基于聚类的模拟退火方法求解无能力单分配p-hub选址问题

Zeinab Rasoulinejad, M. Bashiri, Masoud Mehrbanfar
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引用次数: 2

摘要

枢纽选址问题在大型运输系统和物流环境中起着重要的作用。它在现实世界中的应用引起了许多研究者对这一问题的持续关注。本文将聚类作为一种启发式方法来改进模拟退火算法求解无能力单分配p-hub定位问题的性能。为了更好地说明所提出的基于聚类的模拟退火(CbSA)方法,本文求解了一些数值算例并报道了结果。比较表明,CbSA算法优于经典的USApHLP模拟退火方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A clustering based simulated annealing approach for solving an un-capacitated single allocation p-hub location problem
Hub location problems play main role in large transportation systems and logistic environments. Its applications in real worlds cause that many researchers continue their attentions on this problem. In this paper clustering is applied as a heuristic method to improve the performance of simulated annealing algorithm for solving an un-capacitated single allocation p-hub location problem (USApHLP). For better illustration of the proposed clustering based Simulated Annealing (CbSA) approach, some numerical examples have been solved and the results have been reported in this paper. The comparisons show that CbSA algorithm outperforms the classic simulated annealing approach for the USApHLP.
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