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Real-Time and Predictive Analytics for Smart Public Transportation Decision Support System

机译:智能公共交通决策支持系统的实时和预测分析

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Public bus transit plays an important role in city transportation infrastructure. However, public bus transit is often difficult to use because of lack of real- time information about bus locations and delay time, which in the presence of operational delays and service alerts makes it difficult for riders to predict when buses will arrive and plan trips. Precisely tracking vehicle and informing riders of estimated times of arrival is challenging due to a number of factors, such as traffic congestion, operational delays, varying times taken to load passengers at each stop. In this paper, we introduce a public transportation decision support system for both short-term as well as long-term prediction of arrival bus times. The system uses streaming real-time bus position data, which is updated once every minute, and historical arrival and departure data - available for select stops to predict bus arrival times. Our approach combines clustering analysis and Kalman filters with a shared route segment model in order to produce more accurate arrival time predictions. Experiments show that compared to the basic arrival time prediction model that is currently being used by the city, our system reduces arrival time prediction errors by 25% on average when predicting the arrival delay an hour ahead and 47% when predicting within a 15 minute future time window.
机译:公共巴士在城市交通基础设施中起着重要作用。但是,由于缺乏有关公交车位置和延误时间的实时信息,公共公交通常很难使用,这在存在操作延误和服务警报的情况下,使骑车人很难预测公交车何时到达并计划行程。由于许多因素,例如交通拥堵,操作延迟,在每个站点上载乘客的时间不同,精确地跟踪车辆并向乘客告知估计的到达时间具有挑战性。在本文中,我们介绍了一种公共交通决策支持系统,可用于短期和长期预测到达公交车的时间。该系统使用实时实时公交车位置数据流(每分钟更新一次)以及历史到达和离开数据-可用于选定的站点以预测公交车到达时间。我们的方法将聚类分析和卡尔曼滤波器与共享的路段模型相结合,以产生更准确的到达时间预测。实验表明,与城市目前使用的基本到达时间预测模型相比,我们的系统在预测提前一个小时的到达延迟时将到达时间预测误差平均降低了25%,而在未来15分钟之内进行预测时,平均误差则降低了47%时间窗口。

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