深度学习在物联网网络中的网络威胁检测:综述

Alyazia Aldhaheri, Fatima Alwahedi, Mohamed Amine Ferrag, Ammar Battah
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引用次数: 0

摘要

物联网(IoT)通过互联的智能设备彻底改变了现代技术。虽然这些创新提供了前所未有的机遇,但它们也带来了复杂的安全挑战。网络安全是入侵检测系统(IDS)的关键问题。深度学习在有效检测和防止对物联网设备的网络攻击方面显示出了希望。尽管IDS对于通过识别和减轻可疑活动来保护敏感信息至关重要,但传统的IDS解决方案仍面临着物联网环境中的挑战。本文深入研究了物联网安全的尖端入侵检测方法,以深度学习为基础。我们回顾了物联网IDS的最新进展,重点介绍了底层深度学习算法、相关数据集、攻击类型和评估指标。此外,我们还讨论了为物联网安全部署深度学习所面临的挑战,并提出了未来研究的潜在领域。该调查将指导研究人员和行业专家在物联网安全和入侵检测中采用深度学习技术。
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Deep learning for cyber threat detection in IoT networks: A review

The Internet of Things (IoT) has revolutionized modern tech with interconnected smart devices. While these innovations offer unprecedented opportunities, they also introduce complex security challenges. Cybersecurity is a pivotal concern for intrusion detection systems (IDS). Deep Learning has shown promise in effectively detecting and preventing cyberattacks on IoT devices. Although IDS is vital for safeguarding sensitive information by identifying and mitigating suspicious activities, conventional IDS solutions grapple with challenges in the IoT context. This paper delves into the cutting-edge intrusion detection methods for IoT security, anchored in Deep Learning. We review recent advancements in IDS for IoT, highlighting the underlying deep learning algorithms, associated datasets, types of attacks, and evaluation metrics. Further, we discuss the challenges faced in deploying Deep Learning for IoT security and suggest potential areas for future research. This survey will guide researchers and industry experts in adopting Deep Learning techniques in IoT security and intrusion detection.

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