Digital Twin-Empowered Smart Attack Detection System for 6G Edge of Things Networks
- URL: http://arxiv.org/abs/2310.03554v1
- Date: Thu, 5 Oct 2023 14:06:04 GMT
- Title: Digital Twin-Empowered Smart Attack Detection System for 6G Edge of Things Networks
- Authors: Yagmur Yigit, Christos Chrysoulas, Gokhan Yurdakul, Leandros Maglaras, Berk Canberk,
- Abstract summary: We introduce a digital twin-empowered smart attack detection system for 6G EoT networks.
It monitors and simulates physical assets in real time, enhancing security.
Our system excels in proactive threat detection, ensuring 6G EoT network security.
- Score: 2.3464026676834813
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: As global Internet of Things (IoT) devices connectivity surges, a significant portion gravitates towards the Edge of Things (EoT) network. This shift prompts businesses to deploy infrastructure closer to end-users, enhancing accessibility. However, the growing EoT network expands the attack surface, necessitating robust and proactive security measures. Traditional solutions fall short against dynamic EoT threats, highlighting the need for proactive and intelligent systems. We introduce a digital twin-empowered smart attack detection system for 6G EoT networks. Leveraging digital twin and edge computing, it monitors and simulates physical assets in real time, enhancing security. An online learning module in the proposed system optimizes the network performance. Our system excels in proactive threat detection, ensuring 6G EoT network security. The performance evaluations demonstrate its effectiveness, robustness, and adaptability using real datasets.
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