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Backtracking search optimization algorithm based on knowledge learning

机译:基于知识学习的回溯搜索优化算法

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As a new evolutionary computation method, the structure of backtracking search optimization algorithm (BSA) is simple and the exploration capability of it is strong. However, the global performance of the BSA is significantly affected by mutation strategies and control parameters. Designing appropriate mutation strategies and control parameters is important to improve the global performance of the BSA. In this paper, an adaptive BSA with knowledge learning (KLBSA) is developed to improve the global performance of the BSA. In the method, an adaptive control parameter based on the global and local information of the swarms in the current iteration is designed to adjust the search step length of individuals, which helps to balance the exploration and exploitation abilities of the algorithm. Moreover, a new mutation strategy based on the guidance of different information is designed to improve the optimization ability of the algorithm. In addition, a multi-population strategy is implemented to thoroughly improve the searching ability of the algorithm for different searching areas. To this end, experiments on three groups of benchmark functions and three real-world problems are implemented to verify the performance of the proposed KLBSA algorithm. The results indicate that the proposed algorithm performs competitively and effectively when compared to some other evolutionary algorithms. (C) 2018 Elsevier Inc. All rights reserved.
机译:作为一种新的进化计算方法,回溯搜索优化算法(BSA)的结构简单,它的探索能力很强。但是,BSA的全球性能受到突变策略和控制参数的显着影响。设计适当的突变策略和控制参数对于提高BSA的全球性能非常重要。在本文中,开发了一种具有知识学习(KLBSA)的自适应BSA,以提高BSA的全球性能。在该方法中,基于当前迭代中群体的全局和本地信息的自适应控制参数被设计为调整个人的搜索步长,这有助于平衡算法的探索和开发能力。此外,基于不同信息指导的新突变策略旨在提高算法的优化能力。此外,实施多群策略以彻底改善不同搜索区域的算法的搜索能力。为此,实施了三组基准函数和三个现实问题的实验,以验证所提出的KLBSA算法的性能。结果表明,与其他一些进化算法相比,所提出的算法在竞争力和有效地执行。 (c)2018年Elsevier Inc.保留所有权利。

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