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The multi-commodity network flow problem with soft transit time constraints: Application to liner shipping

机译:软传输时间约束的多商品网络流量问题:衬里运输的应用

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The multi-commodity network flow problem (MCNF) consists in routing a set of commodities through a capacitated network at minimum cost and is relevant for routing containers in liner shipping networks. As commodity transit times are often a critical factor, the literature has introduced hard limits on commodity transit times. In practical contexts, however, these hard limits may fail to provide sufficient flexibility since routes with even tiny delays would be discarded. Motivated by a major liner shipping operator, we study an MCNF generalization where transit time restrictions are modeled as soft constraints, in which delays are discouraged using penalty functions of transit time. Similarly, early commodity arrivals can receive a discount in cost. We derive properties that distinguish this model from other MCNF variants and adapt a column generation procedure to efficiently solve it. Extensive numerical experiments conducted on realistic liner shipping instances reveal that the explicit consideration of penalty functions can lead to significant cost reductions compared to hard transit time deadlines. Moreover, the penalties can be used to steer the flow towards slower or faster configurations, resulting in a potential increase in operational costs, which generates a trade-off that we quantify under varying penalty functions.
机译:多商品网络流问题(MCNF)包括以最小成本通过电容网络路由一组商品,并且对于划线运输网络中的路由容器是相关的。随着商品过境时间往往是一个关键因素,文献引入了商品过境时间的硬限制。然而,在实际情况下,这些硬限制可能无法提供足够的灵活性,因为甚至延迟延迟的路线将被丢弃。由主要衬里运输运营商的动机,我们研究了MCNF泛化,其中传输时间限制被建模为软限制,其中使用运输时间的惩罚功能来鼓励延迟。同样,早期商品到货可以成本折扣。我们从其他MCNF变体区分此模型的属性并调整列生成过程以有效地解决。在现实划线运输实例上进行的广泛数值实验表明,与硬途运输时间截止日期相比,明确考虑惩罚功能可能导致重大成本降低。此外,可以使用惩罚来转向较慢或更快的配置的流程,从而导致运营成本的潜在增加,这产生了我们在不同惩罚功能下量化的权衡。

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