论文标题
近容量城市都市的最佳拥塞控制策略:通过基本图来告知干预措施
Optimal congestion control strategies for near-capacity urban metros: informing intervention via fundamental diagrams
论文作者
论文摘要
拥塞;由于乘客 - 乘客和火车的恶毒循环而导致的运营延误;对于地铁系统来说,这是一个不断升级的问题,因为它从乘客不适到最终的模式转移产生了负面影响。拥堵是由于瓶颈站的大量乘客登机和下车,这可能会导致车站停车的时间增加,因此在上游的火车排队,进一步降低了线路吞吐量,并暗示了乘客在车站上的更多积累。缓解拥堵需要控制策略,例如调节进入瓶颈站的乘客的流入。大规模智能卡和训练移动数据从日常运营的可用性有助于开发模型,这些模型可以以数据驱动的方式为此类策略提供信息。在本文中,我们建议通过经验乘客登机和火车流动关系,此后,基本图(FDS)来模拟站级级别的乘客和乘客。我们强调,使用站级数据估算FD在经验上是充满挑战的,这是由于在不同站点的操作相互依赖性引起的混淆偏见,这掩盖了网络中拥堵的真正拥堵来源。因此,我们采用了一种因果统计建模方法来生产可用于混淆的FD,并且适合适当地为控制策略提供信息。最接近提议的模型的前提是道路交通网络的FD,例如,通过找到最佳操作点来告知交通管理策略。我们对来自大众运输铁路的数据的分析,香港表明在已确定的瓶颈站存在凹入的FD,除非有干预措施,否则拥堵设置的相关临界登机式倾斜度水平。
Congestion; operational delays due to a vicious circle of passenger-congestion and train-queuing; is an escalating problem for metro systems because it has negative consequences from passenger discomfort to eventual mode-shifts. Congestion arises due to large volumes of passenger boardings and alightings at bottleneck stations, which may lead to increased stopping times at stations and consequent queuing of trains upstream, further reducing line throughput and implying an even greater accumulation of passengers at stations. Alleviating congestion requires control strategies such as regulating the inflow of passengers entering bottleneck stations. The availability of large-scale smartcard and train movement data from day-to-day operations facilitates the development of models that can inform such strategies in a data-driven way. In this paper, we propose to model station-level passenger-congestion via empirical passenger boarding-alightings and train flow relationships, henceforth, fundamental diagrams (FDs). We emphasise that estimating FDs using station-level data is empirically challenging due to confounding biases arising from the interdependence of operations at different stations, which obscures the true sources of congestion in the network. We thus adopt a causal statistical modelling approach to produce FDs that are robust to confounding and as such suitable to properly inform control strategies. The closest antecedent to the proposed model is the FD for road traffic networks, which informs traffic management strategies, for instance, via locating the optimum operation point. Our analysis of data from the Mass Transit Railway, Hong Kong indicates the existence of concave FDs at identified bottleneck stations, and an associated critical level of boarding-alightings above which congestion sets-in unless there is an intervention.