距離に依存せずに多様性を制御するGAによる高次元関数最適化
スポンサーリンク
概要
- 論文の詳細を見る
For genetic algorithms, it is important to maintain the population diversity. Some genetic algorithms have been proposed, which have an ability to control the diversity. But these algorithms use the distance between two individuals to control the diversity. Therefore, these performances become worse on ill-scaled functions. In this paper, we propose a new genetic algorithm, DIDC(a genetic algorithm with Distance Independent Diversity Control), that does not use a distance to control the population diversity. For controlling the diversity, DIDC uses two GAs that have different natures. For realizing different natures, one GA uses a crossover operator as a search operator, and the other GA uses a mutation operator in DIDC. By applying DIDC to several benchmark problems, we show that DIDC has a good performance on high dimensional, multimodal, non-separable and ill-scaled problems. Finally, we show that the control parameter of DIDC has the same effect on the search with the number of generating children nc.
論文 | ランダム
- 電位測定法による過硫酸-ヨウ化物系反応の速度論的考察
- 医療の質と Medical Outcomes Study
- 7. 労働による健康障害のとらえ方と対応策 : 腰痛問題をとりあげて : 1) 病態と治療 (産業保健セミナー)
- 「ぎょしょく教育」の実践は何をもたらしたか--水産分野における食育の重要性と成果を検証--愛媛県を事例として
- 沿岸域における水産の資源と管理 : 愛媛県伊予市双海地区の事例研究