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PULSE: A Real Time System for Crowd Flow Prediction at Metropolitan Subway Stations

机译:脉冲:大都市地铁站人群流动预测的实时系统

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The fast pace of urbanization has given rise to complex transportation networks, such as subway systems, that deploy smart card readers generating detailed transactions of mobility. Predictions of human movement based on these transaction streams represents tremendous new opportunities from optimizing fleet allocation of on-demand transportation such as UBER and LYFT to dynamic pricing of services. However, transportation research thus far has primarily focused on tackling other challenges from traffic congestion to network capacity. To take on this new opportunity, we propose a real-time framework, called PULSE (Prediction Framework For Usage Load on Subway SystEms), that offers accurate multi-granular arrival crowd flow prediction at subway stations. PULSE extracts and employs two types of features such as streaming features and station profile features. Streaming features are time-variant features including time, weather, and historical traffic at subway stations (as time-series of arrival/departure streams), where station profile features capture the time-invariant unique characteristics of stations, including each station's peak hour crowd flow, remoteness from the downtown area, and mean flow. Then, given a future prediction interval, we design novel stream feature selection and model selection algorithms to select the most appropriate machine learning models for each target station and tune that model by choosing an optimal subset of stream traffic features from other stations. We evaluate our PULSE framework using real transaction data of 11 million passengers from a subway system in Shenzhen, China. The results demonstrate that PULSE greatly improves the accuracy of predictions at all subway stations by up to 49 % over baseline algorithms.
机译:城市化的快速速度使复杂的交通网络(如地铁系统)带来了部署了智能卡读者,从而生成了移动性的详细交易。基于这些交易流的人体运动的预测代表了优化舰队分配的巨大新的机会,例如优步和Lyft以动态服务定价。然而,迄今为止的交通研究主要集中在与交通拥堵到网络容量中解决其他挑战。要采取这个新机会,我们提出了一个被称为脉冲的实时框架(地铁系统上使用量负荷的预测框架),在地铁站提供了准确的多粒度到达人群流量预测。脉冲提取物并采用两种类型的特征,例如流特征和站型材特征。流特征是时变特征,包括地铁站的时间,天气和历史流量(作为抵达/离开流的时间序列),其中站简介特征捕获了站点的时间不变的独特特征,包括每个站的高峰时段人群流动,从市中心区域的偏远,平均流动。然后,给定未来的预测间隔,我们设计新的流特征选择和模型选择算法,为每个目标站选择最合适的机器学习模型,并通过选择来自其他站的流量特征的最佳子集来调谐该模型。我们使用来自中国深圳的地铁系统的1.00万乘客的真实交易数据评估我们的脉搏框架。结果表明,脉冲大大提高了所有地铁站的预测的准确性,通过基线算法高达49%。

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