Optimal resource rescheduling in classification yards considering flexible skill patterns

IF 2.6 Q3 TRANSPORTATION
Henning Preis , Tobias Pollehn , Moritz Ruf
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引用次数: 0

Abstract

Classification yards represent network nodes in the single-wagonload transport system. The processes are complex due to a high number of involved resources and restrictive dependencies. Decisions on job sequencing and resource allocation have a major impact on outbound delays and thus on the quality of service in the network. Due to permanent updates of arrival times and resource availabilities, a constant revision of decisions is necessary. In many cases, considering multiple qualifications of the personnel is crucial for efficient operations. This paper presents an approach for the rescheduling of processes and the assignment of resources in classification yards, which allows to determine best working schedules based on current data such that the cumulative outbound delay of all trains is minimized. Therefore, the paper presents a mixed integer program that includes all essential components (tracks, locomotives and personnel with individual skill patterns). For the real-time capable solution of the optimization problem, four different heuristic approaches based on priority rules are presented. The performance of these approaches is evaluated by a gap analysis with respect to the solutions found by CPLEX. For this purpose, real example data of an operation day of a large classification yard in Germany are used.

考虑灵活技能模式的船级社资源调度优化
分类码表示单一车辆运输系统中的网络节点。由于涉及大量的资源和限制性的依赖关系,这些过程非常复杂。关于作业顺序和资源分配的决策对出站延迟有重大影响,从而对网络中的服务质量有重大影响。由于到达时间和资源可用性的永久更新,有必要不断修订决策。在许多情况下,考虑人员的多重资质对于高效运营至关重要。本文提出了一种在分类场重新安排流程和分配资源的方法,该方法允许根据当前数据确定最佳工作时间表,从而最大限度地减少所有列车的累计出站延误。因此,本文提出了一个混合整数程序,该程序包括所有必要的组成部分(轨道、机车和具有个人技能模式的人员)。对于优化问题的实时性求解,提出了四种基于优先级规则的启发式方法。通过对CPLEX发现的解决方案进行差距分析来评估这些方法的性能。为此,使用了德国大型分类场运营日的真实示例数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
7.10
自引率
8.10%
发文量
41
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