基于机器学习的物联网攻击检测与识别智能入侵检测系统

IF 1.2 Q3 MULTIDISCIPLINARY SCIENCES ARO-THE SCIENTIFIC JOURNAL OF KOYA UNIVERSITY Pub Date : 2023-05-22 DOI:10.14500/aro.11124
Trifa S. Othman, Saman M. Abdullah
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引用次数: 0

摘要

物联网(IoT)技术的可用性和可扩展性正在不断扩大,从而提高了人类的生活水平。然而,它们也增加了物联网网络上的漏洞和攻击媒介。因此,可以预期和遇到更多的安全挑战,需要提供更多的安全服务和解决方案。尽管许多安全技术提出并承诺为入侵检测系统提供良好的解决方案,ids仍然被认为是最好的。许多工作提出了基于机器学习(ML)的ids用于物联网攻击检测和分类。然而,它们面临着两个主要缺口。首先,很少有人利用或能够分析最新版本的基于物联网的攻击行为。其次,很少有工作可以被认为是多类攻击检测和分类。因此,这项工作提出了一种智能IDS (IIDS),利用ML算法对物联网网络数据包中的恶意行为进行分类和识别。研究了三种机器学习分类算法,分别是k近邻算法、支持向量机算法和人工神经网络算法。所开发的模型已被训练和测试为针对15种攻击和良性攻击的二元和多类分类器。这项工作采用了一个名为IoT23的最新数据集,该数据集涵盖了数百万个物联网连接设备的恶意和良性行为。本文提出的iids的开发过程经历了不同的预处理阶段和方法,如零值求解、不平衡数据集的SMOTE方法、数据归一化和特征选择。结果表明,即使对于零日攻击,iids也是很好的二进制和多类分类器。
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An Intelligent Intrusion Detection System for Internet of Things Attack Detection and Identification Using Machine Learning
The usability and scalability of Internet of things (IoT) technology are expanding in such a way that they facilitate human living standards. However, they increase the vulnerabilities and attack vectors over IoT networks as well. Thus, more security challenges could be expected and encountered, and more security services and solutions should be provided. Although many security techniques propose and promise good solutions for that intrusion detection systems IDSs still considered the best. Many works proposed machine learning (ML)-based IDSs for IoT attack detection and classification. Nevertheless, they suffer from two main gaps. First, few of the works utilized or could analyze an up-to-date version of IoT-based attack behaviors. Second, few of the works can be considered as multi-class attack detection and classification. Therefore, this work proposes an intelligent IDS (IIDS) by exploiting the ability of ML algorithms to classify and identify malicious from benign behaviors among IoT network packets. Three ML classifier algorithms are investigated, which are K-Nearest Neighbor, support vector machine, and artificial neural network. The developed models have been trained and tested as binary and multi-class classifiers against 15 types of attacks and benign. This work employs an up-to-date dataset known as IoT23, which covers millions of malicious and benign behaviors of IoT-connected devices. The process of developing the proposed IIDSs goes under different preprocessing phases and methods, such as null value solving, SMOTE method for the imbalanced datasets, data normalization, and feature selections. The results present IIDSs as good binary and multi-class classifiers even for zero-day attacks.
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来源期刊
ARO-THE SCIENTIFIC JOURNAL OF KOYA UNIVERSITY
ARO-THE SCIENTIFIC JOURNAL OF KOYA UNIVERSITY MULTIDISCIPLINARY SCIENCES-
自引率
33.30%
发文量
33
审稿时长
16 weeks
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