Title
On the equivalence between generalized ellipsoidal basis function neural networks and t-s fuzzy systems
Abstract
This paper deals with the functional equivalence between Generalized Ellipsoidal Basis Function based Neural Networks (GEBF-NN) and T-S fuzzy systems. Significant contributions are summarized as follows. 1) The GEBF-NN is equivalent to a T-S fuzzy system under the condition that the GEBF unit and the local model correspond to the premise and the consequence of the T-S fuzzy system. 2) The normalized (nonnormalized) GEBF-NN is equivalent to a normalized (nonnormalized) T-S fuzzy system using dissymmetrical Gaussian functions (DGF) as univariate membership functions and local models as consequent parts. 3) The equivalence between the normalized GEBF-NN and the nonnormalized T-S fuzzy system is established by employing GEBF units as multivariate membership functions of fuzzy rules. 4) These theoretical results would not only fertilize the learning schemes for fuzzy systems but also enhance the interpretability of neural networks, and thereby contributing to innovative neuro-fuzzy paradigms. Finally, numerical examples are conducted to illustrate the main results.
Year
DOI
Venue
2013
10.1007/978-3-642-39068-5_8
ISNN (2)
Keywords
Field
DocType
univariate membership function,neural network,generalized ellipsoidal basis function,functional equivalence,fuzzy system,normalized gebf-nn,t-s fuzzy system,multivariate membership function,nonnormalized t-s fuzzy system,local model,fuzzy rule,gebf unit
Neuro-fuzzy,Mathematical optimization,Defuzzification,Fuzzy classification,Fuzzy set operations,Fuzzy mathematics,Fuzzy set,Artificial intelligence,Fuzzy number,Membership function,Machine learning,Mathematics
Conference
Citations 
PageRank 
References 
0
0.34
12
Authors
5
Name
Order
Citations
PageRank
Ning Wang133318.88
Min Han21648.79
Nuo Dong3321.70
J. Meng42793174.51
Gangjian Liu500.34