徵求論文 編輯委員 目錄檢索 如何訂閱 投稿頁面 投稿狀態查詢 審稿作業
目錄檢索
Grey Adaptive Particle Swarm Optimization
作者: Ming-Feng Yeh, Min-Shyang Leu and Ti-Hung Chen 關鍵字: Evolutionary computation, Grey relational analysis, Parameter automation strategy, Particle swarm optimization
摘要: Based on grey relational analysis, this studyattempts to propose a grey-based evolutionary stateestimation (ESE) technique to improve the search abilityof particle swarm optimization (PSO). The proposedESE approach is performed to identify one of thefollowing four predefined evolutionary states, e.g.,exploration, exploitation, convergence and jumping out,in each generation. Then, the inertia weight and theacceleration coefficients are automatically adjustedaccording to the identified state. Such a PSO is termedthe grey adaptive PSO (GAPSO) in this study. Inaddition, the GAPSO is applied to solve the optimizationproblems of six benchmark functions for illustration.Simulation results show that the proposed GAPSOcould outperform the adaptive PSO, the grey PSO, andtwo well-known PSO variants on most of the testfunctions.
Journal of Grey System(Volume 16) 頁碼: 009~016 年份: 2013
Close
|
相關連結 |
|
|
|