A Robust Multi-Stage Intrusion Detection System for In-Vehicle Network Security using Hierarchical Federated Learning
Muzun Althunayyan, Amir Javed, Omer Rana

TL;DR
This paper presents a lightweight, multi-stage deep learning-based intrusion detection system for in-vehicle networks that effectively detects both known and novel cyberattacks while preserving data privacy through hierarchical federated learning.
Contribution
It introduces a novel multi-stage IDS combining ANN and LSTM autoencoder, deployed within a hierarchical federated learning framework for enhanced security and privacy in vehicle networks.
Findings
F1-score exceeds 0.99 for seen attacks
F1-score exceeds 0.95 for unseen attacks
Detection rate of 99.99% with low false alarm rate
Abstract
As connected and autonomous vehicles proliferate, the Controller Area Network (CAN) bus has become the predominant communication standard for in-vehicle networks due to its speed and efficiency. However, the CAN bus lacks basic security measures such as authentication and encryption, making it highly vulnerable to cyberattacks. To ensure in-vehicle security, intrusion detection systems (IDSs) must detect seen attacks and provide a robust defense against new, unseen attacks while remaining lightweight for practical deployment. Previous work has relied solely on the CAN ID feature or has used traditional machine learning (ML) approaches with manual feature extraction. These approaches overlook other exploitable features, making it challenging to adapt to new unseen attack variants and compromising security. This paper introduces a cutting-edge, novel, lightweight, in-vehicle,…
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Taxonomy
TopicsNetwork Security and Intrusion Detection
