Intelligently identifying rail vehicle faults instigating running instability from carbody floor acceleration is essential to ensure operational safety and reduce maintenance costs. However, the vehicle-track interaction's nonlinearities and scarcity of running instability occurrences complicate the task. The running instability is an anomaly in the vehicle-track interaction. Thus, we propose unsupervised anomaly detection and clustering algorithms based iVRIDA framework to detect and identify running instability and corresponding root cause. We deploy and compare the performance of the PCA-AD (baseline), Sparse Autoencoder (SAE-AD), and LSTM-Encoder-Decoder (LSTMEncDec-AD) model to detect the running instability occurrences. Furthermore, we deploy a k-means algorithm on latent space to identify clusters associated with root causes instigating instability. We deployed the iVRIDA framework on simulated and measured accelerations of European high-speed rail vehicles where SAE-AD and LSTMEncDec-AD models showed 97% accuracy. The proposed method contributes to smart maintenance by intelligently identifying anomalous vehicle-track interaction events. ; QC 20230607 ; PIVOT2


    Access

    Download


    Export, share and cite



    Title :

    Unsupervised rail vehicle running instability detection algorithm for passenger trains (iVRIDA)


    Contributors:

    Publication date :

    2023-01-01


    Remarks:

    Scopus 2-s2.0-85153567490



    Type of media :

    Article (Journal)


    Type of material :

    Electronic Resource


    Language :

    English



    Classification :

    DDC:    629



    Boston & Worcester Rail Road : running time for the passenger and freight trains

    Boston and Worcester Railroad Corporation | TIBKAT | 1849


    Multiple Use of Heavy Rail Passenger Trains

    Dundovich, M. J. / American Public Transit Association | British Library Conference Proceedings | 1997




    Containment for Occupied Wheeled Mobility Devices on Passenger Rail Trains

    Hunter-Zaworski, Katharine / Severson, Kristine / Shurland, Melissa | British Library Conference Proceedings | 2018