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解决TSP问题的局部调整离散微粒群算法
引用本文:王蒙,介婧,曾建潮,董殿敏.解决TSP问题的局部调整离散微粒群算法[J].计算机工程与设计,2009,30(21).
作者姓名:王蒙  介婧  曾建潮  董殿敏
作者单位:太原科技大学,系统仿真与计算机应用研究所,山西,太原,030024
基金项目:国家自然科学基金项目,山西省自然科学基金项目 
摘    要:微粒群算法提出以来一直不能较好的解决离散及组合优化问题,针对这个问题,通过对微粒群算法的优化机理的分析,对原有的微粒群进化方程中的速度和位置的更新等进行重新的定义,同时提出一种具有自适应能力的惯性因子,使其适合解决TSP这样的组合优化问题.针对过去的离散算法整体调整容易形成对路径的破坏这一缺点,在重新定义的算法上加入局部调整的策略,形成一种局部调整的离散微粒群算法(local adjustive discrete PSO,LADPSO),通过在ch31和ei151上的试验,证明了该算法在解决这一问题上是可行的.

关 键 词:离散微粒群算法  旅行商问题  局部调整  组合优化  自适应

Local adjusting discrete particle swarm optimization algorithm for traveling salesman problem
WANG Meng,YIE Jing,ZENG Jian-chao,DONG Dian-min.Local adjusting discrete particle swarm optimization algorithm for traveling salesman problem[J].Computer Engineering and Design,2009,30(21).
Authors:WANG Meng  YIE Jing  ZENG Jian-chao  DONG Dian-min
Abstract:Particle swarm optimization (PSO) is generic heuristic algorithm based on swarm intelligence. It is applied to many practical continuous optimization problems. But it is not extended to solve discrete and combinatorial optimization problem effectively. For solving the problem, particle's position, velocity and their operation rules are redefined, at the same time, this inertial operator is put forward which has the self-adaptive ability. For the past discrete algorithm' s shortcomings in damaging the path caused by adjusting the overall formation, this new algorithm adds a local adjustment strategy, then forming a local adjustment discrete PSO algorithm. Through the test on Ch31 and eil51, it proves new algorithm in solving TSP is feasible.
Keywords:discrete particle swarm optimization  travel salesman problem  local adjusting  combination optimization problem  adaptive modification
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