A DISCRETE PARTICLE SWARM ALGORITHM WITH SYMMETRY METHODS FOR DISCRETE OPTIMIZATION PROBLEMS

Emine Baş, Gulnur Yildizdan
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Abstract

Particle Swarm Optimization (PSO) is a commonly used optimization to solve many problems. The PSO, which is developed for continuous optimization, is updated to solve discrete problems and Discrete PSO (DPSO) is obtained in this study. With DPSO, the Traveling Salesman Problem (TSP), which is well-known in the literature as a discrete problem, is solved. In order to improve the results, the swap method, the shift method, and the symmetry method are added to DPSO. The symmetry method is a new and successful method. The variations of the DPSO occurred according to the selected method type (DPSO1 (swap method), DPSO2 (shift method), DPSO3 (swap and shift methods), DPSO4 (symmetry method), DPSO5 (swap, shift, and symmetry methods), DPSO6 (swap, shift, symmetry, and 2-opt methods)). The effect of each method on the performance of the DPSO has been studied in detail. To demonstrate the success of the variations of the DPSO, the results are additionally compared with many well-known and new discrete algorithms in the literature. The results showed that the performance of DPSO has improved with the symmetry method and it has achieved better results than the discrete heuristic algorithms recently proposed in the literature.
用对称方法求解离散优化问题的离散粒子群算法
粒子群优化(PSO)是一种常用的优化方法,可以解决许多问题。将为连续优化而发展的粒子群算法更新为离散问题,得到离散粒子群算法(DPSO)。利用DPSO,求解了旅行商问题(TSP),这是一个众所周知的离散问题。为了改进结果,在DPSO中加入了交换法、移位法和对称法。对称法是一种新的、成功的方法。DPSO的变化根据所选择的方法类型(DPSO1(交换方法)、DPSO2(移位方法)、DPSO3(交换和移位方法)、DPSO4(对称方法)、DPSO5(交换、移位和对称方法)、DPSO6(交换、移位、对称和2-opt方法))而发生。详细研究了各种方法对DPSO性能的影响。为了证明DPSO变化的成功,结果还与文献中许多知名的和新的离散算法进行了比较。结果表明,采用对称方法提高了DPSO的性能,并且比文献中提出的离散启发式算法取得了更好的效果。
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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