不同收缩因子下粒子群优化算法的收敛性分析

Dereje Tarekegn Nigatu, Tekle Gemechu Dinka, Surafel Luleseged Tilahun
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摘要

粒子群优化(PSO)算法是一种优化技术,在解决问题方面具有显著的性能。该方法的收敛性分析仍在研究之中。本文提出了一种控制速度的机制,即在标准蜂群优化算法中应用一种涉及收缩因子的方法,称为 CSPSO。此外,还提出了具有时间步长吸引子的 CSPSO 数学模型,以研究收敛条件和相应的稳定性。因此,我们所考虑的收缩标准粒子群优化算法在平衡探索和开发方面具有更高的潜力。为了避免 PSO 过早收敛,CSPSO 修改了 PSO 速度方程的所有项。我们用一些基准函数测试了基于收缩系数的 CSPSO 算法的有效性,并将其与其他基本 PSO 变体算法进行了比较。我们还用表格和图形展示了理论收敛和实验分析结果。
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Convergence analysis of particle swarm optimization algorithms for different constriction factors
Particle swarm optimization (PSO) algorithm is an optimization technique with remarkable performance for problem solving. The convergence analysis of the method is still in research. This article proposes a mechanism for controlling the velocity by applying a method involving constriction factor in standard swarm optimization algorithm, that is called CSPSO. In addition, the mathematical CSPSO model with the time step attractor is presented to study the convergence condition and the corresponding stability. As a result, constriction standard particle swarm optimization that we consider has a higher potential to balance exploration and exploitation. To avoid the PSO premature convergence, CSPSO modifies all terms of the PSO velocity equation. We test the effectiveness of the CSPSO algorithm based on constriction coefficient with some benchmark functions and compare it with other basic PSO variant algorithms. The theoretical convergence and experimental analyses results are also demonstrated in tables and graphically.
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