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Hybridization of Learning Techniques and Quantum Mechanism for IIoT Security: Applications, Challenges, and Prospects

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dc.contributor.author Ismaeel, Abiodun Sikiru
dc.contributor.author Ahmed, Dooguy Kora
dc.contributor.author Eugène, C. Ezin
dc.contributor.author Agbotiname, Lucky Imoize
dc.contributor.author Chun-Ta, Li
dc.date.accessioned 2025-04-30T06:24:40Z
dc.date.available 2025-04-30T06:24:40Z
dc.date.issued 2024
dc.identifier.uri https://repository.rsif-paset.org/xmlui/handle/123456789/463
dc.description Publication en_US
dc.description.abstract This article describes our point of view regarding the security capabilities of classical learning algorithms (CLAs) and quantum mechanisms (QM) in the industrial Internet of Things (IIoT) ecosystem. The heterogeneity of the IIoT ecosystem and the inevitability of the security paradigm necessitate a systematic review of the contributions of the research community toward IIoT security (IIoTsec). Thus, we obtained relevant contributions from five digital repositories between the period of 2015 and 2024 inclusively, in line with the established systematic literature review procedure. In the main part, we analyze a variety of security loopholes in the IIoT and categorize them into two categories—architectural design and multifaceted connectivity. Then, we discuss security-deploying technologies, CLAs, blockchain, and QM, owing to their contributions to IIoTsec and the security challenges of the main loopholes. We also describe how quantum-inclined attacks are computationally challenging to CLAs, for which QM is very promising. In addition, we present available IIoT-centric datasets and encourage researchers in the IIoT niche to validate the models using the industrialfeatured datasets for better accuracy, prediction, and decision-making. In addition, we show how hybrid quantum-classical learning could leverage optimal IIoTsec when deployed. We conclude with the possible limitations, challenges, and prospects of the deployment en_US
dc.description.sponsorship Partnership for Skills in Applied Sciences, Engineering and Technology—Regional Scholarship and Innovation Fund (PASET-RSIF). en_US
dc.publisher MDPI-Electronics en_US
dc.subject classical learning algorithm en_US
dc.subject quantum mechanism en_US
dc.subject industrial Internet of Things en_US
dc.subject IIoTsec en_US
dc.subject quantum classical learning en_US
dc.subject multifaceted connectivity en_US
dc.subject architectural design en_US
dc.title Hybridization of Learning Techniques and Quantum Mechanism for IIoT Security: Applications, Challenges, and Prospects en_US
dc.type Article en_US


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