Many special events, including sport games and concerts, often cause surges in demand and congestion for transit systems. Therefore, it is important for transit providers to understand their impact on disruptions, delays, and fare revenues. This paper proposes a suite of data-driven techniques that exploit Automated Fare Collection (AFC) data for evaluating, anticipating, and managing the performance of transit systems during recurring congestion peaks due to special events. This includes an extensive analysis of ridership of the two major stadiums in downtown Atlanta using rail data from the Metropolitan Atlanta Rapid Transit Authority (MARTA). The paper first highlights the ridership predictability at the aggregate level for each station on both event and non-event days. It then presents an unsupervised machine-learning model to cluster passengers and identify which train they are boarding. The model makes it possible to evaluate system performance in terms of fundamental metrics such as the passenger load per train and the wait times of riders. The paper also presents linear regression and random forest models for predicting ridership that are used in combination with historical throughput analysis to forecast demand. Finally, simulations are performed that showcase the potential improvements to wait times and demand matching by leveraging proposed techniques to optimize train frequencies based on forecasted demand.
翻译:许多特别活动,包括体育比赛和音乐会,往往导致过境系统的需求和拥堵,因此,过境供应商必须了解它们对中断、延误和票价收入的影响,本文件提出一套数据驱动技术,利用自动票价收集(AFC)数据来评价、预测和管理交通系统因特别活动而反复出现的交通拥堵高峰期间的运行情况,其中包括利用大都会亚特兰大快速交通管理局(MARTA)的铁路数据,对亚特兰大市两个主要体育场的骑手情况进行广泛分析。文件首先着重说明每个火车站在活动和非活动日中的总水平上的骑手可预测性,然后向乘客提供不受监督的机器学习模型,确定他们正在登机的火车。模型使得有可能从基本标准(如每列车载客载重和车候车时间等)的角度评价系统运行情况。文件还介绍了预测骑车情况的线回归和随机森林模型,这些模型与历史过量分析相结合,用于预测需求。最后,通过模拟,根据预测的方式展示了预测的预测需求的潜在改进速度,从而优化了预测需求。