Fujipress Home | Search | About FINDER

Paper:
Language: English:

A New Framework for Fuzzy Modeling Using Genetic Algorithm


Seiichi Matsushita*, Takeshi Furuhashi** and Hiroaki Tsutsui***


*Nagoya Municipal Industrial Research Institute
**Dept. of Information Electronics, Nagoya University
***Yamatake Co.


Received: May 7,1999

Accepted: September 20, 1999


Keywords: Fuzzy modeling, Genetic Algorithm

Journal ref: Journal of Advanced Computational Intelligence and Intelligent Informatics, Vol.3, No.5 pp. 368-372, 1999

Abstract



This paper presents a new framework for fuzzy modeling using genetic algorithm. A model of actual object in the real world should satisfy various criteria, such as precision, generality, noise immunity, etc. It has been difficult for the fuzzy modeling to allocate proper weights on these criteria. The framework introduced in this paper consists of a model generation block and a model-testing block. The model generation block generates candidates of fuzzy model under criteria with higher importance, and the model-testing block tests the candidates under notso-important criteria. This division of criteria can put emphasis on the criteria in the generation block and less on those in the testing block. Simulations are done to show the effectiveness of the proposed framework.
preview Preview (PDF)  full text Full Text (PDF 3251KB)

Reference

[Notice]
* "Preview" is the first 2 pages of the article. You don't need the registration.
* To read the PDF file you will then need to download and install the Adobe Reader.
Adobe Reader is free and available for download here:

adobe reader

Terms and Conditions | Privacy Policy | Recruit | Advertising Information | Contact Us