Dynamic Integration of Heterogeneous Transportation Modes under Disruptive Events

Yukun Yuan, Desheng Zhang, Fei Miao, J. Stankovic, T. He, George J. Pappas, Shan Lin
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引用次数: 6

Abstract

An integrated urban transportation system usually consists of multiple transport modes that have complementary characteristics of capacities, speeds, and costs, facilitating smooth passenger transfers according to planned schedules. However, such an integration is not designed to operate under disruptive events, e.g., a signal failure at a subway station or a breakdown of a bus, which have rippling effects on passenger demand and significantly increase delays. To address these disruptive events, current solutions mainly rely on a substitute service to transport passengers from and to affected areas using ad-hoc schedules and static routes, e.g., sending shuttles to closed subway stations. These solutions are highly inefficient and do not utilize real-time data to estimate dynamic passenger demand. To fully utilize heterogeneous transportation systems under disruptive events, we design a service called eRoute based on a hierarchical receding horizon control framework to automatically reroute, reschedule, and reallocate multi-mode transportation systems based on real-time and predicted demand and supply. Focusing on an integration of subway and bus, we implement and evaluate eRoute with large datasets including (i) a bus system with 13,000 buses, (ii) a subway system with 127 subway stations, (iii) an automatic fare collection system with a total of 16,840 readers and 8 million card users from a metropolitan city. The data-driven evaluation results show that our solution improves the ratio of served passengers (RSP) by up to 11.5 times and reduces the average traveling time by up to 82.1% compared with existing solutions.
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破坏性事件下异质运输模式的动态集成
一个综合的城市交通系统通常由多种运输方式组成,这些运输方式在容量、速度和成本方面具有互补的特点,便于乘客按照计划的时间表顺利转移。然而,这种整合并不适用于破坏性事件,例如地铁站的信号故障或公共汽车故障,这些事件会对乘客需求产生连锁反应,并显著增加延误。为了应对这些破坏性事件,目前的解决方案主要依赖于使用临时时间表和静态路线将乘客运送到受影响地区的替代服务,例如向关闭的地铁站发送班车。这些解决方案效率非常低,并且没有利用实时数据来估计动态乘客需求。为了充分利用异构运输系统,我们设计了一种基于分层后退地平线控制框架的eRoute服务,可以根据实时和预测的需求和供应自动重新规划、重新调度和重新分配多模式运输系统。专注于地铁和公交的整合,我们使用大型数据集实施和评估了eRoute,其中包括(i)拥有13,000辆公交车的公交系统,(ii)拥有127个地铁站的地铁系统,(iii)拥有16,840个读卡器和800万张大都市卡用户的自动收费系统。数据驱动的评估结果表明,与现有解决方案相比,我们的解决方案将服务乘客比率(RSP)提高了11.5倍,平均旅行时间缩短了82.1%。
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