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On the Feasibility of Deep Learning in Sensor Network Intrusion Detection | IEEE Journals & Magazine | IEEE Xplore

On the Feasibility of Deep Learning in Sensor Network Intrusion Detection


Abstract:

In this letter, we present a comprehensive analysis of the use of machine and deep learning (DL) solutions for IDS systems in wireless sensor networks (WSNs). To accompli...Show More

Abstract:

In this letter, we present a comprehensive analysis of the use of machine and deep learning (DL) solutions for IDS systems in wireless sensor networks (WSNs). To accomplish this, we introduce restricted Boltzmann machine-based clustered IDS (RBC-IDS), a potential DL-based IDS methodology for monitoring critical infrastructures by WSNs. We study the performance of RBC-IDS, and compare it to the previously proposed adaptive machine learning-based IDS: the adaptively supervised and clustered hybrid IDS (ASCH-IDS). Numerical results show that RBC-IDS and ASCH-IDS achieve the same detection and accuracy rates, though the detection time of RBC-IDS is approximately twice that of ASCH-IDS.
Published in: IEEE Networking Letters ( Volume: 1, Issue: 2, June 2019)
Page(s): 68 - 71
Date of Publication: 26 February 2019
Electronic ISSN: 2576-3156

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