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An Improved Particle Swarm Optimization Algorithm Based on Cauchy Operator and 3-Opt for TSP

机译:基于柯西算子和3-Opt的TSP改进粒子群算法

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An improved particle swarm optimization (PSO) algorithm based on self-adaptive excellence coefficients, Cauchy operator and 3-opt, called SCLPSO, is proposed in this paper in order to deal with the issues such as premature convergence and low accuracy of the basic discrete PSO when applied to traveling salesman problem (TSP). To improve the optimization ability and convergence speed of the algorithm, each edge is assigned a self-adaptive excellence coefficient based on the principle of roulette selection, which can be adjusted dynamically according to the process of searching for the solutions. To gain better global search ability of the basic discrete PSO, the Cauchy distribution density function is used to regulate the inertia weight so as to improve the diversity of the population. Furthermore, the 3-opt local search technique is utilized to increase the accuracy and convergence speed of the algorithm. Through simulation experiments with MATLAB, the performance of the proposed algorithm is evaluated on several classical examples taken from the TSPLIB. The experimental results indicate that the proposed SCLPSO algorithm performs better in terms of accuracy and convergence speed compared with several other algorithms, and thus is a potential intelligence algorithm for solving TSP.
机译:提出了一种基于自适应优系数,柯西算子和3-opt的改进粒子群优化算法,称为SCLPSO,以解决基本离散算法的过早收敛和精度低的问题。 PSO适用于旅行商问题(TSP)。为了提高算法的优化能力和收敛速度,根据轮盘赌选择原则为每个边缘分配了自适应优势系数,可以根据寻找解的过程进行动态调整。为了获得基本离散PSO的更好的全局搜索能力,使用柯西分布密度函数来调节惯性权重,从而提高种群的多样性。此外,利用3-opt本地搜索技术来提高算法的准确性和收敛速度。通过MATLAB的仿真实验,从TSPLIB提取的几个经典示例对所提出算法的性能进行了评估。实验结果表明,与其他几种算法相比,所提出的SCLPSO算法在精度和收敛速度上都有较好的表现,是解决TSP问题的一种潜在的智能算法。

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