Hunting IoT Cyberattacks With AI - Powered Intrusion Detection

Sevasti Grigoriadou, Panagiotis I. Radoglou-Grammatikis, P. Sarigiannidis, Ioannis Makris, T. Lagkas, V. Argyriou, A. Lytos, Eleftherios Fountoukidis
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Abstract

The rapid progression of the Internet of Things allows the seamless integration of cyber and physical environments, thus creating an overall hyper-connected ecosystem. It is evident that this new reality provides several capabilities and benefits, such as real-time decision-making and increased efficiency and productivity. However, it also raises crucial cybersecurity issues that can lead to disastrous consequences due to the vulnerable nature of the Internet model and the new cyber risks originating from the multiple and heterogeneous technologies involved in the loT. Therefore, intrusion detection and prevention are valuable and necessary mechanisms in the arsenal of the loT security. In light of the aforementioned remarks, in this paper, we introduce an Artificial Intelligence (AI)-powered Intrusion Detection and Prevention System (IDPS) that can detect and mitigate potential loT cyberattacks. For the detection process, Deep Neural Networks (DNNs) are used, while Software Defined Networking (SDN) and Q-Learning are combined for the mitigation procedure. The evaluation analysis demonstrates the detection efficiency of the proposed IDPS, while Q- Learning converges successfully in terms of selecting the appropriate mitigation action.
使用AI驱动的入侵检测来寻找物联网网络攻击
物联网的快速发展使网络和物理环境无缝融合,从而创造了一个整体的超连接生态系统。很明显,这种新的现实提供了一些功能和好处,例如实时决策和提高效率和生产力。然而,它也提出了关键的网络安全问题,由于互联网模式的脆弱性以及loT中涉及的多种和异构技术所产生的新网络风险,这些问题可能导致灾难性后果。因此,入侵检测和防御是网络安全武器库中有价值和必要的机制。鉴于上述言论,在本文中,我们介绍了一种人工智能(AI)驱动的入侵检测和预防系统(IDPS),可以检测和减轻潜在的loT网络攻击。对于检测过程,使用深度神经网络(dnn),而软件定义网络(SDN)和q -学习相结合用于缓解过程。评估分析证明了所提出的IDPS检测效率,而Q-学习在选择适当的缓解措施方面成功收敛。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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