4.5 Article

CANnolo: An Anomaly Detection System Based on LSTM Autoencoders for Controller Area Network

Journal

IEEE TRANSACTIONS ON NETWORK AND SERVICE MANAGEMENT
Volume 18, Issue 2, Pages 1913-1924

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TNSM.2020.3038991

Keywords

Network security; intrusion detection system; controller area network; deep learning; unsupervised learning

Funding

  1. BVTech SpA under project grant UCSA
  2. Spanish National Cybersecurity Institute (INCIBE) within the program Grants for the Excellence of Advanced Cybersecurity Research Teams [INCIBEI-2015-27353]

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Automotive security has improved significantly due to new connectivity features, with researchers showing vulnerabilities in modern vehicles to various attacks. The proposed IDS CANnolo, based on LSTM-autoencoders, outperforms existing models in detecting anomalies in CAN networks, as demonstrated in experiments.
Automotive security has gained significant traction in the last decade thanks to the development of new connectivity features that have brought the vehicle from an isolated environment to an externally facing domain. Researchers have shown that modern vehicles are vulnerable to multiple types of attacks leveraging remote, direct and indirect physical access, which allow attackers to gain control and affect safety-critical systems. Conversely, Intrusion Detection Systems (IDSs) have been proposed by both industry and academia to identify attacks and anomalous behaviours. In this article, we propose CANnolo, an IDS based on Long Short-Term Memory (LSTM)-autoencoders to identify anomalies in Controller Area Networks (CANs). During a training phase, CANnolo automatically analyzes the CAN streams and builds a model of the legitimate data sequences. Then, it detects anomalies by computing the difference between the reconstructed and the respective real sequences. We experimentally evaluated CANnolo on a set of simulated attacks applied over a real-world dataset. We show that our approach outperforms the state-of-the-art model by improving the detection rate and precision.

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