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A Novel Center-based Differential Evolution Algorithm

机译:一种基于中心的新型差分进化算法

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Differential Evolution (DE) algorithm has been shown notable performance in solving complex optimization problems. In recent years, some variants of the DE algorithm have been proposed based on the concept of center-based sampling strategy. To the best of our knowledge, the related papers employed center-based sampling for population initialization or as the base vector in mutation operator. In fact, they were operation-level approaches applied during the optimization process, and none of them was about proposing a population-level approach to utilize center-based sampling to accelerate convergence rate of algorithms. This paper proposes a novel center-based sampling scheme for the DE algorithm that utilizes center-based sampling as a member of the population. In our scheme, one candidate solution is the center of the best candidate solutions, while other individuals in the population behave similarly to the standard DE algorithm. The center-based candidate solution is not updated using standard operators and is set to the center in each iteration. To validate our scheme, we benchmark our algorithm on CEC-2017 benchmark functions with three dimensions of 30, 50, and 100. Also, we design some experiments to analyze the behavior of the proposed center-based scheme. Our experiments demonstrate a significant improvement of the proposed algorithm on the majority of benchmark functions.
机译:差分进化(DE)算法在解决复杂的优化问题方面已显示出显着的性能。近年来,基于基于中心的采样策略的概念已经提出了DE算法的一些变体。据我们所知,相关论文采用基于中心的抽样进行总体初始化或作为变异算子的基本向量。实际上,它们是在优化过程中应用的操作级方法,而它们都与提出一种人口级方法以利用基于中心的采样来加快算法的收敛速度无关。本文为DE算法提出了一种新颖的基于中心的采样方案,该算法利用基于中心的采样作为总体成员。在我们的方案中,一个候选解决方案是最佳候选解决方案的中心,而总体中的其他个体的行为与标准DE算法相似。基于中心的候选解决方案不会使用标准运算符进行更新,而是在每次迭代中都设置为中心。为了验证我们的方案,我们在30、50和100这三个维度的CEC-2017基准函数上对算法进行了基准测试。此外,我们设计了一些实验来分析所提出的基于中心的方案的行为。我们的实验表明,该算法在大多数基准功能上均得到了重大改进。

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