WI-FI 6 TECHNOLOGY AND ITS IMPACT ON NETWORK SECURITY

Authors

  • Babakulov Bekzod Mamatkulovich ,Polvonova Iqbol Dilshod qizi Jizzakh Branch of the National University of Uzbekistan Jizzakh, Uzbekistan Author

Keywords:

Wi-Fi 6, Network security, 802.11ax, OFDMA (Orthogonal Frequency Division Multiple Access), MU-MIMO (Multi-User, Multiple Input, Multiple Output), Encryption.

Abstract

This article explores the impact of Wi-Fi 6 technology on network security. Wi-Fi 6 (or 802.11ax) is a new generation of wireless networking technology that aims to provide higher speed and efficiency for devices and networks that use it. The study analyzes the main advantages of Wi-Fi 6 technology, including technologies such as OFDMA, MU-MIMO and BSS Coloring. It also examines how this technology has affected changes in network security, particularly security protocols and encryption of data exchange between devices. The article focuses on the role of Wi-Fi 6 in strengthening security measures and analyzes the specific vulnerabilities of this technology.

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Published

2025-01-07