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竞争合作型协同进化免疫算法及其在旅行商问题中的应用
引用本文:刘朝华,章兢,张英杰,吴建辉.竞争合作型协同进化免疫算法及其在旅行商问题中的应用[J].控制理论与应用,2010,27(10):1322-1330.
作者姓名:刘朝华  章兢  张英杰  吴建辉
作者单位:1. 湖南大学,电气与信息工程学院,湖南,长沙,410082
2. 湖南大学,计算机与通信学院,湖南,长沙,410082
基金项目:国家自然科学基金重点资助项目(60634020); 湖南省科技计划重点资助项目(2010GK2022).
摘    要:为提高人工免疫算法的收敛性能,提出了一种竞争合作型协同进化免疫优势克隆选择算法(CCCICA).把生态学中的协同进化思想引入到人工免疫算法中,考虑了环境和子群间相互竞争的关系,子种群内部通过局部最优免疫优势,克隆扩增,自适应动态高频混合变异等相关算子的操作加快了种群亲和度成熟速度.把信息熵理论引入到算法中完善了种群的多样性.所有子种群共享同一高层优良库,并将其作为抗体子种群领导集合,对高层优良种群进行免疫杂交操作,通过迁移操作把优良个体返回到各子种群,实现了整个种群信息交流与协作.针对旅行商问题(traveling salesman problem,TSP)多个实例结果表明:与其它智能算法相比较该算法具有较好的性能.

关 键 词:人工免疫    克隆选择    局部最优免疫优势    竞争合作    协同进化    旅行商问题(TSP)
收稿时间:2009/5/30 0:00:00
修稿时间:2009/11/22 0:00:00

Competitive-cooperative coevolutionary immune-dominant clone selection algorithm for solving the traveling salesman problem
LIU Zhao-hu,ZHANG-jing,ZHANG Ying-jie and WU Jian-hui.Competitive-cooperative coevolutionary immune-dominant clone selection algorithm for solving the traveling salesman problem[J].Control Theory & Applications,2010,27(10):1322-1330.
Authors:LIU Zhao-hu  ZHANG-jing  ZHANG Ying-jie and WU Jian-hui
Affiliation:School of Electrical and Information, Hunan University,School of Electrical and Information, Hunan University,School of Computer and Communication, Hunan University,School of Computer and Communication, Hunan University
Abstract:To improve the convergence performance of artificial immune algorithm, we propose a competitivecooperative coevolutionary immune-dominant clone selection algorithm(CCCICA). Enlightened by the knowledge of ecological environment and population competition, we incorporate the cooperative evolution in ecology into the artificial immune system. The affinity maturation of antibody is enhanced by the local optimization of the immune-dominance, the clone expansion and the adaptive dynamic hyper-hybrid mutation and other factors in the species. The population diversity is evaluated and adjusted by the locus information entropy. All subpopulations share one memory which is also used as a leader set consisting of the dominant representatives of each evolved subpopulation. The high level memory is optimized by using the immune genetic crossover operator. Several best individuals are migrated to subpopulations from the top excellent population based on the predefined condition. Through those operations, information is shared among populations for co-evolution. The results demonstrate good performance of the CCCICA in solving the traveling salesman problem(TSP) when compared with other modern intelligent algorithms.
Keywords:artificial immune system(AIS)  clonal selection  local optimization immunodominance  competitivecooperative  coevolution  traveling salesman problem(TSP)
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