期刊文献+

引导小生境回溯优化算法 被引量:4

Guidance and niching backtracking search optimization algorithm
下载PDF
导出
摘要 回溯搜索优化算法(BSA)是近年提出的一种新型优化算法,针对其收敛速度较慢、易陷于局部最优的缺点,提出了一种基于最优个体引导和小生境技术相结合的改进BSA算法。本方法首先在BSA的变异操作中引入向最优个体学习的策略,以提高算法的收敛速度;其次,设计一种新的小生境排挤技术,根据每个个体到其他个体距离的平均最小值确定小生境半径,排除部分相似性较高的个体;结合群体当前的最差信息,设计一种新的变异方法产生一定数量的新个体补充到新的种群中,维持群体数量的恒定并增强群体多样性。改进的BSA算法充分考虑了算法的收敛速度和群体的多样性,较大地提高了传统BSA算法的性能。对10个典型函数进行仿真测试,并与其他算法结果进行对比,实验结果表明,改进算法在收敛速度与精度方面具有较好的效果。 Backtracking Search optimization Algorithm(BSA)is a new optimization algorithm which is proposed in recent years. For the convergence speed of original BSA is slow and it is easily trapped in local optima, an improved BSA based on the combination of guidance with the best individual and niche technique is proposed to improve the global performance of it. In the method, the strategy with learning from the best individual is introduced in the mutation operator of original BSA to improve the convergence speed of it in the first. In the second, a niche repulsing technology is designed in the paper. The niching radius is determined according to the average minimal distance between every individual and the other individuals, and some parts individuals with high similarity are deleted, some new individuals are generated by a new mutation method which is designed with combining the worst information of current generation, and the new individuals are supplemented in the new population to maintain the constant number of population, the diversity of the population is increased by this operation. The convergence speed and the diversity of population is fully considered in the improved BSA, and the performance of the original BSA is largely improved. 10 typical functions are used in the simulation experiments, and the results are compared with those of other algorithms. The results indicate that the improved algorithm has good performance in terms with the convergence speed and accuracy.
出处 《计算机工程与应用》 CSCD 北大核心 2017年第21期126-131,共6页 Computer Engineering and Applications
基金 国家自然科学基金(No.61572224 No.61304082) 安徽省高校自然科学研究重大项目(No.KJ2015ZD36) 安徽省高校自然科学研究重点项目(No.KJ2016A639) 安徽省国际科技合作计划项目(No.10080703003) 安徽省第七批"115"产业创新团队皖人才[2014]4号
关键词 回溯搜索优化算法 引导机制 小生境技术 变异策略 Backtracking Search optimization Algorithm(BSA) guidance mechanism niche technology mutation strategy
  • 相关文献

参考文献1

二级参考文献17

  • 1Colorni A, Dorigo M, Maniezzo V, et al. Distributed optimization by ant colonies [ A]. Proceedings of ECAL91 ( European Conference on Artificial Life) [ C ]. Paris, France : 1991.134 - 142.
  • 2Dorigo M, Maniezzo V, Colomi A. The ant system:optimization by a colony of cooperating agents [ J]. IEEE Transactions on Systems, Man, and Cybernetics - Part B, 1996, 26( 1 ) : 29-41.
  • 3Verbeeck K, Nowe A. Colonies of learning automata [J]. IEEE Transactions on Systems, Man, and Cybernetics-Part B, 2002,32(6) : 772 -780.
  • 4Montgomery J, Randall M. Anti-pheromone as a tool for better exploration of search space [A]. Proceedings of Third International Workshop ANTS [C]. Brussels, Belgium:2002. 100 - 110.
  • 5Bonabeau E, Dorigo M, Theraulaz G. Inspiration for optimization from social insect behaviour [J]. Nature, 2000, 406(6) :39-42.
  • 6Dorigo M, Gambardella L M. Solving symmetric and asym-metric TSPs by ant colonies [ A ]. Proceedings of the IEEE Conference on Evolutionary Computation [ C ]. Nagoya, Japan : 1996. 622-627.
  • 7Thomas S, Holger H H. MAX - MIN ant system [J]. Future Generation Computer Systems, 2000,16 ( 8 ) : 889 - 914.
  • 8Bonabeau E, Dorigo M, Theraulaz G. Inspiration for optimization from social insect behaviour [J]. Nature, 2000, 406(6) :39 -42.
  • 9Dorigo M, Gambardella L M. Solving symmetric and asym-metric TSPs by ant colonies [ A]. Proceedings of the IEEE Conference on Evolutionary Computation [ C ]. Nagoya, Japan: 1996. 622 -627.
  • 10Thomas S, Holger H H. MAX- MIN ant system [ J]. Future Generation Computer Systems, 2000,16 (8): 889 - 914.

共引文献56

同被引文献25

引证文献4

二级引证文献5

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部