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A hybrid particle swarm optimization approach for the sequential ordering problem

机译:顺序排序问题的混合粒子群优化方法

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The sequential ordering problem is a version of the asymmetric travelling salesman problem where precedence constraints on vertices are imposed. A tour is feasible if these constraints are fulfilled, and the objective is to find a feasible solution with minimum cost. A particle swarm optimization approach hybridized with a local search procedure is discussed in this paper. The method is shown to be very effective in guiding a sophisticated local search previously introduced in the literature towards high quality regions of the search space. Differently from standard particle swarm algorithms, the proposed hybrid method tends to fast convergence to local optima. A mechanism to self-adapt a parameter and to avoid stagnation is therefore introduced. Extensive experimental results, where the new method is compared with the state-of-the-art algorithms, show the effectiveness of the new approach.
机译:顺序排序问题是不对称旅行商问题的一种形式,其中对顶点施加了优先约束。如果满足了这些约束,那么巡回是可行的,目的是找到成本最小的可行解决方案。本文讨论了一种与局部搜索程序混合的粒子群优化方法。该方法在引导先前文献中引入的复杂的本地搜索向搜索空间的高质量区域方面非常有效。与标准粒子群算法不同,所提出的混合方法倾向于快速收敛到局部最优。因此,引入了一种自适应参数并避免停滞的机制。将新方法与最新算法进行比较的大量实验结果证明了新方法的有效性。

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