Short-term prediction of dynamic traffic states remains critical in the field of advanced traffic management systems and related areas. In this article, a novel real-time recurrent learning (RTRL) algorithm is proposed to address the above issue. We dabble in comparing pair predictability of linear method versus RTRL algorithms and simple non-linear method versus RTRL algorithms individually using a first-order autoregressive time-series AR(1) and a deterministic function. A field study tested with flow, speed and occupancy series data collected directly from dual-loop detectors on a freeway is conducted. The numerical results reveal that the performance of RTRL algorithms in predicting short-term traffic dynamics is satisfactorily accepted. Furthermore, it is found that the dynamics of short-term traffic states characterised in different time intervals, collected in diverse time lags and times of day may have significant effects on the prediction accuracy of the proposed algorithms.


    Access

    Check access

    Check availability in my library

    Order at Subito €


    Export, share and cite



    Title :

    Short-term prediction of traffic dynamics with real-time recurrent learning algorithms


    Contributors:

    Published in:

    Transportmetrica ; 5 , 1 ; 59-83


    Publication date :

    2009-01-01


    Size :

    25 pages




    Type of media :

    Article (Journal)


    Type of material :

    Electronic Resource


    Language :

    Unknown




    Time Slot Recurrent Neural Networks for Short-Term Traffic Flow Prediction

    Qu, Licheng / Qie, Liyuan / Li, Xinze et al. | IEEE | 2022


    Short-term traffic flow prediction with LSTM recurrent neural network

    Kang, Danqing / Lv, Yisheng / Chen, Yuan-yuan | IEEE | 2017


    Short-term real-time traffic prediction methods: A survey

    Barros, Joaquim / Araujo, Miguel / Rossetti, Rosaldo J. F. | IEEE | 2015