Grace Mukunzi , Emil Jansson , Carl-William Palmqvist
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引用次数: 0
摘要
铁路事故会影响正点率和运力。随着运输量的增加,这些事故的发生频率预计也会增加,原因是资产利用率提高、维护时间减少,以及气候变化进一步加剧。这凸显了高效事故管理和纠正性维护的重要性。本研究采用探索性数据分析和随机森林回归相结合的方法来研究恢复时间--纠正性维护的关键分界线。研究使用瑞典铁路网的数据,调查了修复时间的驱动因素。研究发现,维修承包商和事故类型(包括维修行动、故障原因和同时发生的事故数量)对修复时间的影响最大。天气参数只在超过标记的临界值时才显示出明显的影响(包括直接和间接影响)。对于瑞典铁路网而言,这些阈值分别为 -20 °C 和 23 °C 的最高日气温、18 毫米的最大日降水量以及 20 米/秒的最大风速。降水和风速的直接影响分别在 50 毫米和 35 米/秒之后变得更加突出。了解影响恢复时间的因素有助于设计纠正性维护方案。此外,本研究采用的方法还可适用于其他铁路网络。
Railway incidents undermine both punctuality and capacity. As traffic volumes increase, the frequency of these incidents is also expected to increase, driven by higher asset utilization, reduced time for maintenance, and further worsened by climate change. This highlights the importance of efficient incident management and corrective maintenance. This study uses a combination of exploratory data analysis and random forest regression to investigate restoration time − a key delimiter of corrective maintenance. Using data from the Swedish railway network, the study investigates the driving factors of restoration times. The maintenance contractor and the type of incident including repair action, failure cause, and the number of concurrent incidents were found to have the highest influence on restoration times respectively. Weather parameters only show discernible influence (both direct and indirect influence) beyond marked thresholds. For the Swedish railway network, these thresholds are −20 °C and 23 °C maximum daily temperatures, 18 mm maximum daily precipitation, and 20 m/s maximum windspeed. Precipitation’s and windspeed’s direct effects become more prominent beyond 50 mm and 35 m/s respectively. An understanding of the factors influencing restoration times informs the process of designing corrective maintenance protocols. Moreover, the method used in this study can be adapted to other railway networks.