Generative AI in Intrusion Detection Systems for Internet of Things: A Systematic Literature Review

Zhe Deng*, Ants Torim, Sadok Ben Yahia, Hayretdin Bahsi

*Kontaktforfatter

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Abstract

The ubiquitous data streaming through the Internet of Things (IoT) creates security risks. Intrusion detection systems (IDS) based on machine learning can support user security. Generative Artificial Intelligence (GenAI) demonstrates strong capabilities in generating synthetic data based on realistic distributions and learning complex patterns from high-dimensional data. By harnessing the capabilities of generative AI, it is feasible to augment intrusion detection models, allowing for more robust and adaptive security solutions in IoT environments. This paper introduces a systematic literature review of recent GenAI applications in IoT IDS and analyzes the architectures and techniques in the models. We classify the common usages such as data augmentation and class balancing, data reconstruction, and adversarial attack generation. We outline the commonly used datasets and evaluation metrics and compare the performances of each model under these conditions. The study identifies current challenges and emerging research trends in various technologies for applying GenAI in IoT IDS.

OriginalsprogEngelsk
TidsskriftIEEE Open Journal of the Communications Society
Vol/bind6
Sider (fra-til)4689-4717
ISSN2644-125X
DOI
StatusUdgivet - 23. maj 2025

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© 2020 IEEE.

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