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A new modification approach on bat algorithm for solving optimization problems

机译:蝙蝠算法的一种新的求解优化问题的方法

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Optimization can be defined as an effort of generating solutions to a problem under bounded circumstances. Optimization methods have arisen from a desire to utilize existing resources in the best possible way. An important class of optimization methods is heuristic algorithms. Heuristic algorithms have generally been proposed by inspiration from the nature. For instance, Particle Swarm Optimization has been inspired by social behavior patterns of fish schooling or bird flocking. Bat algorithm is a heuristic algorithm proposed by Yang in 2010 and has been inspired by a property, named as echolocation, which guides the bats' movements during their flight and hunting even in complete darkness. In this work, local and global search characteristics of bat algorithm have been enhanced through three different methods. To validate the performance of the Enhanced Bat Algorithm (EBA), standard test functions and constrained real-world problems have been employed. The results obtained by these test sets have proven EBA superior to the standard one. Furthermore, the method proposed in this study is compared with recently published studies in the literature on real-world problems and it is proven that this method is more effective than the studies belonging to other literature on this sort of problems. (C) 2014 Elsevier B.V. All rights reserved.
机译:优化可以定义为在有限情况下生成问题解决方案的工作。出于以最佳可能的方式利用现有资源的需求,出现了优化方法。一类重要的优化方法是启发式算法。启发式算法通常是通过自然界的启发而提出的。例如,粒子群优化受到鱼群学习或鸟类聚集的社会行为模式的启发。蝙蝠算法是Yang于2010年提出的一种启发式算法,其灵感来自名为echolocation的属性,该属性可指导蝙蝠在飞行和狩猎过程中的运动,甚至在完全黑暗的情况下也可以进行运动。在这项工作中,通过三种不同的方法增强了bat算法的局部和全局搜索特性。为了验证增强蝙蝠算法(EBA)的性能,已采用了标准测试功能和受约束的实际问题。这些测试集获得的结果证明EBA优于标准测试集。此外,将本研究中提出的方法与有关现实世界问题的文献中最近发表的研究进行了比较,并证明该方法比属于此类问题的其他文献的研究更为有效。 (C)2014 Elsevier B.V.保留所有权利。

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