探索公交车跟踪数据以表征城市交通拥堵

IF 2.7 Q1 GEOGRAPHY Journal of Urban Mobility Pub Date : 2023-10-11 DOI:10.1016/j.urbmob.2023.100065
Ana Almeida , Susana Brás , Susana Sargento , Ilídio Oliveira
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引用次数: 2

摘要

交通动态的量化是城市规划和管理的一个有价值的工具。车辆平均速度、行驶时间、延误和停车次数等指标可用于表征一个地区的机动性和交通拥堵。然而,由于难以以实用、廉价和及时的方式收集流动数据,流动数据的有效研究往往受到阻碍。在这项工作中,我们利用部署在葡萄牙阿威罗的现有智能城市基础设施,探索将城市公交车用作移动探针。我们提出了一种考虑低车速、低交通流量和接近其通行能力的道路占用率的交通拥堵检测方法。使用k均值方法来识别三种拥塞程度;DBSCAN用于表征道路的典型拥堵程度。使用四周的流动性数据,可以评估一天中和一周中不同日子的拥堵情况;事实证明,一些路段一直容易拥堵。我们还研究了考虑速度和加速度的驾驶安全参数。在这项工作中,我们展示了知识发现可以应用于追踪公交车收集的移动数据,探索通常用于其他目的的数据,也可以表征交通拥堵。这些方法可以为决策者提供信息,并很容易移植到其他城市。
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Exploring bus tracking data to characterize urban traffic congestion

Quantification of traffic dynamics is a valuable tool for city planning and management. Metrics such as the vehicle average speed, travel time, delays, and count of stops, can be used to characterize mobility and traffic congestion in an area. However, effective study of mobility data is often hindered by the difficulty of gathering mobility data in a practical, inexpensive, and prompt way.

In this work, we explore the use of city buses as mobility probes, using the existing smart city infrastructure deployed in Aveiro, Portugal. We propose a method for traffic congestion detection considering the low vehicle speed, low traffic flow and road occupancy close to its capacity. Three degrees of congestion are identified using the k-means approach; DBSCAN is used to characterize the typical level of congestion in a road. Using four-weeks of mobility data, it was possible to assess the congestion along the day and for the different days of the week; some road segments proved to be consistently prone to congestion. We also studied parameters of driving safety, considering speed and acceleration.

In this work, we show that knowledge discovery can be applied to mobility data being collected by tracking buses, exploring data that is often collected for other purposes also to characterize traffic congestion. These methods can inform decision makers and are easily ported to other cities.

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