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

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          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: R2 = 0.9523; testing set: R2 = 0.9343), nonanal (training set: R2 = 0.9617; testing set: R2 = 0.8980) and geraniol (training set: R2 = 0.9576; testing set: R2 = 0.9315) were satisfactory. The research manifested the feasibility of E-nose for qualitatively and quantitatively analyzing tea quality grades.

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          Author and article information

          Journal
          J Food Sci Technol
          Journal of food science and technology
          Springer Science and Business Media LLC
          0022-1155
          0022-1155
          Apr 2021
          : 58
          : 4
          Affiliations
          [1 ] Department of Biosystems Engineering, Zhejiang University, 866 Yuhangtang Road, Hangzhou, 310058 People's Republic of China.
          Article
          4667
          10.1007/s13197-020-04667-0
          7925804
          33746282
          83ea86e4-7fc4-43c8-a6b9-7d16908b24e5
          © Association of Food Scientists & Technologists (India) 2020.
          History

          Linear discriminant analysis,Tea quality,Support vector machine,Electronic nose,Data reduction

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