BETA NEURO-FUZZY SYSTEMS

In this paper we present the Beta function and its main properties. A key feature of the Beta function, which is given by the central limit theorem, is also shown. We then introduce a new category of neural networks based on a new kernel: the Beta function. Next, we investigate the use of Beta fuzz...

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Bibliographic Details
Main Author: ADEL M. ALIMI
Format: Article
Language:English
Published: Gdańsk University of Technology 2003-01-01
Series:TASK Quarterly
Subjects:
Online Access:https://journal.mostwiedzy.pl/TASKQuarterly/article/view/2209
Description
Summary:In this paper we present the Beta function and its main properties. A key feature of the Beta function, which is given by the central limit theorem, is also shown. We then introduce a new category of neural networks based on a new kernel: the Beta function. Next, we investigate the use of Beta fuzzy basis functions for the design of fuzzy logic systems. The functional equivalence between Beta-based function neural networks and Beta fuzzy logic systems is then shown with the introduction of Beta neuro-fuzzy systems. By using the Stone-Weierstrass theorem and expanding the output of the Beta neuro-fuzzy system into a series of Beta fuzzy-based functions, we prove that one can uniformly approximate any real continuous function on a compact set to any arbitrary accuracy. Finally, a learning algorithm of the Beta neuro-fuzzy system is described and illustrated with numerical examples.
ISSN:1428-6394