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Detection of Security Attacks in Industrial IoT Networks: A Blockchain and Machine Learning Approach

Henry Vargas, Carlos Lozano-Garzón, Germán A. Montoya, Yezid Donoso

2021Electronics48 citationsDOIOpen Access PDF

Abstract

Internet of Things (IoT) networks have been integrated into industrial infrastructure schemes, positioning themselves as devices that communicate highly classified information for the most critical companies of world nations. Currently, and in order to look for alternatives to mitigate this risk, solutions based on Blockchain algorithms and Machine Learning techniques have been implemented separately with the aim of mitigating potential threats in IIoT networks. In this paper, we sought to integrate the previous solutions to create an integral protection mechanism for IoT device networks, which would allow the identification of threats, activate secure information transfer mechanisms, and it would be adapted to the computational capabilities of industrial IoT. The proposed solution achieved the proposed objectives and is presented as a viable mechanism for detecting and containing intruders in an IoT network. In some cases, it overcomes traditional detection mechanisms such as an IDS.

Topics & Concepts

Internet of ThingsBlockchainComputer scienceIndustrial InternetComputer securityIdentification (biology)Mechanism (biology)Order (exchange)BusinessBotanyPhilosophyBiologyEpistemologyFinanceNetwork Security and Intrusion DetectionAdvanced Malware Detection TechniquesSmart Grid Security and Resilience
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