Highlights This paper proposes a network-wide method to identify intersection traffic congestion in a road network. The proposed method is solely based on low-frequency probe vehicle data, i.e., map-independent. It is able to rapidly and approximately detect intersection congestion along all turning directions. It is a computer-aided method in the era of big data can greatly decrease traffic engineers’ workload.

    Abstract Locating the bottlenecks in cities where traffic congestion usually occurs is essential prior to solving congestion problems. Therefore, this paper proposes a low-frequency probe vehicle data (PVD)-based method to identify turn-level intersection traffic congestion in an urban road network. This method initially divides an urban area into meter-scale square cells and maps PVD into those cells and then identifies the cells that correspond to road intersections by taking advantage of the fixed-location stop-and-go characteristics of traffic passing through intersections. With those rasterized road intersections, the proposed method recognizes probe vehicles’ turning directions and provides preliminary analysis of traffic conditions at all turning directions. The proposed method is map-independent (i.e., no digital map is needed) and computationally efficient and is able to rapidly screen most of the intersections for turn-level congestion in a road network. Thereby, this method is expected to greatly decrease traffic engineers’ workloads by providing information regarding where and when to investigate and solve traffic congestion problems.


    Access

    Check access

    Check availability in my library

    Order at Subito €


    Export, share and cite



    Title :

    Network-wide identification of turn-level intersection congestion using only low-frequency probe vehicle data


    Contributors:
    He, Zhengbing (author) / Qi, Geqi (author) / Lu, Lili (author) / Chen, Yanyan (author)


    Publication date :

    2019-10-02


    Size :

    20 pages




    Type of media :

    Article (Journal)


    Type of material :

    Electronic Resource


    Language :

    English




    Turn-level network traffic bottleneck identification using vehicle trajectory data

    Wei, Lei / Chen, Peng / Mei, Yu et al. | Elsevier | 2022



    Dynamic Wide-Area Congestion and Incident Monitoring Using Probe Data

    Lund, Andrew S. / Pack, Michael L. | Transportation Research Record | 2010



    A congestion level network identification system

    ZHENG YONG | European Patent Office | 2015

    Free access