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Co-evolving bee colonies by forager migration: A multi-swarm based Artificial Bee Colony algorithm for global search space

机译:通过觅食者迁移共同进化的蜂群:基于多群的人工蜂群算法用于全局搜索空间

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Swarm intelligent algorithms focus on imitating the collective intelligence of a group of simple agents that can work together as a unit. Such algorithms have particularly significant impact in the fields like optimization and artificial intelligence (AI). This research article focus on a recently proposed swarm-based metaheuristic called the Artificial Bee Colony (ABC) algorithm and suggests modification to the algorithmic framework in order to enhance its performance. The proposed ABC variant shall be referred to as Migratory Multi-swarm Artificial Bee Colony (MiMSABC) algorithm. Different perturbation schemes of ABC function differently in varying landscapes. Hence to maintain the basic essence of all these schemes, MiMSABC deploys a multiple swarm populations that are characterized by different and unique perturbation strategies. The concept of reinitializing foragers around a depleted food source using a limiting parameter, as often used conventionally in ABC algorithms, has been avoided. Instead a performance based set of criteria has been introduced to thoroughly detect subpopulations that have shown limited progress to eke out the global optimum. Once failure is detected in a subpopulation provisions have been made so that constituent foragers can migrate to a better performing subpopulation, maintaining, however, a minimum number of members for successful functioning of a subpopulation. To evaluate the performance of the algorithm, we have conducted comparative study involving 8 algorithms for testing the problems on 25 benchmark functions set proposed in the Special Session on IEEE Congress on Evolutionary Competition 2005. Thorough a detailed analysis we have highlighted the statistical superiority of our proposed MiMSABC approach over a set of population based metaheuristics.
机译:群智能算法专注于模仿可以作为一个单元一起工作的一组简单代理的集体智能。这样的算法在优化和人工智能(AI)等领域具有特别重要的影响。本文的研究重点是最近提出的基于群体的元启发式算法,称为人工蜂群(ABC)算法,并建议对算法框架进行修改以增强其性能。提议的ABC变体应称为“迁移多群人工蜂群(MiMSABC)”算法。 ABC的不同摄动方案在不同的景观中具有不同的功能。因此,为了保持所有这些方案的基本本质,MiMSABC部署了以不同且独特的摄动策略为特征的多个种群。避免了像通常在ABC算法中经常使用的那样,使用限制参数重新初始化耗尽的食物来源周围的觅食的想法。取而代之的是,引入了一套基于性能的标准来彻底检测显示出有限的进展来激发全局最优性的亚种群。一旦在亚种群中检测到故障,就已经做好准备,以便组成性的觅食者可以迁移到性能更好的亚种群,但是,要保持亚种群成功运行所需的最少数量的成员。为了评估算法的性能,我们进行了比较研究,涉及8种算法,用于测试在2005年IEEE进化竞争大会特别会议上提议的25个基准函数集上的问题。通过详尽的分析,我们强调了我们算法的统计优势。提出了一套基于人口的元启发式方法的MiMSABC方法。

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