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Extended neuro-fuzzy models of multilayer perceptrons

✍ Scribed by Dong Zhang; Xiao-Li Bai; Kai-Yuan Cai


Book ID
104291675
Publisher
Elsevier Science
Year
2004
Tongue
English
Weight
422 KB
Volume
142
Category
Article
ISSN
0165-0114

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✦ Synopsis


In this paper the famous neural model, the multilayer perceptron, is extended to a new neural model that is called the additive-Takagi-Sugeno-type multilayer perceptron. The present study proves that this new model can also act as a universal approximator, and thus it can be used in many ΓΏelds, such as system modeling and identiΓΏcation. The concept of f-duality and the fuzzy operator interactive-or are used to prove that the proposed neural model is functionally equal to a kind of fuzzy inference system. Further, this paper presents another new neuro-fuzzy model that is called the sigmoid-adaptive-network-based fuzzy inference system. Simulation studies show that our proposed models both have stronger approximation capability than multilayer perceptrons.


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