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Dynamic Diversity Enhancement in Particle Swarm Optimization (DDEPSO) Algorithm for Preventing from Premature Convergence

机译:防止粒子群算法过早收敛的粒子群优化算法(DDEPSO)中的动态多样性增强

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The problem of early convergence in the Particle Swarm Optimization (PSO) algorithm often causes the search process to be trapped in a local optimum. This problem often occurs when the diversity of the swarm decreases and the swarm cannot escape from a local optimal. In this paper, a novel dynamic diversity enhancement particle swarm optimization (DDEPSO) algorithm is introduced. In this variant of PSO, we periodically replace some of the swarm's particles by artificial ones, which are generated based on the history of the search process, in order to enhance the diversity of the swarm and promote the exploration ability of the algorithm. Afterwards, we update the velocity of the artificial particles in corresponding generating period by a new velocity equation with the minimum inertia weight in order to enhance the exploitation potentiality of the swarm. The performance of this approach has been tested on the set of twelve standard unimodal and multimodal (Rotated or unrotated) benchmark problems and the results have been compared with our previous work as well as four other variants of the PSO algorithm. The numerical results demonstrate that the proposed algorithm outperforms others in most of the test cases taken in this study.
机译:粒子群优化(PSO)算法的早期收敛问题经常导致搜索过程陷入局部最优状态。当群的多样性减小并且群无法从局部最优值逃脱时,经常会出现此问题。本文介绍了一种新颖的动态分集增强粒子群算法(DDEPSO)。在这种PSO变体中,我们会定期使用人工粒子替换大量粒子,这些粒子是根据搜索过程的历史生成的,以增强粒子群的多样性并提高算法的探索能力。然后,我们用最小惯性权重的新速度方程更新相应生成周期中人造粒子的速度,以提高群的开发潜力。该方法的性能已在12个标准单峰和多峰(旋转或未旋转)基准问题集上进行了测试,并将结果与​​我们之前的工作以及PSO算法的其他四个变体进行了比较。数值结果表明,在本研究的大多数测试案例中,所提出的算法优于其他算法。

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