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Collaborative learning model for cyberattack detection systems in IoT industry 4.0

Tran Viet, Khoa and Yuris Mulya, Saputra and Dinh Thai, Hoang and Nguyen Linh, Trung and Nguyen N, Diep and Nguyen Viet, Ha and Eryk, Dutkiewicz (2020) Collaborative learning model for cyberattack detection systems in IoT industry 4.0. In: IEEE Wireless Communications and Networking Conference (WCNC), May 2020, Seoul, South Korea.

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Although the development of IoT Industry 4.0 has brought breakthrough achievements in many sectors, e.g., manufacturing, healthcare, and agriculture, it also raises many security issues to human beings due to a huge of emerging cybersecurity threats recently. In this paper, we propose a novel collaborative learning-based intrusion detection system which can be efficiently implemented in IoT Industry 4.0. In the system under consideration, we develop smart "filters" which can be deployed at the IoT gateways to promptly detect and prevent cyberattacks. In particular, each filter uses the collected data in its network to train its cyberattack detection model based on the deep learning algorithm. After that, the trained model will be shared with other IoT gateways to improve the accuracy in detecting intrusions in the whole system. In this way, not only the detection accuracy is improved, but our proposed system also can significantly reduce the information disclosure as well as network traffic in exchanging data among the IoT gateways. Through thorough simulations on real datasets, we show that the performance obtained by our proposed method can outperform those of the conventional machine learning methods.

Item Type: Conference or Workshop Item (Paper)
Subjects: Electronics and Communications
Information Technology (IT)
Divisions: Advanced Insitute of Engineering and Technology (AVITECH)
Faculty of Electronics and Telecommunications (FET)
Faculty of Information Technology (FIT)
Depositing User: A/Prof. Linh Trung Nguyen
Date Deposited: 10 Jul 2020 05:39
Last Modified: 10 Jul 2020 05:40

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