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Dynamic Multi-Swarm Fractional-best Particle Swarm Optimization for Dynamic Multi-modal Optimization

机译:动态多群分数最佳粒子群优化用于动态多模态优化

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While many particle swarm optimization (PSO) algorithms have been developed to find multiple optima to multimodal optimization problems, very few PSO algorithms exist to both find and track multiple optima in dynamically changing search landscapes. This paper presents a novel multi-swarm PSO algorithm, where the number of sub-swarms change dynamically over time to more efficiently adapt to problems where the number of optima changes over time. In addition, a repelling mechanism is employed to prevent sub-swarms from converging to the same optimum. Instead of designating one particle as the global best position, the global best position is determined by combining the best components from different particles. The new algorithm, called the dynamic multi-swarm fractional-best PSO algorithm, is compared to the best available dynamic multi-modal PSO algorithms on a large set of dynamic optimization problems with varying dynamics. The results show that the dynamic multi-swarm fractional-best PSO performs the best with reference to offline error, and second best with reference to the average number of optima found. The new algorithm’s offline error is also shown to be insensitive to change severity.
机译:虽然已经开发了许多粒子群优化(PSO)算法来查找多峰优化问题的多个Optima,但在动态更改搜索景观中,还存在很少的PSO算法在动态改变搜索范围内。本文介绍了一种新型多群PSO算法,其中子群的数量随着时间的推移而动态变化,以更有效地适应最佳变化随时间的问题。此外,采用排斥机制来防止子群会聚到相同的最佳状态。通过将来自不同粒子的最佳组件组合来确定全局最佳位置而不是将一个粒子指定为全球最佳位置。新的算法称为动态多群分数最佳PSO算法,与具有不同动力学的大集动态优化问题上的最佳可用动态多模态PSO算法进行比较。结果表明,动态多群分数最佳PSO参考离线误差,并参考找到的平均最佳数量的第二个优先。新算法的离线错误也显示出不敏感以更改严重性。

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