基于GPU计算的有容量单分配集线器定位问题

A. Benaini, Achraf Berrajaa, J. Boukachour
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引用次数: 1

摘要

几个实际问题表明在合理的时间内解决大型枢纽选址问题的必要性。由于这些问题被归类为NP-hard,本文的目的是为HLP的有能力变体设计一种基于GPU的方法,可以接近这些目标。为了加快遗传算法的收敛速度,本文提出的遗传算法从精心生成的若干初始种群(岛屿模型)开始。在各种已知基准和随机大型实例(多达6000个节点)上进行的数值测试揭示了选择初始种群及其相互作用方式的重要性。他们表明,所提出的方法至少对这些基准是有效的,并且可以适用于轮毂位置问题的其他变体。该方法已经达到了这些基准测试的所有已知最优解决方案,并在三个具有100和200个节点的AP实例上找到了更好的新解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
GPU computing for the capacitated single allocation hub location problem
Several real-life problems show the necessity for solving large scale hub location problem in reasonable time. Since these problems are classified as NP-hard, the aim of this paper is to design a GPU based approach for the capacitated variant of the HLP that can approach these goals. The proposed GA starts from several initial populations (island model) carefully generated in order to speed up the convergence of the GA. The numerical tests on a variety of known benchmarks and on a random large instances (up to 6000 nodes) reveal the importance of the choice of initial populations and the way they interact with each other. They show that the proposed methodology is efficient at least for these benchmarks and may be adapted to other variants of hub location problems. The method has reached all the known optimal solutions for these benchmarks and found new, significantly better, solutions on three AP instances with 100 and 200 nodes.
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