A Novel Deep Learning-Based Intrusion Detection System for IoT Networks

Author:

Awajan Albara1

Affiliation:

1. Department of Intelligent Systems, Faculty of Artificial Intelligence, Al-Balqa Applied University, Al-Salt 19117, Jordan

Abstract

The impressive growth rate of the Internet of Things (IoT) has drawn the attention of cybercriminals more than ever. The growing number of cyber-attacks on IoT devices and intermediate communication media backs the claim. Attacks on IoT, if they remain undetected for an extended period, cause severe service interruption resulting in financial loss. It also imposes the threat of identity protection. Detecting intrusion on IoT devices in real-time is essential to make IoT-enabled services reliable, secure, and profitable. This paper presents a novel Deep Learning (DL)-based intrusion detection system for IoT devices. This intelligent system uses a four-layer deep Fully Connected (FC) network architecture to detect malicious traffic that may initiate attacks on connected IoT devices. The proposed system has been developed as a communication protocol-independent system to reduce deployment complexities. The proposed system demonstrates reliable performance for simulated and real intrusions during the experimental performance analysis. It detects the Blackhole, Distributed Denial of Service, Opportunistic Service, Sinkhole, and Workhole attacks with an average accuracy of 93.74%. The proposed intrusion detection system’s precision, recall, and F1-score are 93.71%, 93.82%, and 93.47%, respectively, on average. This innovative deep learning-based IDS maintains a 93.21% average detection rate which is satisfactory for improving the security of IoT networks.

Publisher

MDPI AG

Subject

Computer Networks and Communications,Human-Computer Interaction

Reference55 articles.

1. LungNet: A hybrid deep-CNN model for lung cancer diagnosis using CT and wearable sensor-based medical IoT data;Faruqui;Comput. Biol. Med.,2021

2. Wójcicki, K., Biegańska, M., Paliwoda, B., and Górna, J. (2022). Internet of Things in Industry: Research Profiling, Application, Challenges and Opportunities—A Review. Energies, 15.

3. Evolution of industry and blockchain era: Monitoring price hike and corruption using BIoT for smart government and industry 4.0;Hasan;IEEE Trans. Ind. Inform.,2022

4. Event-driven Circuits and Systems: A Promising Low Power Technique for Intelligent Sensors in AIoT Era;Zhao;IEEE Trans. Circuits Syst. II Express Briefs,2022

5. Soldatos, J., Gusmeroli, S., Malo, P., and Di Orio, G. (2022). Digitising the Industry Internet of Things Connecting the Physical, Digital and Virtual Worlds, River Publishers.

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