An efficient security framework for intrusion detection and prevention in internet-of-things using machine learning technique

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Keywords
Abstract
Over the past few years, the internet of things (IoT) has advanced to connect billions of smart devices to improve quality of life. However, anomalies or malicious intrusions pose several security loopholes, leading to performance degradation and threat to data security in IoT operations. Thereby, IoT security systems must keep an eye on and restrict unwanted events from occurring in the IoT network. Recently, various technical solutions based on machine learning (ML) models have been derived towards identifying and restricting unwanted events in IoT. However, most ML-based approaches are prone to miss-classification due to inappropriate feature selection. Additionally, most ML approaches applied to intrusion detection and prevention consider supervised learning, which requires a large amount of labeled data to be trained. Consequently, such complex datasets are impossible to source in a large network like IoT. To address this problem, this proposed study introduces an efficient learning mechanism to strengthen the IoT security aspects. The proposed algorithm incorporates supervised and unsupervised approaches to improve the learning models for intrusion detection and mitigation. Compared with the related works, the experimental outcome shows that the model performs well in a benchmark dataset. It accomplishes an improved detection accuracy of approximately 99.21%. © 2024 Institute of Advanced Engineering and Science. All rights reserved.
Year of Publication
2024
Journal
International Journal of Electrical and Computer Engineering
Volume
14
Issue
2
Number of Pages
2313-2321,
Type of Article
Article
ISBN Number
20888708 (ISSN)
DOI
10.11591/ijece.v14i2.pp2313-2321
Publisher
Institute of Advanced Engineering and Science
Journal Article
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