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Tabu assisted guided local search approaches for freight service network design

机译:禁忌辅助的本地搜索引导货运服务网络设计方法

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The service network design problem (SNDP) is a core problem in freight transportation. It involves the determination of the most cost-effective transportation network and the characteristics of the corresponding services, subject to various constraints. The scale of the problem in real-world applications is usually very large, especially when the network contains both the geographical information and the temporal constraints which are necessary for modelling multiple service-classes and dynamic events. The development of time-efficient algorithms for this problem is, therefore, crucial for successful real-world applications. Earlier research indicated that guided local search (GLS) was a promising solution method for this problem. One of the advantages of GLS is that it makes use of both the information collected during the search as well as any special structures which are present in solutions. Building upon earlier research, this paper carries out in-depth investigations into several mechanisms that could potentially speed up the GLS algorithm for the SNDP. Specifically, the mechanisms that we have looked at in this paper include a tabu list (as used by tabu search), short-term memory, and an aspiration criterion. An efficient hybrid algorithm for the SNDP is then proposed, based upon the results of these experiments. The algorithm combines a tabu list within a multi-start GLS approach, with an efficient feasibility-repairing heuristic. Experimental tests on a set of 24 well-known service network design benchmark instances have shown that the proposed algorithm is superior to a previously proposed tabu search method, reducing the computation time by over a third. In addition, we also show that far better results can be obtained when a faster linear program solver is adopted for the sub-problem solution. The contribution of this paper is an efficient algorithm, along with detailed analyses of effective mechanisms which can help to increase the speed of the GLS algorithm for the SNDP.
机译:服务网络设计问题(SNDP)是货运中的核心问题。在各种约束下,它涉及确定最具成本效益的运输网络和相应服务的特征。在实际应用中,问题的规模通常非常大,尤其是当网络同时包含地理信息和时间约束时,这是对多个服务类别和动态事件进行建模所必需的。因此,针对此问题开发省时的算法对于成功的实际应用至关重要。早期的研究表明,引导本地搜索(GLS)是解决该问题的一种有前途的解决方法。 GLS的优点之一是,它利用了搜索过程中收集的信息以及解决方案中存在的任何特殊结构。在早期研究的基础上,本文对可能会加快SNDP的GLS算法的几种机制进行了深入研究。具体来说,我们在本文中研究的机制包括禁忌列表(禁忌搜索所使用的),短期记忆和期望标准。根据这些实验的结果,提出了一种有效的SNDP混合算法。该算法将禁忌列表与多启动GLS方法结合在一起,并具有有效的可行性修复启发式方法。在一组24个著名的服务网络设计基准实例上进行的实验测试表明,该算法优于先前提出的禁忌搜索方法,将计算时间减少了三分之一以上。此外,我们还表明,对于子问题解决方案采用更快的线性程序求解器,可以获得更好的结果。本文的贡献是一种有效的算法,并对有效机制进行了详细分析,可以帮助提高SNDP的GLS算法的速度。

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