Effective prediction of turning movement counts at intersections through efficient and accurate methods is essential and needed for various applications. Commonly predictive methods require extensive data collection, calibration, and modeling efforts to estimate turning movements. In this study, three models were proposed to estimate turning movements at signalized intersections using approach volumes. Two sets of data from the United States and Canada were obtained to develop and test the proposed models. Machine learning-based regression models, including random forest regressor (RFR) and multioutput regressor (MOR) in addition to an artificial neural network (ANN) model, were developed and trained to analyze the relationship between approach volumes and corresponding turning movements. Multiple evaluation measurements were utilized to compare the models. All models produced satisfactory results. The RFR regression model outperformed the MOR model. However, the ANN model had the best performance when compared to the other models. The proposed models provide traffic engineers and planners with reliable and fast methods to estimate turning movements.


    Zugriff

    Download


    Exportieren, teilen und zitieren



    Titel :

    Machine learning-based multi-target regression to effectively predict turning movements at signalized intersections


    Beteiligte:
    Khaled Shaaban (Autor:in) / Ali Hamdi (Autor:in) / Mohammad Ghanim (Autor:in) / Khaled Bashir Shaban (Autor:in)


    Erscheinungsdatum :

    2023




    Medientyp :

    Aufsatz (Zeitschrift)


    Format :

    Elektronische Ressource


    Sprache :

    Unbekannt




    System to Identify Turning Movements at Signalized Intersections

    Virkler, M. R. / Narla Raj Kumar | British Library Online Contents | 1998





    Field Testing for Automated Identification of Turning Movements at Signalized Intersections

    Tian, J. / Virkler, M. R. / Sun, C. et al. | British Library Conference Proceedings | 2004