SOME/IP Intrusion Detection using Deep Learning-based Sequential Models
in Automotive Ethernet Networks
- URL: http://arxiv.org/abs/2108.08262v1
- Date: Wed, 4 Aug 2021 09:58:06 GMT
- Title: SOME/IP Intrusion Detection using Deep Learning-based Sequential Models
in Automotive Ethernet Networks
- Authors: Natasha Alkhatib, Hadi Ghauch, and Jean-Luc Danger
- Abstract summary: Intrusion Detection Systems are widely used to detect cyberattacks.
We present a deep learning-based sequential model for offline intrusion detection on SOME/IP protocol.
- Score: 2.3204135551124407
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Intrusion Detection Systems are widely used to detect cyberattacks,
especially on protocols vulnerable to hacking attacks such as SOME/IP. In this
paper, we present a deep learning-based sequential model for offline intrusion
detection on SOME/IP application layer protocol. To assess our intrusion
detection system, we have generated and labeled a dataset with several classes
representing realistic intrusions, and a normal class - a significant
contribution due to the absence of such publicly available datasets.
Furthermore, we also propose a simple recurrent neural network (RNN), as an
instance of deep learning-based sequential model, that we apply to our
generated dataset. The numerical results show that RNN excel at predicting
in-vehicle intrusions, with F1 Scores and AUC values of 0.99 for each type of
intrusion.
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