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Comparison of Algorithms for an Electronic Nose in Identifying Liquors 被引量:6

Comparison of Algorithms for an Electronic Nose in Identifying Liquors
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摘要 When the electronic nose is used to identify different varieties of distilled liquors, the pattern recognition algorithm is chosen on the basis of the experience, which lacks the guiding principle. In this research, the different brands of distilled spirits were identified using the pattern recognition algorithms (principal component analysis and the artificial neural network). The recognition rates of different algorithms were compared. The recognition rate of the Back Propagation Neural Network (BPNN) is the highest. Owing to the slow convergence speed of the BPNN, it tends easily to get into a local minimum. A chaotic BPNN was tried in order to overcome the disadvantage of the BPNN. The convergence speed of the chaotic BPNN is 75.5 times faster than that of the BPNN. When the electronic nose is used to identify different varieties of distilled liquors, the pattern recognition algorithm is chosen on the basis of the experience, which lacks the guiding principle. In this research, the different brands of distilled spirits were identified using the pattern recognition algorithms (principal component analysis and the artificial neural network). The recognition rates of different algorithms were compared. The recognition rate of the Back Propagation Neural Network (BPNN) is the highest. Owing to the slow convergence speed of the BPNN, it tends easily to get into a local minimum. A chaotic BPNN was tried in order to overcome the disadvantage of the BPNN. The convergence speed of the chaotic BPNN is 75.5 times faster than that of the BPNN.
出处 《Journal of Bionic Engineering》 SCIE EI CSCD 2008年第3期253-257,共5页 仿生工程学报(英文版)
基金 the Science and Technology Plan Projects, Department of Education of Jilin Province, P R China (Grant no. 2006026)
关键词 electronic nose LIQUOR ALGORITHM principal component analysis electronic nose, liquor, algorithm, principal component analysis
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