Hybrid Deep Learning based Attack Detection and Classification Model on IoT Environment

The Internet of Things (IoT) is becoming an active research area because of its largescale challenges and implementation. But security is the major concern while seeing the dramatic expansion in its applications and size. It is challenging to independently put security mechanism in all the IoT devic...

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Bibliographic Details
Published in2023 Fifth International Conference on Electrical, Computer and Communication Technologies (ICECCT) pp. 1 - 5
Main Authors Lal, Jaya Dipti, Ayoub, Shahnawaz, D Hakim, Prashant, Prabagar, S., Dwivedi, Vijay Kumar, Tiwari, Mohit
Format Conference Proceeding
LanguageEnglish
Published IEEE 22.02.2023
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Summary:The Internet of Things (IoT) is becoming an active research area because of its largescale challenges and implementation. But security is the major concern while seeing the dramatic expansion in its applications and size. It is challenging to independently put security mechanism in all the IoT devices and upgrade it according to newer threats. Furthermore, machine learning (ML) techniques could better apply the massive quantity of data produced by IoT devices. Thus, several Deep Learning (DL) based algorithms were introduced for detecting attacks in IoT. Therefore, this study develops a galactic swarm optimization with Deep Learning based Attack Detection and Classification (GSODL-ADC) Model in IoT Environment. The presented GSODL-ADC technique concentrates on the identification of attacks in the IoT environment. The presented GSODL-ADC technique utilizes deep autoencoder (DAE) as a classifier model which properly recognizes the attacks in the IoT environment. Followed by this, the GSO approach is utilized for the optimum hyperparameter adjustments of the DAE model, which leads to enhanced attack detection efficacy. The experimental evaluation of the GSODL-ADC algorithm is tested against benchmark dataset. The obtained experimental values signify the betterment of the GSODL-ADC technique for attack recognition purposes.
DOI:10.1109/ICECCT56650.2023.10179678