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Real time transit demand prediction capturing station interactions and impact of special events

机译:实时交通需求预测,捕获站之间的相互作用以及特殊事件的影响

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Demand for public transportation is highly affected by passengers’ experience and the level of service provided. Thus, it is vital for transit agencies to deploy adaptive strategies to respond to changes in demand or supply in a timely manner, and prevent unwanted deterioration in service quality. In this paper, a real time prediction methodology, based on univariate and multivariate state-space models, is developed to predict the short-term passenger arrivals at transit stations. A univariate state-space model is developed at the station level. Through a hierarchical clustering algorithm with correlation distance, stations with similar demand patterns are identified. A dynamic factor model is proposed for each cluster, capturing station interdependencies through a set of common factors. Both approaches can model the effect of exogenous events (such as football games). Ensemble predictions are then obtained by combining the outputs from the two models, based on their respective accuracy. We evaluate these models using data from the 32 stations on the Central line of the London Underground (LU), operated by Transport for London (TfL). The results indicate that the proposed methodology performs well in predicting short-term station arrivals for the set of test days. For most stations, ensemble prediction has the lowest mean error, as well as the smallest range of error, and exhibits more robust performance across the test days.
机译:对公共交通的需求在很大程度上受到乘客的经验和所提供服务水平的影响。因此,对于运输机构而言,部署自适应策略以及时响应需求或供应变化,并防止服务质量出现意外恶化至关重要。在本文中,开发了一种基于单变量和多变量状态空间模型的实时预测方法,以预测公交车站的短期旅客到达量。在站级开发了单变量状态空间模型。通过具有相关距离的分层聚类算法,可以识别具有相似需求模式的站点。为每个集群提出了一个动态因素模型,通过一组公共因素捕获了站点之间的相互依赖性。两种方法都可以模拟外部事件(例如足球比赛)的影响。然后,根据两个模型各自的精度,通过组合两个模型的输出来获得整体预测。我们使用来自伦敦地铁(TfL)运营的伦敦地铁(LU)中线32个站点的数据评估这些模型。结果表明,所提出的方法可以很好地预测一组测试日的短期车站到达。对于大多数测站,总体预测具有最低的平均误差以及最小的误差范围,并且在整个测试日内表现出更强大的性能。

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