An electronic nose (e-nose) was designed to classify Chinese liquors of the same aroma style. A new method of feature reduction which combined feature selection with feature extraction was proposed. Feature selection method used 8 feature-selection algorithms based on information theory and reduced the dimension of the feature space to 41. Kernel entropy component analysis was introduced into the e-nose system as a feature extraction method and the dimension of feature space was reduced to 12. Classification of Chinese liquors was performed by using back propagation artificial neural network (BP-ANN), linear discrimination analysis (LDA), and a multi-linear classifier. The classification rate of the multi-linear classifier was 97.22%, which was higher than LDA and BP-ANN. Finally the classification of Chinese liquors according to their raw materials and geographical origins was performed using the proposed multi-linear classifier and classification rate was 98.75% and 100%, respectively. © 2014 AIP Publishing LLC.
CITATION STYLE
Jing, Y., Meng, Q., Qi, P., Zeng, M., Li, W., & Ma, S. (2014). Electronic nose with a new feature reduction method and a multi-linear classifier for Chinese liquor classification. Review of Scientific Instruments, 85(5). https://doi.org/10.1063/1.4874326
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