A Review on IoT Intrusion Detection Systems Using Supervised Machine Learning: Techniques, Datasets, and Algorithms

Author:

Abdulla Azeez Rahman,M. Jameel Noor Ghazi

Abstract

Physical objects that may communicate with one another are referred to “things” throughout the Internet of Things (IoT) concept. It introduces a variety of services and activities that are both available, trustworthy and essential for human life. The IoT necessitates multifaceted security measures that prioritize communication protected by confidentiality, integrity and authentication services; data inside sensor nodes are encrypted and the network is secured against interruptions and attacks. As a result, the issue of communication security in an IoT network needs to be solved. Even though the IoT network is protected by encryption and authentication, cyber-attacks are still possible. Consequently, it’s crucial to have an intrusion detection system (IDS) technology. In this paper, common and potential security threats to the IoT environment are explored. Then, based on evaluating and contrasting recent studies in the field of IoT intrusion detection, a review regarding the IoT IDSs is offered with regard to the methodologies, datasets and machine learning (ML) algorithms. In This study, the strengths and limitations of recent IoT intrusion detection techniques are determined, recent datasets collected from real or simulated IoT environment are explored, high-performing ML methods are discovered, and the gap in recent studies is identified.

Publisher

University of Human Development

Subject

General Medicine

Cited by 7 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. IoT-PRIDS: Leveraging packet representations for intrusion detection in IoT networks;Computers & Security;2024-11

2. Internet of Things (IoT) Technologies With Intrusion Detection Systems in Deep Learning;Advances in Information Security, Privacy, and Ethics;2024-06-28

3. Enhancing intrusion detection in IoT networks using machine learning-based feature selection and ensemble models;Systems Science & Control Engineering;2024-03-02

4. Intrusion Detection Using Artificial Intelligence Techniques: Review;2024 International Conference on Artificial Intelligence, Computer, Data Sciences and Applications (ACDSA);2024-02-01

5. Intrusion Detection System Using Machine Learning by RNN Method;E3S Web of Conferences;2024

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