An Artificial Neural Network Based Anomaly Detection Method in CAN Bus Messages in Vehicles
Title | An Artificial Neural Network Based Anomaly Detection Method in CAN Bus Messages in Vehicles |
Publication Type | Conference Paper |
Year of Publication | 2021 |
Authors | Paul, Avishek, Islam, Md Rabiul |
Conference Name | 2021 International Conference on Automation, Control and Mechatronics for Industry 4.0 (ACMI) |
Date Published | jul |
Keywords | anomaly detection system, artificial neural network, Artificial neural networks, authentication, automobiles, CAN, CAR security, Collaboration, Computer hacking, controller area network security, cyber physical systems, Cyber-physical systems, Deep Learning, Encryption, Internet of Things, intrusion detecting system, Mechatronics, Metrics, policy-based governance, pubcrawl, resilience, Resiliency, security |
Abstract | Controller Area Network is the bus standard that works as a central system inside the vehicles for communicating in-vehicle messages. Despite having many advantages, attackers may hack into a car system through CAN bus, take control of it and cause serious damage. For, CAN bus lacks security services like authentication, encryption etc. Therefore, an anomaly detection system must be integrated with CAN bus in vehicles. In this paper, we proposed an Artificial Neural Network based anomaly detection method to identify illicit messages in CAN bus. We trained our model with two types of attacks so that it can efficiently identify the attacks. When tested, the proposed algorithm showed high performance in detecting Denial of Service attacks (with accuracy 100%) and Fuzzy attacks (with accuracy 99.98%). |
DOI | 10.1109/ACMI53878.2021.9528201 |
Citation Key | paul_artificial_2021 |
- collaboration
- security
- resilience
- pubcrawl
- policy-based governance
- Metrics
- mechatronics
- intrusion detecting system
- encryption
- deep learning
- cyber physical systems
- Computer hacking
- controller area network security
- CAR security
- CAN
- automobiles
- authentication
- Artificial Neural Networks
- artificial neural network
- anomaly detection system
- Internet of Things
- Resiliency
- cyber-physical systems