TL;DR
This paper presents an automated security framework for 6G networks that leverages AI/ML with drift-adaptive learning and AutoML to enhance physical layer authentication and intrusion detection in dynamic environments.
Contribution
It introduces a novel automated security framework using drift-adaptive online learning and enhanced AutoML for robust cybersecurity in 6G networks.
Findings
High accuracy in RF fingerprinting and intrusion detection datasets
Effective handling of model drift in dynamic networking environments
Advancement towards fully autonomous secure 6G networks
Abstract
The transition from 5G to 6G mobile networks necessitates network automation to meet the escalating demands for high data rates, ultra-low latency, and integrated technology. Recently, Zero-Touch Networks (ZTNs), driven by Artificial Intelligence (AI) and Machine Learning (ML), are designed to automate the entire lifecycle of network operations with minimal human intervention, presenting a promising solution for enhancing automation in 5G/6G networks. However, the implementation of ZTNs brings forth the need for autonomous and robust cybersecurity solutions, as ZTNs rely heavily on automation. AI/ML algorithms are widely used to develop cybersecurity mechanisms, but require substantial specialized expertise and encounter model drift issues, posing significant challenges in developing autonomous cybersecurity measures. Therefore, this paper proposes an automated security framework…
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