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首页> 外文期刊>Journal of Intelligent Transportation Systems >Using Data From the Web to Predict Public Transport Arrivals Under Special Events Scenarios
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Using Data From the Web to Predict Public Transport Arrivals Under Special Events Scenarios

机译:在特殊事件情况下使用网络数据预测公共交通工具的到来

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摘要

The Internet has become the preferred resource to announce, search, and comment about social events such as concerts, sports games, parades, demonstrations, sales, or any other public event that potentially gathers a large group of people. These planned special events often carry a potential disruptive impact to the transportation system, because they correspond to nonhabitual behavior patterns that are hard to predict and plan for. Except for very large and mega events (e.g., Olympic games, football world cup), operators seldom apply special planning measures for two major reasons: The task of manually tracking which events are happening in large cities is labor-intensive; and, even with a list of events, their impact is hard to estimate, especially when more than one event happens simultaneously. In this article, we utilize the Internet as a resource for contextual information about special events and develop a model that predicts public transport arrivals in event areas. In order to demonstrate the feasibility of this solution for practitioners, we apply off-the-shelf techniques both for Internet data collection and for the prediction model development. We demonstrate the results with a case study from the city-state of Singapore using public transport tap-in/tap-out data and local event information obtained from the Internet.
机译:互联网已成为首选的资源,用于发布,搜索和评论有关社交事件的信息,例如音乐会,体育比赛,游行,示威,销售或任何其他可能聚集大量人群的公共事件。这些计划好的特殊事件通常会对运输系统造成潜在的破坏性影响,因为它们对应于难以预测和计划的非习惯性行为模式。除大型和大型事件(例如奥运会,足球世界杯)外,运营商很少采用特殊的计划措施,主要有两个原因:手动跟踪大城市发生的事件的劳动强度大;而且,即使有一系列事件,其影响也难以估计,尤其是当多个事件同时发生时。在本文中,我们将Internet用作有关特殊事件的上下文信息的资源,并开发一个模型来预测事件区域的公共交通工具到达。为了向从业者证明此解决方案的可行性,我们将现成的技术应用于Internet数据收集和预测模型开发。我们使用来自新加坡的城市州的案例研究,使用公共交通的出入/出入数据和从互联网获得的本地事件信息来证明结果。

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