Diversity Measure Based Fuzzy Adaptive Search Method for Parallel Genetic Algorithm
スポンサーリンク
概要
- 論文の詳細を見る
Generally, as for Genetic Algorithms (GAs), it is not always optimal search efficiency, because genetic parameters (crossover rate, mutation rate and so on) are fixed. For this problem, we have already proposed Fuzzy Adaptive Search Method for GA (FASGA) that is able to tune the genetic parameters according to the search stage by the fuzzy reasoning. On the other hand, in order to improve the solution quality of GA, Parallel Genetic Algorithm (PGA) based on the local evolution in plural sub-populations (islands) and the migration of individuals between islands has been researched. In this research, Fuzzy Adaptive Search method for Parallel GA (FASPGA) combined FASGA with PGA is proposed. Moreover as the improvement method for FASPGA, Diversity Measure based Fuzzy Adaptive Search method for Parallel GA (DM-FASPGA) is also proposed. Computer simulation was carried out to confirm the efficiency of the proposed method and the simulation results are also reported in this paper.
- 日本知能情報ファジィ学会の論文
日本知能情報ファジィ学会 | 論文
- FCNによる自律エージェントの行動制御と行動解析 : タルタロス問題への応用
- コンフリクト, 迷いと意思決定(意思決定)
- 認知心理学における類似性研究(類似尺度と情報検索)
- アメリカ留学体験記
- 文脈への意味の位置付けを用いた対話システムとその評価(言語,テキストの知能情報処理)