量化乘客水平异质性对过境行程时间的影响

IF 2.4 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Ramandeep Singh, D. Graham, R. Anderson
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引用次数: 1

摘要

在本文中,我们将灵活的数据驱动分析方法应用于大规模轨道交通数据,以确定城市轨道系统工程和运营中需要改进的领域。具体来说,我们使用自动收费(AFC)和自动车辆定位(AVL)系统的数据来获得伦敦地铁上行程时间变化的更精确的驾驶员特征,从而提高对延误的理解。通过概率分配算法对总行程时间进行分解,并进行半参数回归以从网络相关因素中分离出乘客特定旅行特征的影响。对于总行程时间,我们发现网络特征,主要是列车速度和进度,代表了大部分行程时间方差。然而,在通常是两倍繁重的进出时间组件中,乘客层面的异质性更有影响。平均而言,我们发现乘客内部异质性分别占进出时间方差的6%和19%,乘客间效应的影响程度与静态网络特征相似或更大。分析表明,虽然网络特定特征是绝对旅行时间方差的主要驱动因素,但乘客感知方差的很大比例将受到乘客特定特征的影响。研究结果在提高对车站内乘客运动的理解方面具有潜在的应用,例如,该分析可用于评估车站的相对寻路复杂性,这反过来可以指导运输运营商瞄准潜在的干预措施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Quantifying the effects of passenger-level heterogeneity on transit journey times
Abstract In this paper, we apply flexible data-driven analysis methods on large-scale mass transit data to identify areas for improvement in the engineering and operation of urban rail systems. Specifically, we use data from automated fare collection (AFC) and automated vehicle location (AVL) systems to obtain a more precise characterisation of the drivers of journey time variance on the London Underground, and thus an improved understanding of delay. Total journey times are decomposed via a probabilistic assignment algorithm, and semiparametric regression is undertaken to disentangle the effects of passenger-specific travel characteristics from network-related factors. For total journey times, we find that network characteristics, primarily train speeds and headways, represent the majority of journey time variance. However, within the typically twice as onerous access and egress time components, passenger-level heterogeneity is more influential. On average, we find that intra-passenger heterogeneity represents 6% and 19% of variance in access and egress times, respectively, and that inter-passenger effects have a similar or greater degree of influence than static network characteristics. The analysis shows that while network-specific characteristics are the primary drivers of journey time variance in absolute terms, a nontrivial proportion of passenger-perceived variance would be influenced by passenger-specific characteristics. The findings have potential applications related to improving the understanding of passenger movements within stations, for example, the analysis can be used to assess the relative way-finding complexity of stations, which can in turn guide transit operators in the targeting of potential interventions.
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来源期刊
DataCentric Engineering
DataCentric Engineering Engineering-General Engineering
CiteScore
5.60
自引率
0.00%
发文量
26
审稿时长
12 weeks
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