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Determining time to traverse road sections based on mapping discrete GPS vehicle data to continuous flows

机译:基于映射离散GPS车辆数据到连续流程的遍历路段确定时间

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In this paper, we present and analyze an algorithm for mapping discrete GPS data gathered from vehicles to a continuous flow of data to determine the time to traverse a road section. Vehicle-tracking devices are installed in 80 probe vehicles in the Anchorage area, and a specific roadway section was chosen as a test section. Drivers for this study drove from before the start of the test roadway section past the end of the test roadway section, measuring the time to travel from the start to the finish of the test roadway section. The vehicle-tracking devices report speed and location every 10 seconds. From this data, we calculated the amount of time to traverse the test roadway section using our proportional model and compared it to the actual amount of time it took to traverse the test roadway section. We performed the analysis assuming the vehicle-tracking devices were reporting location every 10 seconds, 20 seconds, 30 seconds, 40 seconds, 50 seconds, and 60 seconds. With an average actual time to traverse the test roadway section of 2 minutes 28 seconds, the error rate based on the proportional model was between 1.8%–9.2% (2.7–13.1 seconds), based on how frequently the vehicle was reporting its location. Merely taking the average speed on the edge from the vehicle reporting its speed and location during those same durations had an error rate between 14.2%–25.8% (24.7–41.1 seconds). Our results show that the proportional model has a small error rate (1.8% with 10 second reporting time) and can accurately represent the time to traverse roadway sections based on discrete readings from a small number of probe vehicles.
机译:在本文中,我们展示并分析了一种算法,用于将从车辆收集到的离散GPS数据映射到连续的数据流动,以确定遍历道路部分的时间。车辆跟踪装置安装在80探头车辆中的锚地区域,并且选择特定的道路部分作为测试部分。这项研究的司机从测试道路部分开始之前开辟了测试道路部分的末端,测量了从开始到测试道路部分的开始的时间。车辆跟踪设备每10秒报告速度和位置。根据这些数据,我们计算了使用比例模型来遍历测试道路部分的时间,并将其与遍历测试道路部分进行的实际时间进行比较。我们通过每10秒,20秒,30秒,40秒,50秒和60秒进行一次报告的分析。通过平均实际时间来遍历测试道路部分2分28秒,基于车辆报告其位置的频率,基于比例模型的错误率在1.8%-9.2%(2.7-13.1秒)之间。仅仅从车辆报告其速度和位置的边缘上的平均速度,在相同的持续时间内的错误率为14.2%-25.8%(24.7-41.1秒)。我们的研究结果表明,比例模型的错误率小(10秒报告时间为1.8%),并且可以基于来自少量探头车辆的离散读数来准确地代表穿越道路部分的时间。

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