首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part C. Journal of mechanical engineering science >Adaptive particle swarm optimization with population diversity control and its application in tandem blade optimization
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Adaptive particle swarm optimization with population diversity control and its application in tandem blade optimization

机译:适应性粒子群优化与人口分集控制及其在串联刀片优化中的应用

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摘要

This paper proposes a new variant of particle swarm optimization, namely adaptive particle swarm optimization with population diversity control (APSO-PDC), to improve the performance of particle swarm optimization. APSO-PDC is formulated based on adaptive selection of particle roles, population diversity control, and adaptive control of parameters. The adaptive selection of particle roles which combines the evolutionary state and dynamic particle state estimation method will sort the particles into three roles to let different particles execute different search tasks during optimization process. The adaptive control of parameters which is created based on the evolutionary state and particle roles encourages the exploitation ability and enhances the algorithm’s convergence speed. The population diversity control which combines comprehensive learning strategy of the comprehensive learning particle swarm optimizer with evolutionary state to update the individual best position strengthens exploration ability and thus increases the algorithm’s robustness toward the premature convergence issue. The performance of APSO-PDC is comprehensively evaluated by 21 unimodal and multimodal functions with or without rotation. The results indicate APSO-PDC has more preferable searching accuracy, searching reliability, and convergence speed than the other well-established particle swarm optimization variants. Finally, compared with other six particle swarm optimization variants, APSO-PDC shows satisfactory performance in optimizing tandem blade. This excellent performance proves that APSO-PDC has a better control of swarm exploration and exploitation abilities.
机译:本文提出了一种粒子群优化的新变种,即适应性粒子群优化与群体分集控制(APSO-PDC),提高粒子群优化的性能。 APSO-PDC基于适应性选择的粒子角色,群体分集控制和参数的自适应控制。组合进化状态和动态粒子状态估计方法的粒子角色的自适应选择将粒子分成三个作用,以便在优化过程期间使不同的粒子执行不同的搜索任务。基于进化状态和粒子角色创建的参数的自适应控制鼓励利用利用能力并提高算法的收敛速度。将综合学习粒子群优化器的综合学习策略与进化状态相结合的人口分集控制能力增强了勘探能力,从而提高了算法对早产问题的鲁棒性。 APSO-PDC的性能由21个单峰和多模式函数进行全面评估,有或不旋转。结果表明,APSO-PDC具有比其他建立良好的粒子群优化变体更优选的搜索精度,搜索可靠性和收敛速度。最后,与其他六种粒子群优化变体相比,APSO-PDC在优化串联刀片方面显示出令人满意的性能。这种出色的性能证明,APSO-PDC更好地控制了群体勘探和剥削能力。

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