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Natural Optimization Algorithms for the Cross-Dock Door Assignment Problem

机译:跨坞门分配问题的自然优化算法

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摘要

Cross-docking is a practice in logistics in which shipments are directly moved from an inbound truck into an outbound truck. A recognized problem in this domain is the assignment of trucks to doors in a way that the distance to be traveled between the doors is minimized. This problem is known as the cross-dock door assignment problem (CDAP). The purpose of this paper is to present a novel algorithm that minimizes the traveling distance of the handling machines when moving cargo from an inbound truck to an outbound truck. A lot of research has been conducted regarding this topic; still, up to our knowledge, none used scatter search (SS). This paper modifies a classical mathematical model that represents the CDAP and implements an evolutionary metaheuristic SS algorithm and tests it and then compares the results with those of another evolutionary algorithm, i.e., genetic algorithm (GA). The results indicate that the SS algorithm outperformed the GA, particularly for large-sized problems with a diverse reference set.
机译:交叉对接是物流中的一种做法,其中,将货物直接从入站卡车转移到出站卡车。在该领域中公认的问题是将卡车分配给门,以使门之间的行进距离最小。此问题称为跨坞门分配问题(CDAP)。本文的目的是提出一种新颖的算法,该算法可在将货物从入站卡车运至出站卡车时最小化装卸机的行进距离。关于这个话题已经进行了很多研究。据我们所知,仍然没有人使用散点搜索(SS)。本文修改了代表CDAP的经典数学模型,并实现了进化的元启发式SS算法并对其进行了测试,然后将结果与另一种进化算法(即遗传算法)的结果进行了比较。结果表明,SS算法优于GA算法,尤其是对于具有多种参考集的大型问题。

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