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Passenger arrival and waiting time distributions dependent on train service frequency and station characteristics: A smart card data analysis

机译:取决于火车服务频率和车站特性的乘客到达和等待时间分布:智能卡数据分析

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摘要

Waiting time at public transport stops is perceived by passengers to be more onerous than in vehicle time, hence it strongly influences the attractiveness and use of public transport. Transport models traditionally assume that average waiting times are half the service headway by assuming random passenger arrivals. However, research agree that two distinct passenger behaviour types exist: one group arrives randomly, whereas another group actively tries to minimise their waiting time by arriving in a timely manner at the scheduled departure time. This study proposes a general framework for estimating passenger waiting times which incorporates the arrival patterns of these two groups explicitly, namely by using a mixture distribution consisting of a uniform and a beta distribution. The framework is empirically validated using a large-scale automatic fare collection system from the Greater Copenhagen Area covering metro, suburban, and regional rail stations thereby giving a range of service headways from 2 to 60 min. It was shown that the proposed mixture distribution is superior to other distributions proposed in the literature. This can improve waiting time estimations in public transport models. The results show that even at 5-min headways 43% of passengers arrive in a timely manner to stations when timetables are available. The results bear important policy implications in terms of providing actual timetables, even at high service frequencies, in order for passengers to be able to minimise their waiting times.
机译:乘客认为在公共交通车站的等候时间比在车辆上的等候时间更为繁重,因此,这极大地影响了公共交通的吸引力和使用率。传统上,运输模型通过假设随机乘客到达来假设平均等待时间是服务进展的一半。但是,研究一致认为存在两种不同的乘客行为类型:一组随机到达,而另一组通过在预定的起飞时间及时到达,积极地尝试将等待时间降到最低。这项研究提出了一个估计乘客等待时间的通用框架,该框架明确地结合了这两个群体的到达模式,即通过使用由均匀分布和beta分布组成的混合分布。该框架使用来自大哥本哈根地区的大型自动票价收集系统进行了实证验证,该系统涵盖了地铁,郊区和区域火车站,因此服务范围为2分钟至60分钟。结果表明,提出的混合物分布优于文献中提出的其他分布。这可以改善公共交通模型中的等待时间估计。结果表明,即使有5分钟的路程,也有43%的乘客在有时间表的情况下及时到达车站。该结果在提供实际时刻表(甚至在高服务频率下)方面也具有重要的政策含义,以使乘客能够最大程度地减少其等待时间。

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