节点文献

基于混沌云模型的粒子群优化算法

Particle swarm optimization algorithm based on chaos cloud model

  • 推荐 CAJ下载
  • PDF下载
  • 不支持迅雷等下载工具,请取消加速工具后下载。

【作者】 张朝龙余春日江善和刘全金吴文进李彦梅

【Author】 ZHANG Chao-long,YU Chun-ri,JIANG Shan-he,LIU Quan-jin,WU Wen-jin,LI Yan-mei(School of Physics and Electrical Engineering,Anqing Normal University,Anqing Anhui 246011,China)

【机构】 安庆师范学院物理与电气工程学院

【摘要】 针对传统粒子群优化(PSO)算法寻优精度不高和易陷入局部收敛区域的缺点,引入混沌算法和云模型算法对PSO算法的进化机制进行优化,提出混沌云模型粒子群优化(CCMPSO)算法。在算法处于收敛状态时将粒子分为优秀粒子和普通粒子,应用云模型算法和优秀粒子对收敛区域局部求精,发掘全局最优位置;应用混沌算法和普通粒子对收敛区域以外空间进行全局寻优,探索全局最优位置。应用特征根法对CCMPSO算法的收敛性进行分析,并通过仿真实验证明,CCMPSO算法的寻优性能优于其他常用PSO算法。

【Abstract】 To deal with the problems of low accuracy and local convergence in conventional Particle Swarm Optimization(PSO) algorithm,the chaos algorithm and cloud model algorithm were introduced into the evolutionary process of PSO algorithm and the chaos cloud model particle swarm optimization(CCMPSO) algorithm was proposed.The particles were divided into excellent particles and normal particles when CCMPSO was in convergent status.To search the global optimum location,the cloud model algorithm as well as excellent particles was applied to local refinement in convergent area,meanwhile chaos algorithm and normal particles were used to global optimization in the outside space of convergent area.The convergence of CCMPSO was analyzed by eigenvalue method.The simulation results prove the CCMPSO has better optimization performance than other main PSO algorithms.

【关键词】 混沌云模型粒子群优化适应度
【Key words】 chaoscloud modelParticle Swarm Optimization(PSO)fitness
【基金】 国家自然科学基金资助项目(10974139);安徽高校省级自然科学研究重点项目(KJ2010A227);安徽高校省级优秀青年人才基金资助项目(2012SQRL112);安庆师范学院青年科研基金资助项目(KJ201104)
  • 【文献出处】 计算机应用 ,Journal of Computer Applications , 编辑部邮箱 ,2012年07期
  • 【分类号】TP18
  • 【被引频次】22
  • 【下载频次】440
节点文献中: 

本文链接的文献网络图示:

本文的引文网络