基于智能技术的物联网攻击检测与识别入侵检测系统

Q4 Computer Science
Trifa S. Othman, Saman M. Abdullah
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引用次数: 1

摘要

-物联网(IoT)及其连接对象具有资源限制,导致物联网基础设施的安全性担忧较弱。因此,物联网网络应该始终附加安全解决方案。入侵检测系统(IDS)是一种很有前途的安全解决方案。机器学习(ML)算法成为构建基于攻击分类和/或识别的智能IDS模型的最重要技术之一。为了保持基于机器学习的IDS的有效性,必须使用涵盖基于物联网攻击最新行为的数据集来训练所使用的机器学习算法。这项工作采用了一个名为IoT23的最新数据集,其中包含了物联网对象的最新网络流(良性)和其他流(攻击)。本文利用不同的数据预处理理论,如数据清洗、数据编码和SMOT理论来处理不平衡数据,并研究了它们对准确率的影响。研究结果表明,智能入侵检测系统能够有效地利用二元分类方法检测攻击,利用多类分类方法识别攻击。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intrusion Detection Systems for IoT Attack Detection and Identification Using Intelligent Techniques
– The Internet of Things (IoT) and its connected objects have resource limitations, which lead to weak security concerns over the IoT infrastructures. Therefore, the IoT networks should always be attached with security solutions. One of the promising security solutions is intrusion detection system (IDS). Machine Learning (ML) algorithms become one of the most significant techniques for building an intelligent IDS based model for attack classification and/or identification. To keep the validation of the ML based IDS, it is essential to train the utilized ML algorithms with a dataset that cover most recent behaviors of IoT based attacks. This work employed an up-to-date dataset known as IoT23, which contains most recent network flows of the IoT objects as benign and other flows as attacks. This work utilized different data preprocessing theories such data cleansing, data coding, and SMOT theory for imbalanced data, and investigating their impact on the accuracy rate. The study's findings show that the intelligent IDS can effectively detect attacks using binary classification and identify attacks using multiclass classification.
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来源期刊
International Journal of Computer Networks and Applications
International Journal of Computer Networks and Applications Computer Science-Computer Science Applications
CiteScore
2.30
自引率
0.00%
发文量
40
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