Score: 0

CITADEL: Continual Anomaly Detection for Enhanced Learning in IoT Intrusion Detection

Published: August 26, 2025 | arXiv ID: 2508.19450v1

By: Elvin Li , Onat Gungor , Zhengli Shang and more

Potential Business Impact:

Keeps smart devices safe from new online dangers.

Business Areas:
Intrusion Detection Information Technology, Privacy and Security

The Internet of Things (IoT), with its high degree of interconnectivity and limited computational resources, is particularly vulnerable to a wide range of cyber threats. Intrusion detection systems (IDS) have been extensively studied to enhance IoT security, and machine learning-based IDS (ML-IDS) show considerable promise for detecting malicious activity. However, their effectiveness is often constrained by poor adaptability to emerging threats and the issue of catastrophic forgetting during continuous learning. To address these challenges, we propose CITADEL, a self-supervised continual learning framework designed to extract robust representations from benign data while preserving long-term knowledge through optimized memory consolidation mechanisms. CITADEL integrates a tabular-to-image transformation module, a memory-aware masked autoencoder for self-supervised representation learning, and a novelty detection component capable of identifying anomalies without dependence on labeled attack data. Our design enables the system to incrementally adapt to emerging behaviors while retaining its ability to detect previously observed threats. Experiments on multiple intrusion datasets demonstrate that CITADEL achieves up to a 72.9% improvement over the VAE-based lifelong anomaly detector (VLAD) in key detection and retention metrics, highlighting its effectiveness in dynamic IoT environments.

Country of Origin
πŸ‡ΊπŸ‡Έ United States

Page Count
12 pages

Category
Computer Science:
Cryptography and Security