GCNIDS: Graph Convolutional Network-Based Intrusion Detection System for CAN Bus
The Controller Area Network (CAN) bus serves as a standard protocol for facilitating communication among various electronic control units (ECUs) within contemporary vehicles. However, it has been demonstrated that the CAN bus is susceptible to remote attacks, which pose risks to the vehicle's s...
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Zusammenfassung: | The Controller Area Network (CAN) bus serves as a standard protocol for
facilitating communication among various electronic control units (ECUs) within
contemporary vehicles. However, it has been demonstrated that the CAN bus is
susceptible to remote attacks, which pose risks to the vehicle's safety and
functionality. To tackle this concern, researchers have introduced intrusion
detection systems (IDSs) to identify and thwart such attacks. In this paper, we
present an innovative approach to intruder detection within the CAN bus,
leveraging Graph Convolutional Network (GCN) techniques as introduced by Zhang,
Tong, Xu, and Maciejewski in 2019. By harnessing the capabilities of deep
learning, we aim to enhance attack detection accuracy while minimizing the
requirement for manual feature engineering. Our experimental findings
substantiate that the proposed GCN-based method surpasses existing IDSs in
terms of accuracy, precision, and recall. Additionally, our approach
demonstrates efficacy in detecting mixed attacks, which are more challenging to
identify than single attacks. Furthermore, it reduces the necessity for
extensive feature engineering and is particularly well-suited for real-time
detection systems. To the best of our knowledge, this represents the pioneering
application of GCN to CAN data for intrusion detection. Our proposed approach
holds significant potential in fortifying the security and safety of modern
vehicles, safeguarding against attacks and preventing them from undermining
vehicle functionality. |
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DOI: | 10.48550/arxiv.2309.10173 |