Classification of Chinese Vinegars Using Optimized Artificial Neural Networks by Genetic Algorithm and Other Discriminant Techniques

被引:0
|
作者
Yang Chen
Ye Bai
Ning Xu
Mengzhou Zhou
Dongsheng Li
Chao Wang
Yong Hu
机构
[1] Hubei University of Technology,Hubei Collaborative Innovation Center for Industrial Fermentation, Research Center of Food Fermentation Engineering and Technology of Hubei, Key Laboratory of Fermentation Engineering (Ministry of Education)
[2] Hubei University of Technology,School of Food and Pharmaceutical Engineering
来源
Food Analytical Methods | 2017年 / 10卷
关键词
Artificial neural networks; Chinese vinegars; Volatile aroma compounds; Genetic algorithm; Classification;
D O I
暂无
中图分类号
学科分类号
摘要
The aims of this study were to explore the most important volatile aroma compounds of Chinese vinegars and to apply the artificial neural networks (ANN) to classify Chinese vinegars. A total of 101 volatile aroma components, which include 21 esters, 16 aldehydes, 15 acids, 19 alcohols, 10 ketones, 9 phenols, 5 pyrazines, 3 furans, and 3 miscellaneous compounds, were identified by gas chromatography mass spectrometry. On the basis of sensitivity analysis, 6 and 11 volatile aroma compounds were selected and proved to be useful for classifying Chinese vinegars by fermentation method and geographic region, respectively. The variables with the greatest contribution in the classification of Chinese vinegars by geographic region were 2-methoxy-4-methylphenol and acetic acid, whereas 3-methylbutanoic acid and furfural played the most important roles in fermentation method classification. ANN could classify Chinese vinegars based on fermentation method and geographic region with a prediction success rate of 100%. This level was higher than the accuracy of cluster analysis, linear discriminant analysis, and K-nearest neighbor. Results showed that ANN was a useful model for classifying Chinese vinegars.
引用
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页码:2646 / 2656
页数:10
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