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应用电子鼻结合化学计量学方法进行茶叶品质评价。

Tea quality evaluation by applying E-nose combined with chemometrics methods.

作者信息

Xu Min, Wang Jun, Zhu Luyi

机构信息

Department of Biosystems Engineering, Zhejiang University, 866 Yuhangtang Road, Hangzhou, 310058 People's Republic of China.

出版信息

J Food Sci Technol. 2021 Apr;58(4):1549-1561. doi: 10.1007/s13197-020-04667-0. Epub 2020 Aug 14.

Abstract

Tea is one of the most popular beverage with distinct flavor consumed worldwide. It is of significance to establish evaluation method for tea quality controlling. In this work, electronic nose (E-nose) was applied to assess tea quality grades by detecting the volatile components of tea leaves and tea infusion samples. The "35th s value", "70th s value" and "average differential value" were extracted as features from E-nose responding signals. Three data reduction methods including principle component analysis (PCA), multi-dimensional scaling (MDS) and linear discriminant analysis (LDA) were introduced to improve the efficiency of E-nose analysis. Logistic regression (LR) and support vector machine (SVM) were applied to set up qualitative classification models. The results indicated that LDA outperformed original data, PCA and MDS in both LR and SVM models. SVM had an advantage over LR in developing classification models. The classification accuracy of SVM based on the data processed by LDA for tea infusion samples was 100%. Quantitative analysis was conducted to predict the contents of volatile compounds in tea samples based on E-nose signals. The prediction results of SVM based on the data processed by LDA for linalool (training set: R = 0.9523; testing set: R = 0.9343), nonanal (training set: R = 0.9617; testing set: R = 0.8980) and geraniol (training set: R = 0.9576; testing set: R = 0.9315) were satisfactory. The research manifested the feasibility of E-nose for qualitatively and quantitatively analyzing tea quality grades.

摘要

茶是全球消费的最受欢迎的具有独特风味的饮品之一。建立茶叶质量控制的评价方法具有重要意义。在这项工作中,电子鼻被用于通过检测茶叶和茶汤样品中的挥发性成分来评估茶叶质量等级。从电子鼻响应信号中提取“第35秒值”“第70秒值”和“平均差值”作为特征。引入了主成分分析(PCA)、多维缩放(MDS)和线性判别分析(LDA)这三种数据降维方法来提高电子鼻分析的效率。应用逻辑回归(LR)和支持向量机(SVM)建立定性分类模型。结果表明,在LR和SVM模型中,LDA在性能上优于原始数据、PCA和MDS。在建立分类模型方面,SVM比LR具有优势。基于LDA处理后的数据的SVM对茶汤样品的分类准确率为100%。基于电子鼻信号对茶叶样品中的挥发性化合物含量进行了定量分析。基于LDA处理后的数据的SVM对芳樟醇(训练集:R = 0.9523;测试集:R = 0.9343)、壬醛(训练集:R = 0.9617;测试集:R = 0.8980)和香叶醇(训练集:R = 0.9576;测试集:R = 0.9315)的预测结果令人满意。该研究表明了电子鼻用于定性和定量分析茶叶质量等级的可行性。

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