Fuzzy Adaptive Search Method for Parallel GA Based on Diversity Measure(<Special Issue>Contribution to 21 Century Intelligent Technologies and Bioinformatics)
スポンサーリンク
概要
- 論文の詳細を見る
Genetic Algorithms (GAs) are known as adaptive heuristic search algorithms to find approximate solutions, but the problem of premature convergence and fall into local solution are remained to be solved. We had already proposed FASPGA and proved its effectiveness. However, FASPGA adopted only maximum and average fitness as the inputs of fuzzy rules, which contains not enough information to describe the search stage. In this paper, we imported two parameters (genotypic parameters and phenotype parameters) into the fuzzy rule that makes many combinations as the input of fuzzy rules. So, we performed many simulations and compared the results to find an optimum combination, which has better performance in many kinds of test functions.
- バイオメディカル・ファジィ・システム学会の論文
著者
-
Maeda Yoichiro
Univ. Fukui
-
Maeda Yoichiro
Dept. Of Human And Artificial Intelligent Systems Graduate School Of Engin. University Of Fukui
-
Li Qiang
Univ. Fukui
-
Li Qiang
Dept. Of System Design Engin. Graduate School Of Engin. University Of Fukui
-
LI Qiang
Dept. of Human and Artificial Intelligent Systems, Graduate School of Engineering, University of Fukui
関連論文
- Fuzzy Adaptive Search Method for Parallel GA Based on Diversity Measure(Contribution to 21 Century Intelligent Technologies and Bioinformatics)
- Fuzzy Adaptive Search Method for Parallel Genetic Algorithm Based on Evolution History