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A new differential evolution algorithm with a hybrid mutation operator and self-adapting control parameters for global optimization problems

机译:一种新的具有混合变异算子和自适应控制参数的差分进化算法,用于全局优化问题

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摘要

The differential evolution (DE) algorithm is a notably powerful evolutionary algorithm that has been applied in many areas. Therefore, the question of how to improve the algorithm's performance has attracted considerable attention from researchers. The mutation operator largely impacts the performance of the DE algorithm The control parameters also have a significant influence on the performance. However, it is not an easy task to set a suitable control parameter for DE. One good method is to considering the mutation operator and control parameters simultaneously. Thus, this paper proposes a new DE algorithm with a hybrid mutation operator and self-adapting control parameters. To enhance the searching ability of the DE algorithm, the proposed method categorizes the population into two parts to process different types of mutation operators and self-adapting control parameters embedded in the proposed algorithm framework. Two famous benchmark sets (including 46 functions) are used to evaluate the performance of the proposed algorithm and comparisons with various other DE variants previously reported in the literature have also been conducted. Experimental results and statistical analysis indicate that the proposed algorithm has good performance on these functions.
机译:差分进化(DE)算法是一种非常强大的进化算法,已应用于许多领域。因此,如何提高算法性能的问题引起了研究人员的广泛关注。变异算子会极大地影响DE算法的性能。控制参数也对性能产生重大影响。但是,为DE设置合适的控制参数并非易事。一种好的方法是同时考虑变异算子和控制参数。因此,本文提出了一种具有混合变异算子和自适应控制参数的DE算法。为了提高DE算法的搜索能力,该方法将种群分为两部分,以处理不同类型的变异算子和嵌入在算法框架中的自适应控制参数。使用两个著名的基准集(包括46个函数)来评估所提出算法的性能,并且还与文献中先前报道的各种其他DE变体进行了比较。实验结果和统计分析表明,该算法在这些功能上具有良好的性能。

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