DAIRE: A lightweight AI model for real-time detection of Controller Area Network attacks in the Internet of Vehicles
Shahid Alam, Amina Jameel, Zahida Parveen, Ehab Alnfrawy, Adeela Ashraf, Raza Uddin, Jamal Aqib

TL;DR
DAIRE is a lightweight neural network framework designed for real-time detection and classification of CAN bus cyberattacks in the Internet of Vehicles, achieving high accuracy and speed.
Contribution
The paper introduces DAIRE, a resource-efficient neural network model tailored for real-time IoV attack detection, outperforming existing methods in speed and accuracy.
Findings
Achieves 99.88% detection rate on IoV attack datasets.
Classifies attacks with 99.96% overall accuracy.
Operates with a classification time of 0.03 ms per sample.
Abstract
The Internet of Vehicles (IoV) is advancing modern transportation by improving safety, efficiency, and intelligence. However, the reliance on the Controller Area Network (CAN) introduces critical security risks, as CAN-based communication is highly vulnerable to cyberattacks. Addressing this challenge, we propose DAIRE (Detecting Attacks in IoV in REal-time), a lightweight machine learning framework designed for real-time detection and classification of CAN attacks. DAIRE is built on a lightweight artificial neural network (ANN) where each layer contains Ni = i x c neurons, with Ni representing the number of neurons in the ith layer and c corresponding to the total number of attack classes. Other hyperparameters are determined empirically to ensure real-time operation. To support the detection and classification of various IoV attacks, such as Denial-of-Service, Fuzzy, and Spoofing,…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Videos
No videos yet. Explain this paper in a talk, walkthrough, or lecture? Add one.
