An improved genetic algorithm based fuzzy-tuned neural network.

S H Ling, F H F Leung, H K Lam
Author Information
  1. S H Ling: Centre for Multimedia Signal Processing, Department of Electronic and Information Engineering, The Hong Kong Polytechnic University, Hung Hom, Kowloon, Hong Kong, China. ensteve@eie.polyu.edu.hk

Abstract

This paper presents a fuzzy-tuned neural network, which is trained by an improved genetic algorithm (GA). The fuzzy-tuned neural network consists of a neural-fuzzy network and a modified neural network. In the modified neural network, a neuron model with two activation functions is used so that the degree of freedom of the network function can be increased. The neural-fuzzy network governs some of the parameters of the neuron model. It will be shown that the performance of the proposed fuzzy-tuned neural network is better than that of the traditional neural network with a similar number of parameters. An improved GA is proposed to train the parameters of the proposed network. Sets of improved genetic operations are presented. The performance of the improved GA will be shown to be better than that of the traditional GA. Some application examples are given to illustrate the merits of the proposed neural network and the improved GA.

MeSH Term

Algorithms
Computer Simulation
Fuzzy Logic
Humans
Mathematics
Models, Genetic
Neural Networks, Computer
Neurons

Word Cloud

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