V2C: A Trust-Based Vehicle to Cloud Anomaly Detection Framework for Automotive Systems
Paper in proceeding, 2021
As it is problematic for a vehicle to reliably assess its own state when it is compromised, we investigate how vehicle trust can be used to identify compromised vehicles and how fleet-wide attacks can be detected at an early stage using cloud data. In our proposed V2C Anomaly Detection framework, peer vehicles assess each other based on their perceived behavior in traffic and V2X-enabled interactions, and upload these assessments to the cloud for analysis. This framework consists of four modules. For each module we define functional demands, interfaces and evaluate solutions proposed in literature allowing manufacturers and fleet owners to choose appropriate techniques. We detail attack scenarios where this type of framework is particularly useful in detecting and identifying potential attacks and failing software and hardware. Furthermore, we describe what basic vehicle data the cloud analysis can be based upon.
automotive
anomaly detection
cyber-physical systems
embedded systems
intrusion detection
security
resilience
Author
Thomas Rosenstatter
Chalmers, Computer Science and Engineering (Chalmers), Networks and Systems (Chalmers)
Tomas Olovsson
Network and Systems
Magnus Almgren
Network and Systems
ACM International Conference Proceeding Series
1-10 23
9781450390514 (ISBN)
Vienna, Austria,
Cyber Resilience for Vehicles - Cybersecurity for automotive systems in a changing environment (CyReV phase 2)
VINNOVA (2019-03071), 2019-01-10 -- 2022-03-31.
Cyber Resilience for Vehicles - Cybersecurity for automotive systems in a changing environment - phase1 (CyReV)
VINNOVA (2018-05013), 2019-04-01 -- 2021-03-31.
Areas of Advance
Information and Communication Technology
Transport
Subject Categories
Communication Systems
Embedded Systems
Computer Systems
DOI
10.1145/3465481.3465750