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Particle swarm optimization with expanding neighborhood topology for the permutation flowshop scheduling problem

机译:置换流水车间调度问题的具有扩展邻域拓扑的粒子群算法

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This paper introduces a new algorithmic nature-inspired approach that uses particle swarm optimization (PSO) with different neighborhood topologies, for successfully solving one of the most computationally complex problems, the permutation flowshop scheduling problem (PFSP). The PFSP belongs to the class of combinatorial optimization problems characterized as NP-hard and, thus, heuristic and metaheuristic techniques have been used in order to find high quality solutions in reasonable computational time. The proposed algorithm for the solution of the PFSP, the PSO with expanding neighborhood topology, combines a PSO algorithm, the variable neighborhood search strategy and a path relinking strategy. As, in general, the structure of the social network affects strongly a PSO algorithm, the proposed method using an expanding neighborhood topology manages to increase the performance of the algorithm. As the algorithm starts from a small size neighborhood and by increasing (expanding) in each iteration the size of the neighborhood, it ends to a neighborhood that includes all the swarm, and it manages to take advantage of the exploration abilities of a global neighborhood structure and of the exploitation abilities of a local neighborhood structure. In order to test the effectiveness and the efficiency of the proposed method, we use a set of benchmark instances of different sizes and compare the proposed method with a number of other PSO algorithms and other algorithms from the literature.
机译:本文介绍了一种新的自然启发式算法,该方法使用具有不同邻域拓扑结构的粒子群优化(PSO),成功解决了计算上最复杂的问题之一,置换流水车间调度问题(PFSP)。 PFSP属于以NP-hard为特征的组合优化问题,因此,为了在合理的计算时间内找到高质量的解决方案,已使用启发式和元启发式技术。提出的解决PFSP的算法是具有扩展邻域拓扑的PSO,它结合了PSO算法,可变邻域搜索策略和路径重新链接策略。通常,由于社交网络的结构会严重影响PSO算法,因此所提出的使用扩展邻域拓扑的方法设法提高了算法的性能。由于该算法从较小的邻域开始,并且通过在每次迭代中增加(扩展)邻域的大小,因此它终止于包含所有群体的邻域,并且设法利用全局邻域结构的探索能力以及当地邻里结构的开发能力。为了测试该方法的有效性和效率,我们使用了一组不同大小的基准实例,并将该方法与许多其他PSO算法和文献中的其他算法进行了比较。

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