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TENET: Temporal CNN with Attention for Anomaly Detection in Automotive Cyber-Physical Systems

Sooryaa Vignesh Thiruloga, Vipin Kumar Kukkala, Sudeep Pasricha

20222022 27th Asia and South Pacific Design Automation Conference (ASP-DAC)37 citationsDOI

Abstract

Modern vehicles have multiple electronic control units (ECUs) that are connected together as part of a complex distributed cyber-physical system (CPS). The ever-increasing communication between ECUs and external electronic systems has made these vehicles particularly susceptible to a variety of cyber-attacks. In this work, we present a novel anomaly detection framework called TENET to detect anomalies induced by cyber-attacks on vehicles. TENET uses temporal convolutional neural networks with an integrated attention mechanism to learn the dependency between messages traversing the in-vehicle network. Post deployment in a vehicle, TENET employs a robust quantitative metric and classifier, together with the learned dependencies, to detect anomalous patterns. TENET is able to achieve an improvement of 32.70% in False Negative Rate, 19.14% in the Mathews Correlation Coefficient, and 17.25% in the ROC-AUC metric, with 94.62% fewer model parameters, and 48.14% lower inference time compared to the best performing prior works on automotive anomaly detection.

Topics & Concepts

Anomaly detectionComputer scienceCyber-physical systemConvolutional neural networkAutomotive industryMetric (unit)Artificial intelligenceInferenceSoftware deploymentInference engineClassifier (UML)Dependency (UML)Data miningMachine learningReal-time computingPattern recognition (psychology)EngineeringOperating systemAerospace engineeringOperations managementAnomaly Detection Techniques and ApplicationsNetwork Security and Intrusion DetectionAdvanced Malware Detection Techniques
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