Intrusion Detection System based on Chaotic Opposition for IoT Network

Richa Singh, R.L. Ujjwal
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Abstract

The rapid advancement of network technologies and protocols has fueled the widespread endorsement of the Internet of Things (IoT) in numerous domains, including everyday life, healthcare, industries, agriculture, and more. However, this rapid growth has also given rise to numerous security concerns within IoT systems. Consequently, privacy and security have become paramount issues in the IoT framework. Due to the heterogeneous data produced by smart IoT devices, traditional intrusion detection system doesn't work well with IoT system. The massive volume of heterogeneous data has several irrelevant, redundant, and unnecessary features which lead to high computation time and low accuracy of IDS. Therefore, to tackle these challenges, this paper presents a novel metaheuristic-based IDS model for the IoT systems. The chaotic opposition-based Harris Hawk optimization (CO-IHHO) algorithm is used to perform the feature selection of data traffic. The chosen features are subsequently inputted into a machine learning (ML) classifier to detect network traffic intrusions. The performance of the CO-IHHO based IDS model is verified against the BoT-IoT dataset. Experimental findings reveal that CO-IHHO-DT achieves the maximal accuracy of 99.65% for multiclass classification and 100% for binary classification, and minimal computation time of 31.34 sec for multiclass classification and 133.54 sec for binary classification.
基于混沌对立的物联网网络入侵检测系统
网络技术和协议的快速发展推动了物联网(IoT)在日常生活、医疗保健、工业、农业等众多领域的广泛应用。然而,这种快速增长也引发了物联网系统中的许多安全问题。因此,隐私和安全已成为物联网框架中的首要问题。由于智能物联网设备会产生异构数据,传统的入侵检测系统无法很好地与物联网系统配合使用。海量的异构数据具有一些不相关、冗余和不必要的特征,导致 IDS 的计算时间长、准确率低。因此,为了应对这些挑战,本文针对物联网系统提出了一种基于元启发式的新型 IDS 模型。本文采用基于混沌对立的哈里斯-霍克优化算法(CO-IHHO)对数据流量进行特征选择。所选特征随后输入机器学习(ML)分类器,以检测网络流量入侵。基于 CO-IHHO 的 IDS 模型的性能通过 BoT-IoT 数据集进行了验证。实验结果表明,CO-IHHO-DT 的多类分类准确率最高可达 99.65%,二元分类准确率最高可达 100%,多类分类计算时间最短为 31.34 秒,二元分类计算时间最短为 133.54 秒。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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