Transit operators need vulnerability measures to understand the level of service degradation under disruptions. This paper contributes to the literature with a novel causal inference approach for estimating station-level vulnerability in metro systems. The empirical analysis is based on large-scale data on historical incidents and population-level passenger demand. This analysis thus obviates the need for assumptions made by previous studies on human behaviour and disruption scenarios. We develop four empirical vulnerability metrics based on the causal impact of disruptions on travel demand, average travel speed and passenger flow distribution. Specifically, the proposed metrics based on the irregularity in passenger flow distribution extends the scope of vulnerability measurement to the entire trip distribution, instead of just analysing the disruption impact on the entry or exit demand (that is, moments of the trip distribution). The unbiased estimates of disruption impact are obtained by adopting a propensity score matching method, which adjusts for the confounding biases caused by non-random occurrence of disruptions. An application of the proposed framework to the London Underground indicates that the vulnerability of a metro station depends on the location, topology, and other characteristics. We find that, in 2013, central London stations are more vulnerable in terms of travel demand loss. However, the loss of average travel speed and irregularity in relative passenger flows reveal that passengers from outer London stations suffer from longer individual delays due to lack of alternative routes.
翻译:本文为文献提供了一种新颖的因果推断方法,用以估计地铁系统中站一级的脆弱性。经验分析基于历史事件和人口需求方面的大规模数据。这一分析因此避免了对以往人类行为和混乱情况研究所作的假设的必要性。我们根据对旅行需求、平均旅行速度和客流分布的干扰造成的因果影响,制定了四项经验脆弱性衡量标准。具体地说,根据旅客流动分布不规则性的拟议衡量标准将脆弱性衡量范围扩大到整个旅行分配,而不是仅仅分析对出入境需求(即旅行分配时间)的中断影响。通过采用一种适应性比对方法,对干扰影响作出不偏不倚的估计,该方法根据非随机性干扰事件造成的可弥合的偏差进行调整。对伦敦地下拟议框架的应用表明,地铁站的脆弱性取决于地点、地形和其他特征。我们发现,2013年,伦敦中心站在旅行需求方面受到的干扰程度更大,而旅行需求则因旅行路线的不规则性下降而导致。然而,由于旅行路线的不规则性下降,因此,由于旅行路线的相对速度下降。