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改进的约束多目标粒子群算法
引用本文:凌海风,周献中,江勋林,萧毅鸿.改进的约束多目标粒子群算法[J].计算机应用,2012,32(5):1320-1324.
作者姓名:凌海风  周献中  江勋林  萧毅鸿
作者单位:1. 解放军理工大学 工程兵工程学院,南京 210007 2. 南京大学 工程管理学院,南京 210093
基金项目:国家自然科学基金资助项目(90718036)
摘    要:在约束优化问题搜索空间分析的基础上提出了一种改进的约束多目标粒子群算法(CMOPSO)。提出一种动态ε不可行度许可约束支配关系作为主要约束的处理方法,提高了算法的边缘搜索能力和跨越非联通可行区域的能力。设计了一种新的密集距离度量方法用于外部档案维护,提高了算法的效率;提出了新的全局向导选取策略,使算法获得了更好的收敛性和多样性。数值仿真实验结果表明约束多目标粒子群算法算法可得到分布性、均匀性及逼近性都较好的Pareto最优解。

关 键 词:多目标优化    多目标粒子群    距离量度    档案维护    全局向导选取
收稿时间:2011-10-08
修稿时间:2011-12-02

Improved constrained multi-objective particle swarm optimization algorithm
LING Hai-feng , ZHOU Xian-zhong , JIANG Xun-lin , XIAO Yi-hong.Improved constrained multi-objective particle swarm optimization algorithm[J].journal of Computer Applications,2012,32(5):1320-1324.
Authors:LING Hai-feng  ZHOU Xian-zhong  JIANG Xun-lin  XIAO Yi-hong
Affiliation:1. Engineering Institute Corps of Engineers, PLA University of Science and Technology,Nanjing Jiangsu 210007, China
2. School of Management and Engineering, Nanjing University, Nanjing Jiangsu 210093, China
3. School of Management and Engineering, Nanjing
Abstract:An improved Multiple Objective Particle Swarm Optimization(MOPSO) algorithm for solving constrained multi-objective optimization problems(CMOPSO) was proposed based on the analysis of the characteristics of the multi-objective search space.A processing method taking dynamic ε unfeasible degree allowable constraint dominance relation as the main constraint was brought forward in this paper,which aimed to improve the algorithm’s ability of edge searching and crossing unconnected feasible regions.A simple density measuring method was put forward for external archive maintenance,which intended to improve the efficiency of the algorithm.A new global guide selection strategy was put forward,which brought better convergence and diversity to the algorithm.The computer simulation results show that the CMOPSO algorithm can find a sufficient number of Pareto optimal solutions that have better distribution,uniformity,and approachability.
Keywords:multi-objective optimization  Multi-Objective Particle Swarm Optimization(MOPSO)  distance measurement  archive maintenance  global guide selection strategy
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