期刊文献+

人工蜂群算法综述 被引量:1

Comprehensive Survey on Artificial Bee Colony Algorithm
下载PDF
导出
摘要 近年来群智能算法发展较为迅速并解决了很多大规模的复杂问题。人工蜂群算法是一种新型的群智能算法,以其很强的全局收敛性、贪婪启发式的搜索特征以及求解问题的快速性等优越的性能受到广泛关注。简单介绍了人工蜂群算法提出的生物学背景;由蜜蜂觅食行为与现实问题的求解类比给出了该算法的建模思想;并详细介绍了人工蜂群算法实现的算法模型;从基于算法的改进以及基于算法的应用两方面讨论了近年来很多学者对人工蜂群算法研究的现状;最后对人工蜂群算法的研究进行展望,从算法的弱点分析提出了该算法改进的方向以及进一步应用的领域。 Swarm intelligence algorithm develops rapidly these years and solve many large scale complex problems. Artificial bee colony algorithm is a new swarm intelligence algorithm, which gets wide attention for its superior performance, for example, strong global convergence, greedy heuristic search feature and quickly problem solution. The biological background is introduced briefly; modeling thought is given through the comparision between bees foraging behavior and problems solution; and algorithm model is introduced in detail; the research status quo is discussed from improvement and application of the algorithm these years; at last, research prospects are given about artificial bee colony algorithm, and improvement direction and application field are put for- ward from the weekness analysis of algorithm.
出处 《电脑与电信》 2015年第5期15-18,共4页 Computer & Telecommunication
基金 北京市属高等学校高层次人才引进与培养计划项目 项目编号:CIT&TCD201304118
关键词 群智能 人工蜂群算法 觅食行为 算法模型 研究现状 swarm intelligence artificial bee colony algorithm foraging behavior algorithm model research status quo
  • 相关文献

参考文献22

  • 1Seely T D. The wisdom of the hive:The social physiology of hon- ey bee colonies. Cambridge:Harvard University Press, 1995.
  • 2Teodorovic D,Dell' Orco M,Bee colony optimization acoopera- five learning approach to complex transportation problems. Advanced OR and AI Methods in Transportation, 2005:51-60.
  • 3Krarboga D. An idea based on honey bee swarm for numerical op- timization. Kayseri: Erciyes University, 2005.
  • 4Fathian M, Amiri B, Maroosi A. Application of honey bee mating optimization algorithm on clustering. Applied Mathematics and Computa- tion, 2007,190(2) : 1502-1513.
  • 5黄秋菀,王志刚,夏慧明.求解旅行商问题的人工蜂群算法[J].价值工程,2013,32(9):206-207. 被引量:2
  • 6Karaboga D, Basturk B. A powerful and efficient algorithm for nu- merical function optimization: artificial bee colony (abc) algorithm. J Glob Optim, 2007,39 : 459-471.
  • 7Akay B, Karaboga D. Parameter tuning for the artificial bee colony algorithm[C]//Lecmre Notes in Computer Science. Berlin, Germany, 2009, 5796: 608-619.
  • 8罗钧,李研.具有混沌搜索策略的蜂群优化算法[J].控制与决策,2010,25(12):1913-1916. 被引量:78
  • 9孙晓雅,林焰.改进的人工蜂群算法求解任务指派问题[J].微电子学与计算机,2012,29(1):23-26. 被引量:18
  • 10Alatas B. Chaotic bee colony algorithms for global numerical opti- mization [J]. Expert Systems with Applications, 2010,37(8) : 5682-5687.

二级参考文献118

共引文献204

同被引文献5

引证文献1

二级引证文献2

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