论文标题
将旅行行为规律性纳入乘客流量预测
Incorporating travel behavior regularity into passenger flow forecasting
论文作者
论文摘要
准确的乘客流量预测(即乘客)对于城市地铁系统的运营至关重要。先前的研究主要是通过汇总单个旅行,然后根据过去几个步骤进行预测来模拟乘客流量作为时间序列。但是,这种方法实质上忽略了以下事实:乘客流由每个旅行者的旅行组成。例如,早上旅行者的工作旅行可以帮助预测他/她晚上的家庭旅行,而这种因果结构不能在标准时间序列模型中明确编码。在本文中,我们通过将生成机制纳入标准时间序列模型并利用植根于旅行行为的强规性,提出了一个新的预测框架,用于登机流程。在此过程中,我们引入了从以前的下车旅行作为新协变量的返回流,该协变量捕获了基于旅行行为的乘客流量数据中的因果结构和远距离依赖性。我们开发回报概率平行四边形(RPP)来汇总因果关系并估算回报流。使用现实世界中的乘客流数据评估了所提出的框架,结果证实,返回流(单个协变量)可以基本而始终如一地改善各种预测任务,包括一步提前预测,多步骤的预测,并在特殊事件下进行预测。所提出的方法对于大多数乘客在同一天返回的商业型电视台更有效。这项研究可以扩展到其他运输方式,并且还为一般需求时间序列预测问题提供了新的启示,其中因果结构和长期依赖性是由用户行为产生的。
Accurate forecasting of passenger flow (i.e., ridership) is critical to the operation of urban metro systems. Previous studies mainly model passenger flow as time series by aggregating individual trips and then perform forecasting based on the values in the past several steps. However, this approach essentially overlooks the fact that passenger flow consists of trips from each individual traveler. For example, a traveler's work trip in the morning can help predict his/her home trip in the evening, while this causal structure cannot be explicitly encoded in standard time series models. In this paper, we propose a new forecasting framework for boarding flow by incorporating the generative mechanism into standard time series models and leveraging the strong regularity rooted in travel behavior. In doing so, we introduce returning flow from previous alighting trips as a new covariate, which captures the causal structure and long-range dependencies in passenger flow data based on travel behavior. We develop the return probability parallelogram (RPP) to summarize the causal relationships and estimate the return flow. The proposed framework is evaluated using real-world passenger flow data, and the results confirm that the returning flow -- a single covariate -- can substantially and consistently improve various forecasting tasks, including one-step ahead forecasting, multi-step ahead forecasting, and forecasting under special events. And the proposed method is more effective for business-type stations with most passengers come and return within the same day. This study can be extended to other modes of transport, and it also sheds new light on general demand time series forecasting problems, in which causal structure and long-range dependencies are generated by the user behavior.