Analysis of passenger travel habits is always an important item in traffic field. However, passenger travel patterns can only be watched through a period time, and a lot of people travel by public transportation in big cities like Beijing daily, which leads to large-scale data and difficult operation. Using SPARK platform, this paper proposes a trip reconstruction algorithm and adopts the density-based spatial clustering of application with noise (DBSCAN) algorithm to mine the travel patterns of each Smart Card (SC) user in Beijing. For the phenomenon that passengers swipe cards before arriving to avoid the crowd caused by the people of the same destination, the algorithm based on passenger travel frequent items is adopted to guarantee the accuracy of spatial regular patterns. At last, this paper puts forward a model based on density and node importance to gather bus stations. The transportation connection between areas formed by these bus stations can be seen with the help of SC data. We hope that this research will contribute to further studies.


    Access

    Download


    Export, share and cite



    Title :

    Passenger Travel Regularity Analysis Based on a Large Scale Smart Card Data


    Contributors:
    Qi Ouyang (author) / Yongbo Lv (author) / Yuan Ren (author) / Jihui Ma (author) / Jing Li (author)


    Publication date :

    2018




    Type of media :

    Article (Journal)


    Type of material :

    Electronic Resource


    Language :

    Unknown




    Public Transit Passenger Profiling by Using Large-Scale Smart Card Data

    Wang, Lewen / Wang, Yu / Sun, Xiaofei et al. | ASCE | 2023



    Spatio-Temporal Analysis of Passenger Travel Patterns in Massive Smart Card Data

    Zhao, Juanjuan / Qu, Qiang / Zhang, Fan et al. | IEEE | 2017


    Inferring temporal motifs for travel pattern analysis using large scale smart card data

    Lei, Da / Chen, Xuewu / Cheng, Long et al. | Elsevier | 2020


    Travel behavior analysis using smart card data

    Ali, Atizaz / Kim, Jooyoung / Lee, Seungjae | Springer Verlag | 2015