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基于混沌免疫粒子群算法的故障特征选择
引用本文:李小青.基于混沌免疫粒子群算法的故障特征选择[J].煤矿机械,2011(11):244-247.
作者姓名:李小青
作者单位:浙江万里学院;
摘    要:针对传统组合优化方法用于故障特征选择的缺陷问题,提出了基于人工免疫和混沌思想的混合粒子群优化算法的特征选择策略。引入混沌优化和人工免疫系统中的克隆选择机制,利用克隆和混沌变异等算子对算法进行改进,提高种群的多样性,增强了算法跳出局部极值的能力。实验结果表明,该混合粒子群算法比常规粒子群算法具有更快的优化速度,有效提高了特征选择效率,使故障诊断精度有所提高。

关 键 词:粒子群算法  混沌  免疫接种  特征选择

Fault Feature Selection Based on Chaos Immune Particle Swarm Optimization
LI Xiao-qing.Fault Feature Selection Based on Chaos Immune Particle Swarm Optimization[J].Coal Mine Machinery,2011(11):244-247.
Authors:LI Xiao-qing
Affiliation:LI Xiao-qing(Zhejiang Wanlin University,Ningbo 315101,China)
Abstract:Traditional methods for combinatorial optimization defects for fault feature selection problem,Feature selection strategy is proposed based on artificial Immune and chaos hybrid particle swarm optimization algorithm.The introduction of chaos optimization and artificial immune system clonal selection mechanism,the use of cloning and chaotic mutation operator to improve algorithm to improve population diversity,and enhance algorithm ability to jump out of local optimum.Experimental results show that hybrid pa...
Keywords:particle swarm optimization  chaos  immunization  feature selection  
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