Unsupervised Anomaly Detection for Cars CAN Sensors Time Series Using Small Recurrent and Convolutional Neural Networks.

Journal: Sensors (Basel, Switzerland)
PMID:

Abstract

Predictive maintenance in the car industry is an active field of research for machine learning and anomaly detection. The capability of cars to produce time series data from sensors is growing as the car industry is heading towards more connected and electric vehicles. Unsupervised anomaly detectors are therefore very adapted to process those complex multidimensional time series and highlight abnormal behaviors. We propose to use recurrent and convolutional neural networks based on unsupervised anomaly detectors with simple architectures on real, multidimensional time series generated by the car sensors and extracted from the Controller Area Network bus (CAN). Our method is then evaluated through known specific anomalies. As the computational costs of Machine Learning algorithms are a rising issue regarding embedded scenarios such as car anomaly detection, we also focus on creating anomaly detectors that are as small as possible. Using a state-of-the-art methodology incorporating a time series predictor and a prediction-error-based anomaly detector, we show that we can obtain roughly the same anomaly detection performance with smaller predictors, reducing parameters and calculations by up to 23% and 60%, respectively. Finally, we introduce a method to correlate variables with specific anomalies by using anomaly detector results and labels.

Authors

  • Yann Cherdo
    Renault Software Labs, 2600 Route des Crêtes, Sophia Antipolis, 06560 Valbonne, France.
  • Benoît Miramond
    Université Côte d'Azur, CNRS, LEAT, France. Electronic address: benoit.miramond@univ-cotedazur.fr.
  • Alain Pegatoquet
    LEAT (CNRS), Bât. Forum, Campus SophiaTech 930 Route des Colles, 06903 Sophia Antipolis, France.
  • Alain Vallauri
    Renault Software Labs, 2600 Route des Crêtes, Sophia Antipolis, 06560 Valbonne, France.