An Effective Robust Optimization Based on Genetic Algorithm
スポンサーリンク
概要
- 論文の詳細を見る
Although probabilistic optimization methods based on genetic algorithm (GA) provides accurate results, its performance is sometimes considerably sensitive to parameter changes. Moreover, the constraints are violated due to such parameter changes. A robust GA which performs random perturbation during optimization processes has been applied to some mathematical problems to show that it works as fast as the usual GAs. An adequate elite reservation technique for the robust GA is presented and applied to the robust GA for electromagnetic problems. Moreover, this method is shown to find solutions which are kept feasible against parameter changes.
- IEEEの論文
IEEE | 論文
- Magnetic and Transport Properties of Nb/PdNi Bilayers
- Supersonic Ion Beam Driven by Permanent-Magnets-Induced Double Layer in an Expanding Plasma
- Surfactant Adsorption on Single-Crystal Silicon Surfaces in TMAH Solution: Orientation-Dependent Adsorption Detected by In Situ Infrared Spectroscopy
- Extended-range FMCW reflectometry using an optical loop with a frequency shifter
- Teachingless spray-painting of sculptured surface by an industrial robot