基于GPS样本的时空交通量估算模型

J. Snowdon, Olga Gkountouna, Andreas Züfle, D. Pfoser
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引用次数: 8

摘要

有效的道路交通评估和估计不仅对交通管理应用至关重要,而且对长期运输和更普遍的城市规划也至关重要。传统上,这项任务是通过使用固定的交通计数传感器网络来完成的。这些昂贵且不可靠的传感器已被所谓的“探测车辆数据”(PVD)所取代,后者依赖于对交通中的个别车辆进行采样,例如使用智能手机来评估整体交通状况。虽然PVD提供了统一的道路网络覆盖,但它并没有捕捉到实际的交通流量。另一方面,固定式传感器只能捕捉离散位置的绝对交通流量。此外,这些传感器往往不可靠;暂时的故障会在它们的时间序列测量中产生间隙。这项工作通过学习基于gps的探测器数据在离散的固定传感器位置捕获的车辆的时间相关部分,弥合了这两个数据源之间的差距。然后,我们可以通过使用PVD数据来估计实际的总流量来解释交通环路测量的间隙。在这项工作中,我们证明了PVD流捕获在华盛顿特区随着时间的推移而发生显著变化。利用这些信息,我们能够获得没有固定传感器覆盖区域的交通量的严格置信区间。
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Spatiotemporal Traffic Volume Estimation Model Based on GPS Samples
Effective road traffic assessment and estimation is crucial not only for traffic management applications, but also for long-term transportation and, more generally, urban planning. Traditionally, this task has been achieved by using a network of stationary traffic count sensors. These costly and unreliable sensors have been replaced with so-called Probe Vehicle Data (PVD), which relies on sampling individual vehicles in traffic using for example smartphones to assess the overall traffic condition. While PVD provides uniform road network coverage, it does not capture the actual traffic flow. On the other hand, stationary sensors capture the absolute traffic flow only at discrete locations. Furthermore, these sensors are often unreliable; temporary malfunctions create gaps in their time-series of measurements. This work bridges the gap between these two data sources by learning the time-dependent fraction of vehicles captured by GPS-based probe data at discrete stationary sensor locations. We can then account for the gaps of the traffic-loop measurements by using the PVD data to estimate the actual total flow. In this work, we show that the PVD flow capture changes significantly over time in the Washington DC area. Exploiting this information, we are able to derive tight confidence intervals of the traffic volume for areas with no stationary sensor coverage.
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