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Online monitoring of local taxi travel momentum and congestion effects using projections of taxi GPS-based vector fields

机译:使用基于出租车GPS的矢量字段的预测,在线监测当地出租车旅行势头和拥塞效果

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Ubiquitous taxi trajectory data has made it possible to apply it to different types of travel analysis. Of interest is the need to allow someone to monitor travel momentum and associated congestion in any location in space in real time. However, despite an abundant literature in taxi data visualization and its applicability to travel analysis, no easy method exists. To measure taxi travel momentum at a location, current methods require filtering taxi trajectories that stop at a location at a particular time range, which is computationally expensive. We propose an alternative, computationally cheaper way based on preprocessing vector fields from the trajectories. Algorithms are formalized for generating vector kernel density to estimate a travel-model-free vector field-based representation of travel momentum in an urban space. The algorithms are shared online as an open source GIS 3D extension called VectorKD. Using 17 million daily taxi GPS points within Beijing over a 4-day period, we demonstrate how to generate in real time a series of projections from a continuously updated vector field of taxi travel momentum to query a point of interest anywhere in a city, such as the CBD or the airport. This method allows a policy-maker to automatically identify temporal net influxes of travel demand to a location. The proposed methodology is shown to be over twenty times faster than a conventional selection query of trajectories. We also demonstrate, using taxi data entering the Beijing Capital International Airport and the CBD, how we can quantify in nearly real time the occurrence and magnitude of inbound or outbound queueing and congestion periods due to taxis cruising or waiting for passengers, all without having to fit any mathematical queueing model to the data.
机译:无处不在的出租车轨迹数据使其成为不同类型的旅行分析。感兴趣的是需要允许某人实时监测任何地方的旅行势头和相关的拥堵。然而,尽管有足够的文献在出租车数据可视化并适用于旅行分析,但不存在简单的方法。为了测量位置处的出租车旅行势头,目前的方法需要过滤在特定时间范围的位置停在特定时间范围的出租车轨迹,这是计算昂贵的。我们基于从轨迹的预处理传染媒介字段提出替代,计算方式更便宜的方式。算法正式用于产生载体核密度以估计城市空间中的行程动量的基于旅行的无模式矢量场的表示。算法在线共享,作为名为Vectorkd的开源GIS 3D扩展名。在4天期间使用1700万个每日出租车GPS点,我们展示了如何实时生成一系列预测的出租车旅行势头的一系列预测来查询一个城市的任何地方的兴趣点作为CBD或机场。该方法允许策略制造商自动识别旅行需求的时间净涌入到某个位置。所提出的方法显示比轨迹的传统选择查询快于2倍。我们还使用进入北京资本国际机场和CBD的出租车数据来证明,我们如何在几乎实时量化的情况和出境排队和拥堵期由于出租车巡航或等待乘客的情况而定量,而无需将任何数学排队模型适合数据。

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