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Improving backtracking search algorithm with variable search strategies for continuous optimization

机译:改进变量搜索策略的回溯搜索算法,以进行连续优化

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The backtracking search algorithm (BSA), a relatively new evolutionary algorithm (EA), has been shown to be a competitive alternative to other population-based algorithms. To effectively solve a variety of optimization problems, this paper suggests ten mutation strategies and compares the performance of selection mechanisms in employing these strategies. Moreover, following the original BSA design, new parameters of historical mean and best positions are proposed in order to implement several additional mutation strategies. In addition, as recommended in the literature, a one-dimensional crossover scheme is enacted for greedy strategies in order to prevent premature convergence. Furthermore, three settings for search factors of mutation strategies are proposed. As a result, improved BSA versions that employed, respectively, ten and four mutation strategies were found to significantly facilitate the ability of BSA to handle optimization tasks of different characteristics. The experimental results show that the proposed versions outperformed the basic BSA in terms of achieving high convergence speed in the early stage, reaching the convergence precision and plateau with better scores, and performing perfectly on tests of composition functions. In addition, the improved BSA versions outperformed five popular, nature-inspired algorithms in terms of achieving the best convergence precision and performing perfectly on six composition functions. (C) 2019 Elsevier B.V. All rights reserved.
机译:回溯搜索算法(BSA),相对较新的进化算法(EA)被证明是对其他基于人群的算法的竞争替代品。为了有效解决各种优化问题,本文提出了十种突变策略,并比较了采用这些策略的选择机制的性能。此外,在原始BSA设计之后,提出了历史均值和最佳位置的新参数,以实现几种额外的突变策略。此外,根据文献中的建议,为贪婪策略制定了一维交叉方案,以防止过早收敛。此外,提出了三种搜索因子的三种设置。结果,发现了改进的BSA版本,分别为10和四种突变策略,以显着促进BSA处理不同特征的优化任务的能力。实验结果表明,该建议的版本在早期阶段实现高收敛速度,达到了融合精度和高原,并在成分功能的试验方面表现出完美的趋同性。此外,改进的BSA版本在实现最佳收敛精度和完美的六种成分功能方面表现出五个流行的自然灵感算法。 (c)2019年Elsevier B.V.保留所有权利。

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