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Utilizing a new feed-back fuzzy neural network for solving a system of fuzzy equations
Author(s) -
Ahmad Jafarian,
S. Measoomy Nia
Publication year - 2012
Publication title -
communications in numerical analysis
Language(s) - English
Resource type - Journals
ISSN - 2193-4215
DOI - 10.5899/2012/cna-00096
Subject(s) - fuzzy logic , artificial neural network , neuro fuzzy , computer science , mathematics , fuzzy control system , artificial intelligence
In this paper, we intend to offer a new method based on fuzzy neural networks for finding a real solution of fuzzy equations system. Our proposed fuzzified neural network is a five-layer feed-back neural network that corresponding connection weights to output layer are fuzzy numbers. The proposed architecture of artificial neural network, can get a real input vector and calculates it's corresponding fuzzy output. In order to find the approximate solution of this fuzzy system that supposedly has a real solution, first a cost function is defined for the level sets of fuzzy output and target output. Then a learning algorithm based on the gradient descent method will be introduced that can adjust the crisp input signals. The proposed method is illustrated by several examples with computer simulations

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