CRAIApr 14

Security and Resilience in Autonomous Vehicles: A Proactive Design Approach

arXiv:2604.124085.81 citationsh-index: 5
Predicted impact top 88% in CR · last 90 daysOriginality Incremental advance
AI Analysis

For autonomous vehicle developers and researchers, this work provides a layered threat model and practical defense mechanisms to improve safety against cyberattacks.

This chapter presents a proactive design approach to enhance security and resilience in autonomous vehicles, including a taxonomy of attacks and an AV Resilient architecture. Experimental validation on the Quanser QCar platform shows effective detection of depth camera blinding attacks and software tampering, ensuring operational continuity.

Autonomous vehicles (AVs) promise efficient, clean and cost-effective transportation systems, but their reliance on sensors, wireless communications, and decision-making systems makes them vulnerable to cyberattacks and physical threats. This chapter presents novel design techniques to strengthen the security and resilience of AVs. We first provide a taxonomy of potential attacks across different architectural layers, from perception and control manipulation to Vehicle-to-Any (V2X) communication exploits and software supply chain compromises. Building on this analysis, we present an AV Resilient architecture that integrates redundancy, diversity, and adaptive reconfiguration strategies, supported by anomaly- and hash-based intrusion detection techniques. Experimental validation on the Quanser QCar platform demonstrates the effectiveness of these methods in detecting depth camera blinding attacks and software tampering of perception modules. The results highlight how fast anomaly detection combined with fallback and backup mechanisms ensures operational continuity, even under adversarial conditions. By linking layered threat modeling with practical defense implementations, this work advances AV resilience strategies for safer and more trustworthy autonomous vehicles.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes