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International Journal of Sensors, Wireless Communications and Control

Editor-in-Chief

ISSN (Print): 2210-3279
ISSN (Online): 2210-3287

Research Article

Federated Learning-Based Black Hole Prevention in the Internet of Things Environment

In Press, (this is not the final "Version of Record"). Available online 04 March, 2024
Author(s): Martin Victor K, Immanuel Johnraja Jebadurai and Getzi Jeba Leelipushpam Paulraj*
Published on: 04 March, 2024

DOI: 10.2174/0122103279285078240212063010

Price: $95

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Abstract

Background and Objective: The Internet of Things offers ubiquitous automation of things and makes human life easier. Sensors are deployed in the connected environment that sense the medium and actuate the control system without human intervention. However, the tiny connected devices are prone to severe security attacks. As the Internet of Things has become evident in everyday life, it is very important that we secure the system for efficient functioning.

Method: This paper proposes a secure federated learning-based protocol for mitigating BH attacks in the network.

Results: The experimental result proves that the intelligent network detects BH attacks and segregates the nodes to improve the efficiency of the network. The proposed techniques show improved accuracy in the presence of malicious nodes.

Conclusion: The performance is also evaluated by varying the attack frequency time.


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