Detecting CAN Masquerade Attacks with Signal Clustering Similarity
Pablo Moriano, Robert A. Bridges, Michael D. Iannacone

TL;DR
This paper presents a novel method for detecting CAN masquerade attacks by analyzing changes in signal clustering similarity, leveraging hierarchical clustering of CAN signals to identify anomalies indicative of malicious activity.
Contribution
The paper introduces a new detection approach based on signal clustering similarity that improves identification of masquerade attacks in vehicular CAN networks.
Findings
Masquerade attacks alter CAN signal clustering patterns.
Hierarchical clustering similarity effectively detects attack-induced anomalies.
The approach was validated on the ROAD dataset with promising results.
Abstract
Vehicular Controller Area Networks (CANs) are susceptible to cyber attacks of different levels of sophistication. Fabrication attacks are the easiest to administer -- an adversary simply sends (extra) frames on a CAN -- but also the easiest to detect because they disrupt frame frequency. To overcome time-based detection methods, adversaries must administer masquerade attacks by sending frames in lieu of (and therefore at the expected time of) benign frames but with malicious payloads. Research efforts have proven that CAN attacks, and masquerade attacks in particular, can affect vehicle functionality. Examples include causing unintended acceleration, deactivation of vehicle's brakes, as well as steering the vehicle. We hypothesize that masquerade attacks modify the nuanced correlations of CAN signal time series and how they cluster together. Therefore, changes in cluster assignments…
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