2024
DOI: 10.3389/fcomp.2024.1392119
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Enhancing ECU identification security in CAN networks using distortion modeling and neural networks

Azeem Hafeez,
Hafiz Malik,
Aun Irtaza
et al.

Abstract: A novel technique for electronic control unit (ECU) identification is proposed in this study to address security vulnerabilities of the controller area network (CAN) protocol. The reliable ECU identification has the potential to prevent spoofing attacks launched over the CAN due to the lack of message authentication. In this regard, we model the ECU-specific random distortion caused by the imperfections in the digital-to-analog converter and semiconductor impurities in the transmitting ECU for fingerprinting. … Show more

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