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加速收敛的粒子群优化算法
引用本文:任子晖,王坚.加速收敛的粒子群优化算法[J].控制与决策,2011,26(2):201-206.
作者姓名:任子晖  王坚
作者单位:同济大学CIMS研究中心,上海,201804
基金项目:国家科技支撑计划项目,上海市科技发展基金项目,上海市重点学科建设项目
摘    要:在基本粒子群优化算法的理论分析的基础上,提出一种加速收敛的粒子群优化算法,并从理论上证明了该算法的快速收敛性,同时对该算法中的参数进行了优化.为了防止其在快速收敛的同时陷入局部最优,采用依赖部分最差粒子信息的变异操作.最后通过与其他几种经典粒子群优化算法的性能比较,表明了该算法的高效和稳健,且明显优于现有的几种经典的粒子群算法.

关 键 词:粒子群优化  加速收敛  参数优化  变异
收稿时间:2009/11/23 0:00:00
修稿时间:2010/3/27 0:00:00

Accelerate convergence particle swarm optimization algorithm
LIN Zi-Hui,WANG Jian.Accelerate convergence particle swarm optimization algorithm[J].Control and Decision,2011,26(2):201-206.
Authors:LIN Zi-Hui  WANG Jian
Affiliation:(CIMS Research Center,Tongji University,Shanghai 201804,China.)
Abstract:

An accelerate convergence particle swarm optimization(ACPSO) algorithm is proposed based on analyzing
the convergence of basal particle swarm optimization(BPSO) algorithm. The convergence speed of ACPSO algorithm is very quickly through theoretical analysis. Then the parameters in this algorithm are optimized. The mutation operator of depending on segmental worst particles’ information is shown to escape the local optimal. The performance of ACPSO algorithm with the optimal parameters is tested on several classical functions by comparing with four classical PSO algorithms. The experimental results show that the ACPSO algorithm is efficient and robust. Especially, the convergence speed of ACPSO is superior to several classical PSO algorithms obviously.

Keywords:

particle swarm optimization|accelerate convergence|parameters optimization|mutation

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