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Adaptive multiple-elites-guided composite differential evolution algorithm with a shift mechanism

机译:具有换档机制的自适应多精英引导复合差分算法

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AbstractThe performance of differential evolution (DE) has been significantly influenced by trial vector generation strategies and control parameters. Various powerful trial vector generation strategies with adaptive parameter adjustment methods such that the population generation is guided by the elites have been proposed. This paper aims to strengthen the performance of DE by compositing these powerful trial vector generation strategies, making it possible to obtain the guidance of each individual from multiple elites concurrently and independently. In this manner, the deleterious behavior in which an individual is misguided by various local optimal solutions into unpromising areas could be restrained to a certain extent. An adaptive multiple-elites-guided composite differential evolution algorithm with a shift mechanism (abbreviated as AMECoDEs) has been proposed in this paper. This algorithm concurrently employs two elites-guided trial vector generation strategies for each individual to generate two candidate solutions accordingly, and the best one is adopted to participate in the selection. Moreover, a novel shift mechanism is established to handle stagnation and premature convergence issues. AMECoDEs has been tested on the CEC2014 benchmark functions. Experimental results show that AMECoDEs outperforms various classic state-of-the-art DE variants and is better than or at least comparable to various recently proposed DE methods.]]>
机译:<![cdata [ Abstract 差分演进(de)的性能受到试验频策略和控制参数的显着影响。具有自适应参数调整方法的各种强大的试验策略,使得人们一代由精英引导。本文旨在通过合成这些强大的试验载体生成策略来加强DE的性能,使得可以同时和独立地从多个ELITES获得每个人的指导。以这种方式,可以在一定程度上限制各个局部最佳解决方案中的个人被各种局部最佳解决方案被误导的有害行为。本文提出了一种具有换档机制(缩写为Amecodes)的自适应多精英引导的复合差分算法。该算法同时采用两个精英引导的试验载体产生策略,为每个单独的单独产生相应地产生两个候选解决方案,并且采用最好的一种候选解决方案来参与选择。此外,建立了一种新的换档机制来处理停滞和过早的会聚问题。在CEC2014基准功能上测试了模块。实验结果表明,功绩优于各种经典的最新的DE变体,并且优于或至少与最近提出的方法的不同或至少可比较。 ]]>

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