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UCPSO: A Uniform Initialized Particle Swarm Optimization Algorithm with Cosine Inertia Weight

机译:UCPSO:具有余弦惯性重量的统一初始化粒子群优化算法

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The particle swarm optimization algorithm (PSO) is a meta-heuristic algorithm with swarm intelligence. It has the advantages of easy implementation, high convergence accuracy, and fast convergence speed. However, PSO suffers from falling into a local optimum or premature convergence, and a better performance of PSO is desired. Some methods adopt improvements in PSO parameters, particle initialization, or topological structure to enhance the global search ability and performance of PSO. These methods contribute to solving the problems above. Inspired by them, this paper proposes a variant of PSO with competitive performance called UCPSO. UCPSO combines three effective improvements: a cosine inertia weight, uniform initialization, and a rank-based strategy. The cosine inertia weight is an inertia weight in the form of a variable-period cosine function. It adopts a multistage strategy to balance exploration and exploitation. Uniform initialization can prevent the aggregation of initial particles. It distributes initial particles uniformly to avoid being trapped in a local optimum. A rank-based strategy is employed to adjust an individual particle’s inertia weight. It enhances the swarm’s capabilities of exploration and exploitation at the same time. Comparative experiments are conducted to validate the effectiveness of the three improvements. Experiments show that the UCPSO improvements can effectively improve global search ability and performance.
机译:粒子群优化算法(PSO)是一种具有群体智能的元启发式算法。它具有易于实现,高收敛精度和快速收敛速度的优点。然而,PSO遭受落入局部最佳或过早的收敛,并且需要更好的PSO性能。一些方法采用PSO参数,粒子初始化或拓扑结构的改进,以增强全球搜索能力和PSO的性能。这些方法有助于解决上述问题。这篇论文启发了他们,提出了具有竞争性能的PSO变种,称为UCPSO。 UCPSO结合了三种有效的改进:余弦惯性重量,初始化和基于秩的策略。余弦惯性重量是可变时段余弦功能的形式的惯性重量。它采用多级策略来平衡勘探和剥削。均匀初始化可以防止初始粒子的聚集。它均匀地分配初始颗粒以避免被困在局部最佳状态。采用基于秩的策略来调整单个粒子的惯性体重。它同时增强了群体的勘探和剥削能力。进行比较实验以验证三种改进的有效性。实验表明,UCPSO改进可以有效地改善全球搜索能力和性能。

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