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The classification and prediction of green teas by electrochemical response data extraction and fusion approaches based on the combination of e-nose and e-tongue

机译:基于电子鼻和电子舌结合的电化学响应数据提取和融合方法对绿茶的分类和预测

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摘要

Aroma and taste are the most important attributes that influence the pleasantness of tea infusion. In this paper, e-nose and e-tongue were combined to identify the tea samples of various grades, and two fusion feature datasets from the electrochemical response were established for the analysis on the basis of the partial-area fusion dataset (PAFD, not including the 'aftertaste values') and total-area fusion dataset (TAFD, including the 'aftertaste values'). Principal component analysis (PCA), discriminant factor analysis (DFA) and partial least-squares regression (PLSR) were applied to classify the samples and make predictions. DFA with TAFD yielded the best classification results, and the distribution of compounds within the tea samples was identified. The taste and smell compounds of teas were detected by using high-performance liquid chromatography (HPLC) and gas chromatography-mass spectrometry (GC-MS). TAFD was more effective than PAFD in predicting the quality grade, water extract, polyphenol, and geraniol; the correlation coefficients of PLSR with TAFD were 0.9518, 0.9298, 0.9202 and 0.9258, respectively. The addition of 'aftertaste values' improved the analysis results; the quality grades of green teas can be detected by using the e-nose and e-tongue in combination and the main volatile and flavor compounds of green teas of different quality grades can be also well determined.
机译:香气和味道是影响茶浸入度的最重要属性。本文结合电子鼻和电子舌来鉴定不同等级的茶样品,并基于局部区域融合数据集(PAFD,而非包括“回味值”)和总面积融合数据集(TAFD,包括“回味值”)。应用主成分分析(PCA),判别因子分析(DFA)和偏最小二乘回归(PLSR)对样本进行分类并做出预测。带有TAFD的DFA产生了最好的分类结果,并鉴定了茶样品中化合物的分布。使用高效液相色谱(HPLC)和气相色谱-质谱(GC-MS)检测茶叶的味道和气味。在预测质量等级,水提取物,多酚和香叶醇方面,TAFD比PAFD更有效。 PLSR与TAFD的相关系数分别为0.9518、0.9298、0.9202和0.9258。增加“余味值”可改善分析结果;结合使用电子鼻和电子舌可以检测出绿茶的质量等级,还可以很好地确定不同质量等级的绿茶的主要挥发性成分和风味成分。

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