4和第5次生产天期间收集的样本)。结果指出,电子鼻部SVM-LINEAR模型与F 3信号预处理方法一起是最准确的,允许根据其质量水平的样本的100%正确的预测分类(外部验证数据子集)。因此,可以预见的电子鼻化学化方法具有实用性和可行的分类工具,用于评估红茶质量水平,即使在原位应用于恶劣的工业环境,需要最低和简单的样品制备。拟议的方法是一种成本效益,快速的绿色程序,可以在茶业的不久的将来实施。

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