An Improved particle swarm optimization based on lévy flight and simulated annealing for high dimensional optimization problem

Samar Bashath, Amelia Ritahani Ismail, A. Alwan, A. Hussin
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引用次数: 1

Abstract

Particle swarm optimization (PSO) is a simple metaheuristic method to implement with robust performance. PSO is regarded as one of the numerous researchers' most well-studied algorithms. However, two of its most fundamental problems remain unresolved. PSO converges onto the local optimum for high-dimensional optimization problems, and it has slow convergence speeds. This paper introduces a new variant of a particle swarm optimization algorithm utilizing Lévy flight-McCulloch, and fast simulated annealing (PSOLFS). The proposed algorithm uses two strategies to address high-dimensional problems: hybrid PSO to define the global search area and fast simulated annealing to refine the visited search region. In this paper, PSOLFS is designed based on a balance between exploration and exploitation. We evaluated the algorithm on 16 benchmark functions for 500 and 1,000 dimension experiments. On 500 dimensions, the algorithm obtains the optimal value on 14 out of 16 functions. On 1,000 dimensions, the algorithm obtains the optimal value on eight benchmark functions and is close to optimal on four others. We also compared PSOLFS with another five PSO variants regarding convergence accuracy and speed. The results demonstrated higher accuracy and faster convergence speed than other PSO variants. Moreover, the results of the Wilcoxon test show a significant difference between PSOLFS and the other PSO variants. Our experiments' findings show that the proposed method enhances the standard PSO by avoiding the local optimum and improving the convergence speed.
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基于lsamvy飞行和模拟退火的改进粒子群优化高维优化问题
粒子群算法是一种简单的元启发式算法,具有鲁棒性。粒子群算法被认为是众多研究人员研究得最多的算法之一。然而,两个最根本的问题仍未得到解决。对于高维优化问题,粒子群算法收敛于局部最优,但收敛速度较慢。本文介绍了一种基于lsamvy flight-McCulloch和快速模拟退火(PSOLFS)的粒子群优化算法。该算法采用混合粒子群算法(hybrid PSO)定义全局搜索区域和快速模拟退火算法(fast simulation退火)优化所访问的搜索区域来解决高维问题。在本文中,PSOLFS是基于勘探和开发之间的平衡而设计的。我们在16个基准函数上对算法进行了500维和1000维的实验评估。在500个维度上,该算法在16个函数中有14个得到了最优值。在1000个维度上,该算法在8个基准函数上得到最优值,在另外4个维度上接近最优值。我们还将PSOLFS与另外五种PSO变体在收敛精度和速度方面进行了比较。结果表明,与其他PSO变体相比,该算法具有更高的精度和更快的收敛速度。此外,Wilcoxon测试结果显示PSOLFS与其他PSO变体之间存在显著差异。实验结果表明,该方法避免了局部最优,提高了收敛速度,增强了标准粒子群算法的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
International Journal of Advances in Intelligent Informatics
International Journal of Advances in Intelligent Informatics Computer Science-Computer Vision and Pattern Recognition
CiteScore
3.00
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0.00%
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