IOT NETWORK INTRUSION DETECTION SYSTEM USING MACHINE LEARNING TECHNIQUES

IOT NETWORK INTRUSION DETECTION SYSTEM USING MACHINE LEARNING TECHNIQUES

Authors

  • Azizjon Meliboev Teacher, Kokand University

DOI:

https://doi.org/10.54613/ku.v11i11.972

Keywords:

IoT, IDS, Machine learning, Data science, data analysis, review, platform

Abstract

The proliferation of Internet of Things (IoT) devices has transformed various industries by providing smart and automated solutions. However, the extensive connectivity and diverse nature of IoT devices have also introduced significant security challenges, particularly in terms of network intrusion. This paper explores the development and implementation of an Intrusion Detection System (IDS) for IoT networks using Machine learning techniques. The proposed IDS aims to detect and mitigate various cyber threats by analyzing network traffic and identifying anomalous patterns indicative of intrusions. This research contributes to the field of IoT security by providing a robust and scalable intrusion detection solution that leverages the power of machine learning.

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Published

2024-06-30

Iqtiboslik olish

Meliboev, A. (2024). IOT NETWORK INTRUSION DETECTION SYSTEM USING MACHINE LEARNING TECHNIQUES. QO‘QON UNIVERSITETI XABARNOMASI, 11(11), 112–115. https://doi.org/10.54613/ku.v11i11.972

Issue

Section

Raqamli texnologiyalar / Digital technologies
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