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Smart city article details

Title Optimal Machine Learning Based Privacy Preserving Blockchain Assisted Internet Of Things With Smart Cities Environment
ID_Doc 40424
Authors Al-Qarafi A.; Alrowais F.; Alotaibi S.S.; Nemri N.; Al-Wesabi F.N.; Al Duhayyim M.; Marzouk R.; Othman M.; Al-Shabi M.
Year 2022
Published Applied Sciences (Switzerland), 12, 12
DOI http://dx.doi.org/10.3390/app12125893
Abstract Currently, the amount of Internet of Things (IoT) applications is enhanced for processing, analyzing, and managing the created big data from the smart city. Certain other applications of smart cities were location-based services, transportation management, and urban design, amongst others. There are several challenges under these applications containing privacy, data security, mining, and visualization. The blockchain-assisted IoT application (BIoT) is offering new urban computing to secure smart cities. The blockchain is a secure and transparent data-sharing decentralized platform, so BIoT is suggested as the optimum solution to the aforementioned challenges. In this view, this study develops an Optimal Machine Learning-based Intrusion Detection System for Privacy Preserving BIoT with Smart Cities Environment, called OMLIDS-PBIoT technique. The presented OMLIDS-PBIoT technique exploits BC and ML techniques to accomplish security in the smart city environment. For attaining this, the presented OMLIDS-PBIoT technique employs data pre-processing in the initial stage to transform the data into a compatible format. Moreover, a golden eagle optimization (GEO)-based feature selection (FS) model is designed to derive useful feature subsets. In addition, a heap-based optimizer (HBO) with random vector functional link network (RVFL) model was utilized for intrusion classification. Additionally, blockchain technology is exploited for secure data transmission in the IoT-enabled smart city environment. The performance validation of the OMLIDS-PBIoT technique is carried out using benchmark datasets, and the outcomes are inspected under numerous factors. The experimental results demonstrate the superiority of the OMLIDS-PBIoT technique over recent approaches.
Author Keywords blockchain assisted IoT; feature selection; intrusion detection; privacy preserving; security; smart city


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