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A novel modified bat algorithm hybridizing by differential evolution algorithm

机译:一种新的改进的蝙蝠算法与差分进化算法混合

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The bat algorithm (BA) is one of the metaheuristic algorithms that are used to solve optimization problems. The differential evolution (DE) algorithm is also applied to optimization problems and has successful exploitation ability. In this study, an advanced modified BA (MBA) algorithm was initially proposed by making some modifications to improve the exploration and exploitation abilities of the BA. A hybrid system (MBADE), involving the use of the MBA in conjunction with the DE, was then suggested in order to further improve the exploitation potential and provide superior performance in various test problem clusters. The proposed hybrid system uses a common population, and the algorithm to be applied to the individual is selected on the basis of a probability value, which is calculated in accordance with the performance of the algorithms; thus, the probability of applying a successful algorithm is increased. The performance of the proposed method was tested on functions that have frequently been studied, such as classical benchmark functions, small-scale CEC 2005 benchmark functions, large-scale CEC 2010 benchmark functions, and CEC 2011 real-world problems. The obtained results were compared with the results obtained from the standard BA and other findings in the literature and interpreted by means of statistical tests. The developed hybrid system showed superior performance to the standard BA in all test problem sets and produced more acceptable results when compared to the published data for the existing algorithms. In addition, the contribution of the MBA and DE algorithms to the hybrid system was examined. (C) 2019 Elsevier Ltd. All rights reserved.
机译:蝙蝠算法(BA)是用于解决优化问题的元启发式算法之一。差分进化(DE)算法也被应用于优化问题,并且具有成功的开发能力。在这项研究中,最初提出了一种先进的改进BA(MBA)算法,通过进行一些修改以提高BA的探索和开发能力。然后提出了一种混合系统(MBADE),其中包括将MBA与DE结合使用,以便进一步提高开发潜力并在各种测试问题集群中提供卓越的性能。提出的混合系统使用一个公共种群,并根据概率值选择要应用于个体的算法,该概率值是根据算法的性能计算得出的;因此,增加了应用成功算法的可能性。该方法的性能已在经常研究的功能上进行了测试,例如经典基准功能,小型CEC 2005基准功能,大型CEC 2010基准功能以及CEC 2011实际问题。将获得的结果与从标准BA和文献中的其他发现获得的结果进行比较,并通过统计检验进行解释。与现有算法的已发布数据相比,已开发的混合系统在所有测试问题集中均表现出优于标准BA的性能,并且产生了更可接受的结果。此外,还检查了MBA和DE算法对混合系统的贡献。 (C)2019 Elsevier Ltd.保留所有权利。

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