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Hierarchical dynamic neighborhood based Particle Swarm Optimization for global optimization

机译:基于分层动态邻域的全局优化粒子群优化

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Particle Swarm Optimization (PSO) is arguably one of the most popular nature-inspired algorithms for real parameter optimization at present. In this article, we introduce a new variant of PSO referred to as Hierarchical D-LPSO (Dynamic Local Neighborhood based Particle Swarm Optimization). In this new variant of PSO the particles are arranged following a dynamic hierarchy. Within each hierarchy the particles search for better solution using dynamically varying sub-swarms i.e. these sub-swarms are regrouped frequently and information is exchanged among them. Whether a particle will move up or down the hierarchy depends on the quality of its so-far best-found result. The swarm is largely influenced by the good particles that move up in the hierarchy. The performance of Hierarchical D-LPSO is tested on the set of 25 numerical benchmark functions taken from the competition and special session on real parameter optimization held under IEEE Congress on Evolutionary Computation (CEC) 2005. The results have been compared to those obtained with a few best-known variants of PSO as well as a few significant existing evolutionary algorithms.
机译:粒子群优化(PSO)可以说是目前真实参数优化最受欢迎的自然启发算法之一。在本文中,我们介绍了称为分层D-LPSO(基于动态邻域的粒子群优化)的PSO的新变种。在这种PSO的新变型中,粒子按照动态层次结构排列。在每个层次结构中,粒子使用动态变化的子群I.E搜索更好的解决方案。这些子群经常重新组合,并且在其中交换信息。粒子是否会向上或向下移动,取决于其上至今最佳结果的质量。群体在很大程度上受到在层次结构中移动的良好颗粒的影响。在IEEE国会上举办的竞争和特殊会议上的25个数值基准函数上进行了分层D-LPSO的性能,从IEEE大会上举行的进化计算(CEC)2005年举行的实际参数优化。结果将结果与其中获得的结果进行了比较PSO的少数最着名的典型变体以及一些重要的现有进化算法。

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