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Metaverse-IDS: Deep learning-based intrusion detection system for Metaverse-IoT networks

Gaber, Tarek; Awotunde, Joseph Bamidele; Torky, Mohamed; Ajagbe, Sunday A.; Hammoudeh, Mohammad; Li, Wei

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Authors

Tarek Gaber

Joseph Bamidele Awotunde

Mohamed Torky

Sunday A. Ajagbe

Mohammad Hammoudeh

Wei Li



Abstract

Combining the metaverse and the Internet of Things (IoT) will lead to the development of diverse, virtual, and more advanced networks in the future. The integration of IoT networks with the metaverse will enable more meaningful connections between the 'real' and 'virtual' worlds, allowing for real-time data analysis, access, and processing. However, these metaverse-IoT networks will face numerous security and privacy threats. Intrusion Detection Systems (IDS) offer an effective means of early detection for such attacks. Nevertheless, the metaverse generates substantial volumes of data due to its interactive nature and the multitude of user interactions within virtual environments, posing a computational challenge for building an intrusion detection system. To address this challenge, this paper introduces an innovative intrusion detection system model based on deep learning. This model aims to detect most attacks targeting metaverse-IoT communications and combines two techniques: KPCA (Kernel Principal Component Analysis which was used for attack feature extraction and CNN (Convolutional Neural Networks for attack recognition and classification. The efficiency of this proposed IDS model is assessed using two widely recognized benchmark datasets, BoT-IoT and ToN-IoT, which contain various IoT attacks potentially targeting IoT communications. Experimental results confirmed the effectiveness of the proposed IDS model in identifying 12 classes of attacks relevant to metaverse-IoT, achieving a remarkable accuracy of and a False Negative Rate FNR less than
. Furthermore, when compared with other models in the literature, our IDS model demonstrates superior performance in attack detection accuracy.

Citation

Gaber, T., Awotunde, J. B., Torky, M., Ajagbe, S. A., Hammoudeh, M., & Li, W. (2023). Metaverse-IDS: Deep learning-based intrusion detection system for Metaverse-IoT networks. Internet of Things, 24, 100977. https://doi.org/10.1016/j.iot.2023.100977

Journal Article Type Article
Acceptance Date Oct 30, 2023
Online Publication Date Nov 3, 2023
Publication Date 2023-12
Deposit Date Dec 4, 2023
Publicly Available Date Dec 4, 2023
Journal Internet of Things
Print ISSN 2542-6605
Publisher Elsevier
Peer Reviewed Peer Reviewed
Volume 24
Pages 100977
DOI https://doi.org/10.1016/j.iot.2023.100977
Keywords Management of Technology and Innovation; Artificial Intelligence; Computer Science Applications; Hardware and Architecture; Engineering (miscellaneous); Information Systems; Computer Science (miscellaneous); Software

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