Part family formation through fuzzy ART2 neural network

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摘要

In order to overcome some unavoidable factors, like shift of the part, that influence the crisp neural networks' recognition, the present study is dedicated in developing a novel fuzzy neural network (FNN), which integrates both the fuzzy set theory and adaptive resonance theory 2 (ART2) neural network for grouping the parts into several families based on the image captured from the vision sensor. The proposed network posses the fuzzy inputs as well as the fuzzy weights. The model evaluation results showed that the proposed fuzzy neural network is able to provide more accurate results compared to the fuzzy self-organizing feature maps (SOM) neural network [R.J. Kuo, S.S. Chi, P.W. Teng, Generalized part family formation through fuzzy self-organizing feature map neural network, International Journal of Computers in Industrial Engineering, 40 (2001b) 79–100] and fuzzy c-means algorithm.

论文关键词:Group technology,Fuzzy set theory,Fuzzy neural network,ART2 neural network

论文评审过程:Received 5 February 2004, Revised 15 October 2004, Accepted 18 October 2004, Available online 15 December 2004.

论文官网地址:https://doi.org/10.1016/j.dss.2004.10.012