An Adaptive Particle Swarm Optimization with Information Interaction Mechanism

Rui Liu, Lisheng Wei, Pinggai Zhang
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Abstract

The Particle Swarm Optimization (PSO) algorithm is easy to implement owing to its simple framework, and has been successfully applied to many optimization problems. However, the standard PSO easily falls into the local optimum and has weak search ability. To enhance the optimization ability of the algorithm, this paper proposes an adaptive particle swarm optimization with information interaction mechanism (APSOIIM). First, a chaotic sequence strategy was used to produce uniformly distributed particles and enhance their convergence speed at the initialization stage of the algorithm. Then, an interaction information mechanism is introduced to enhance the diversity of the population with the progress of the search, which can effectively interact with the best information of neighboring particles to maintain the balance between exploration and exploitation. Besides, the convergence was proven to verify the robustness and efficiency of the proposed APSOIIM algorithm. Finally, the proposed APSOIIM was applied to solve the CEC2014 benchmark functions and CEC2017 benchmark functions as well as famous engineering optimization problems. The experimental results show that the proposed APSOIIM has significant advantages over the compared algorithms.
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具有信息交互机制的自适应粒子群优化技术
粒子群优化(PSO)算法因其框架简单而易于实现,并已成功应用于许多优化问题。然而,标准的 PSO 算法容易陷入局部最优,搜索能力较弱。为了提高该算法的优化能力,本文提出了一种具有信息交互机制的自适应粒子群优化算法(APSOIIM)。首先,在算法的初始化阶段,采用混沌序列策略产生均匀分布的粒子,并提高粒子的收敛速度。然后,引入交互信息机制,使种群的多样性随着搜索的进展而增强,从而有效地与相邻粒子的最佳信息进行交互,保持探索与开发之间的平衡。此外,收敛性的证明也验证了所提出的 APSOIIM 算法的鲁棒性和高效性。最后,将所提出的 APSOIIM 应用于解决 CEC2014 基准函数和 CEC2017 基准函数以及著名的工程优化问题。实验结果表明,与其他算法相比,所提出的 APSOIIM 算法具有显著优势。
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