物联网环境下基于混合深度学习的攻击检测与分类模型

Jaya Dipti Lal, Shahnawaz Ayoub, Dr Prashant D Hakim, Dr. S. Prabagar, Dr. Vijay Kumar Dwivedi, M. Tiwari
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引用次数: 0

摘要

物联网(IoT)正成为一个活跃的研究领域,因为它的大规模挑战和实施。但是,在其应用程序和规模急剧扩张的同时,安全性是主要问题。在所有物联网设备中独立部署安全机制并根据新的威胁进行升级是一项挑战。此外,机器学习(ML)技术可以更好地应用物联网设备产生的大量数据。因此,引入了几种基于深度学习(DL)的算法来检测物联网中的攻击。因此,本研究开发了一种物联网环境下基于深度学习的攻击检测与分类(GSODL-ADC)模型的星系群优化方法。本文提出的GSODL-ADC技术专注于识别物联网环境中的攻击。本文提出的GSODL-ADC技术利用深度自编码器(deep autoencoder, DAE)作为分类器模型,能够正确识别物联网环境中的攻击。然后,利用GSO方法对DAE模型进行最优超参数调整,提高攻击检测效率。针对基准数据集对GSODL-ADC算法进行了实验评估。实验结果表明,GSODL-ADC技术在攻击识别方面取得了一定的进步。
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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 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.
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