It is of utmost importance to understand the networkwide transit service needs for future planning and effective funding allocations. For this purpose, this study proposes a methodology that uses a zone’s transit potential demand as an indicator to prioritise them for public transport-related improvements. This study utilises observed demand (referred to as served demand) from smartcard data to estimate the potential demand. The smartcard data is used to estimate the observed demand of a zone, based upon which high and low trip zones are segregated. An ensemble tree-based Gradient Boosting model is trained and validated using observed trips by employing demographics, socio-economic, and geographic variables. From the analysis, zones with high and low potential demand are identified. Based on the estimated potential demand per unit area, all the zones are clustered into four groups identifying the areas with the lowest, low, medium, and high transit improvement requirements.


    Access

    Check access

    Check availability in my library

    Order at Subito €


    Export, share and cite



    Title :

    Zone prioritisation for transit improvement using potential demand estimated from smartcard data


    Contributors:


    Publication date :

    2023-03-15




    Type of media :

    Article (Journal)


    Type of material :

    Electronic Resource


    Language :

    Unknown




    Validating travel behavior estimated from smartcard data

    Munizaga, Marcela / Devillaine, Flavio / Navarrete, Claudio et al. | Elsevier | 2014


    Validating travel behavior estimated from smartcard data

    Munizaga, Marcela | Online Contents | 2014


    Exploring Potential Travel Demand of Customized Bus Using Smartcard Data*

    Guo, Rongge / Guan, Wei / Huang, Ailing et al. | IEEE | 2019


    Investigating Potential Transit Ridership by Fusing Smartcard and Global System for Mobile Communications Data

    de Regt, Karin / Cats, Oded / Van Oort, Niels et al. | Transportation Research Record | 2017


    Multidimensional visualization of transit smartcard data using space–time plots and data cubes

    Song, Ying / Fan, Yingling / Li, Xin et al. | Online Contents | 2017