Tariq, Usman, Ahmed, Irfan, Bashir, Ali Kashif ORCID: https://orcid.org/0000-0001-7595-2522 and Khan, Muhammad Attique (2024) Securing the evolving IoT with deep learning: a comprehensive review. Kurdish Studies, 12 (1). pp. 3426-3454. ISSN 2051-4883
|
Published Version
Available under License Creative Commons Attribution Non-commercial No Derivatives. Download (574kB) | Preview |
Abstract
This paper explores how deep learning enhances Internet of Things (IoT) cybersecurity, examining advanced methods like convolutional and recurrent neural networks for detailed IoT data analysis. It highlights the importance of real-time threat detection and classification, focusing on innovative Graph Neural Networks and Transformer Models for better network security. The study also considers Federated Learning and Edge Computing for decentralized, privacy-friendly data handling, and Explainable AI for clarity in decision-making. It addresses the growing challenges of creating scalable, adaptable deep learning models for ever-changing IoT environments and cyber threats, emphasizing the need for ongoing research in developing resilient IoT cybersecurity solutions. The analysis further reveals that deep learning techniques are increasingly effective in anomaly detection and predictive maintenance, reducing false positives, and adapting to new types of cyber threats dynamically. Specifically, it emphasizes how Transformer Models and Graph Neural Networks offer promising results in contextualizing and mitigating complex multi-stage cyber-attacks, enhancing the robustness of IoT systems against evolving threats.
Impact and Reach
Statistics
Additional statistics for this dataset are available via IRStats2.