Quantifying out-of-station waiting time in oversaturated urban metro systems

IF 12.5 Q1 TRANSPORTATION
Kangli Zhu , Zhanhong Cheng , Jianjun Wu , Fuya Yuan , Lijun Sun
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引用次数: 5

Abstract

Metro systems in megacities such as Beijing, Shenzhen, and Guangzhou are under great passenger demand pressure. During peak hours, it is common to see oversaturated conditions (i.e., passenger demand exceeds network capacity) and a popular control intervention is to restrict the entering rate by setting up out-of-station queueing with crowd control barriers. The out-of-station waiting can make up a substantial proportion of total travel time but is often ignored in the literature. Quantifying out-of-station waiting is important to evaluating the social benefit and cost of metro services; however, out-of-station waiting is difficult to estimate because it leaves no trace in smart card transactions of metros. In this study, we estimate the out-of-station waiting time by leveraging the information from a small group of transfer passengers—those who transfer from nearby bus routes to the metro station. Based on the transfer interval of this small group, we infer the out-of-station waiting time for all passengers by a Gaussian Process regression and then use the estimated out-of-station waiting time to build queueing diagrams. We apply our method to the Tiantongyuan North station of Beijing metro; results show that the maximum out-of-station waiting time can reach 15 ​min, and the maximum queue length can be over 3000 passengers. We find out-of-station waiting can cause significant travel costs and thus should be considered in analyzing transit performance, mode choice, and social benefits. To the best of our knowledge, this paper is the first quantitative study for out-of-station waiting time.

过饱和城市地铁系统出站等待时间的量化
北京、深圳和广州等特大城市的地铁系统承受着巨大的乘客需求压力。在高峰时段,经常会看到过饱和的情况(即乘客需求超过网络容量),一种流行的控制干预措施是通过设置有人群控制屏障的站外排队来限制进入率。站外等待时间占总旅行时间的很大一部分,但在文献中往往被忽视。车站外候车量的量化对评价地铁服务的社会效益和成本具有重要意义;但是,站外等待在地铁的智能卡交易中没有留下任何痕迹,因此难以估计。在本研究中,我们通过利用一小群换乘乘客的信息来估计出站外等待时间,这些乘客是从附近的公交路线换乘到地铁站的。根据这一小群乘客的换乘间隔,通过高斯过程回归推断出所有乘客的出站等待时间,然后利用估计出的出站等待时间构建排队图。将该方法应用于北京地铁天通苑北站;结果表明,该系统最大出站等待时间可达15 min,最大排队长度可超过3000人次。我们发现站外等待会造成巨大的出行成本,因此在分析公交性能、模式选择和社会效益时应予以考虑。据我们所知,本文是首次对出站等待时间进行定量研究。
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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CiteScore
15.20
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0.00%
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