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How Long a Passenger Waits for a Vacant Taxi -- Large-Scale Taxi Trace Mining for Smart Cities

机译:乘客等待空出租车多久-智慧城市的大规模出租车痕迹挖掘

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摘要

To achieve smart cities, real-world trace data sensed from the GPS-enabled taxi system, which conveys underlying dynamics of people movements, could be used to make urban transportation services smarter. As an example, it will be very helpful for passengers to know how long it will take to find a taxi at a spot, since they can plan their schedule and choose the best spot to wait. In this paper, we present a method to predict the waiting time for a passenger at a given time and spot from historical taxi trajectories. The arrival model of passengers and that of vacant taxis are built from the events that taxis arrive at and leave a spot. With the models, we could simulate the passenger waiting queue for a spot and infer the waiting time. The experiment with a large-scale real taxi GPS trace dataset is carried out to verify the proposed method.
机译:为了实现智慧城市,可以使用从具有GPS功能的出租车系统感测到的真实世界的跟踪数据来传达人们运动的基本动态,从而使城市交通服务变得更加智能。举例来说,这对乘客了解在某个地点找到出租车所需的时间非常有帮助,因为他们可以计划时间表并选择最佳的地点等待。在本文中,我们提出了一种从历史滑行轨迹预测给定时间和地点的乘客等待时间的方法。乘客到达和离开的出租车的到达模型是根据出租车到达和离开现场的事件建立的。使用这些模型,我们可以模拟某个地点的乘客等待队列并推断出等待时间。通过大规模的真实出租车GPS跟踪数据集的实验,验证了该方法的有效性。

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