Channel state information based physical layer authentication for Wi‐Fi sensing systems using deep learning in Internet of things networks
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IETWirelessSensorSystems-2024- ...
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1.160Mb
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final published version
Issue Date
2024-09-10Subjects
Wi-Fi sensing systemsInternet of things
channel state information (CSI)
Subject Categories::G420 Networks and Communications
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Security problems loom big in the fast-growing world of Internet of Things (IoT) networks, which is characterised by unprecedented interconnectedness and data-driven innovation, due to the inherent susceptibility of wireless infrastructure. One of the most pressing concerns is user authentication, which was originally intended to prevent unwanted access to critical information but has since expanded to provide tailored service customisation. We suggest a Wi-Fi sensing-based physical layer authentication method for IoT networks to solve this problem. Our proposed method makes use of raw channel state information (CSI) data from Wi-Fi signals to create a hybrid deep-learning model that combines convolutional neural networks and long short-term memory networks. Rigorous testing yields an astonishing 99.97% accuracy rate, demonstrating the effectiveness of our CSI-based verification. This technology not only strengthens wireless network security but also prioritises efficiency and portability. The findings highliCitation
Roopak M, Ran Y, Chen X, Tian GY, Parkinson S (2024) 'Channel state information based physical layer authentication for Wi‐Fi sensing systems using deep learning in Internet of things networks', IET Wireless Sensor Systems, (), pp.-.Publisher
IETJournal
IET Wireless Sensor SystemsAdditional Links
https://ietresearch.onlinelibrary.wiley.com/doi/10.1049/wss2.12093Type
ArticleLanguage
enISSN
2043-6386EISSN
2043-6394Sponsors
This work was supported in part by the international Collaboration and Exchange Project of NSFC: Intelligent Sensing and Monitoring of Running Gears, under Grant number 61960206010.ae974a485f413a2113503eed53cd6c53
10.1049/wss2.12093
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