Approximating rolling stock rotations with integrated predictive maintenance

IF 2.6 Q3 TRANSPORTATION
Felix Prause, Ralf Borndörfer, Boris Grimm, Alexander Tesch
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引用次数: 0

Abstract

We study the solution of the rolling stock rotation problem with predictive maintenance (RSRP-PdM) by an iterative refinement approach that is based on a state-expanded event-graph. In this graph, the states are parameters of a failure distribution, and paths correspond to vehicle rotations with associated health state approximations. An optimal set of paths including maintenance can be computed by solving an integer linear program. Afterwards, the graph is refined and the procedure repeated. An associated linear program gives rise to a lower bound that can be used to determine the solution quality. Computational results for six instances derived from real-world timetables of a German railway company are presented. The results show the effectiveness of the approach and the quality of the solutions.

利用综合预测性维护估算机车车辆轮换率
我们通过一种基于状态扩展事件图的迭代改进方法,研究了具有预测性维护功能的机车车辆轮换问题(RSRP-PdM)的解决方案。在这个图中,状态是故障分布的参数,路径对应于车辆轮换和相关的健康状态近似值。通过求解整数线性程序,可以计算出包括维护在内的最优路径集。之后,对图形进行细化,并重复上述过程。相关的线性程序会产生一个下限,可用于确定解决方案的质量。本文介绍了从德国一家铁路公司的实际时刻表中提取的六个实例的计算结果。结果显示了该方法的有效性和解决方案的质量。
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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