铁路事故对列车延误的影响:瑞典铁路网案例

Grace Mukunzi, Carl-William Palmqvist
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引用次数: 0

摘要

随着铁路运输模式份额的大幅增加,一个可以预见的挑战将是如何保证准点率。列车运行量的增加将导致时刻表对中断更加敏感;鉴于资产利用率的提高和气候变化,预计中断的严重程度和频率也将增加。这就要求对事故与列车延误之间的关系有一个明确的认识,这是制定稳健的时刻表和中断管理策略的前提。在本文中,我们提出了一个量化铁路事故对列车延误影响的新框架。我们以瑞典铁路网为例,比较了不同事故对列车延误的影响。延误的影响被定义为事故率、暴露率、延误率和每次事故的历史平均延误分钟数的一个因子。我们还开发了一个逻辑模型,用于估算任何列车在发生故障时的延误概率。轨道上的积雪被认为是最关键的因素,会导致每列列车归一化延误分钟数最多,单列列车延误几率增加最大。建议的框架和方法可应用于其他网络。
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The impact of railway incidents on train delays: A case of the Swedish Railway Network

A foreseeable challenge with a substantial increase in railway mode share will be how to uphold punctuality. Higher volumes of train traffic will result in timetables that are more sensitive to disruptions; whose severity and frequency is also expected to increase in light of greater asset utilization and climate change. This calls for a definitive understanding of the relationship between incidents and train delays as a prerequisite to developing robust timetables and disruption management strategies. In this paper we propose a novel framework for quantifying the impact of railway incidents on train delays. Using a case of the Swedish Railway Network, we compare the impact of different incidents on train delays. The impact of delay is defined as a factor of the incident rate, exposure rate, delay rate and historical average delay minutes per incident. A logistic model that estimates the probability of delay for any train, in the event of a failure, is also developed. Snow on track was established as most critical, resulting in the highest normalized delay minutes per train and the largest increase in the odds of delay for individual trains. The proposed framework & approach can be applied to other networks.

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来源期刊
CiteScore
7.10
自引率
8.10%
发文量
41
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