Visible to the public Keynote Speaker 6: Intrusion detection systems using machine learning for the security of autonomous vehicles

TitleKeynote Speaker 6: Intrusion detection systems using machine learning for the security of autonomous vehicles
Publication TypeConference Paper
Year of Publication2022
AuthorsDerhab, Abdelwahid
Conference Name2022 15th International Conference on Security of Information and Networks (SIN)
KeywordsAutonomous vehicles, Computer science, controller area network, Human Behavior, human factors, Intrusion detection, mobile security, Network security, Neural networks, pubcrawl, resilience, Resiliency, security, Smart grids
AbstractThe emergence of smart cars has revolutionized the automotive industry. Today's vehicles are equipped with different types of electronic control units (ECUs) that enable autonomous functionalities like self-driving, self-parking, lane keeping, and collision avoidance. The ECUs are connected to each other through an in-vehicle network, named Controller Area Network. In this talk, we will present the different cyber attacks that target autonomous vehicles and explain how an intrusion detection system (IDS) using machine learning can play a role in securing the Controller Area Network. We will also discuss the main research contributions for the security of autonomous vehicles. Specifically, we will describe our IDS, named Histogram-based Intrusion Detection and Filtering framework. Next, we will talk about the machine learning explainability issue that limits the acceptability of machine learning in autonomous vehicles, and how it can be addressed using our novel intrusion detection system based on rule extraction methods from Deep Neural Networks.
DOI10.1109/SIN56466.2022.9970490
Citation Keyderhab_keynote_2022