Article (Scientific journals)
A Comprehensive Survey on Deep Learning-Based LoRa Radio Frequency Fingerprinting Identification.
Ahmed, Aqeel; QUOITIN, Bruno; Gros, Alexander et al.
2024In Sensors, 24 (13), p. 4411
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Keywords :
LoRa PHY; LoRaWAN; RF fingerprinting; deep learning; device identification; wireless security; Long-range communications; Low Power; Radio frequency fingerprinting
Abstract :
[en] LoRa enables long-range communication for Internet of Things (IoT) devices, especially those with limited resources and low power requirements. Consequently, LoRa has emerged as a popular choice for numerous IoT applications. However, the security of LoRa devices is one of the major concerns that requires attention. Existing device identification mechanisms use cryptography which has two major issues: (1) cryptography is hard on the device resources and (2) physical attacks might prevent them from being effective. Deep learning-based radio frequency fingerprinting identification (RFFI) is emerging as a key candidate for device identification using hardware-intrinsic features. In this paper, we present a comprehensive survey of the state of the art in the area of deep learning-based radio frequency fingerprinting identification for LoRa devices. We discuss various categories of radio frequency fingerprinting techniques along with hardware imperfections that can be exploited to identify an emitter. Furthermore, we describe different deep learning algorithms implemented for the task of LoRa device classification and summarize the main approaches and results. We discuss several representations of the LoRa signal used as input to deep learning models. Additionally, we provide a thorough review of all the LoRa RF signal datasets used in the literature and summarize details about the hardware used, the type of signals collected, the features provided, availability, and size. Finally, we conclude this paper by discussing the existing challenges in deep learning-based LoRa device identification and also envisage future research directions and opportunities.
Disciplines :
Computer science
Electrical & electronics engineering
Author, co-author :
Ahmed, Aqeel  ;  Université de Mons - UMONS > Faculté des Sciences > Service des Réseaux et Télécommunications
QUOITIN, Bruno  ;  Université de Mons - UMONS > Faculté des Sciences > Service des Réseaux et Télécommunications
Gros, Alexander  ;  Université de Mons - UMONS > Faculté Polytechnique > Service d'Electromagnétisme et Télécommunications
Moeyaert, Véronique  ;  Université de Mons - UMONS > Faculté Polytechnique > Service d'Electromagnétisme et Télécommunications
Language :
English
Title :
A Comprehensive Survey on Deep Learning-Based LoRa Radio Frequency Fingerprinting Identification.
Publication date :
08 July 2024
Journal title :
Sensors
ISSN :
1424-8220
eISSN :
1424-3210
Publisher :
Multidisciplinary Digital Publishing Institute (MDPI), Switzerland
Volume :
24
Issue :
13
Pages :
4411
Peer reviewed :
Peer Reviewed verified by ORBi
Research unit :
S802 - Réseaux et Télécommunications
F108 - Electromagnétisme et Télécommunications
Research institute :
R300 - Institut de Recherche en Technologies de l'Information et Sciences de l'Informatique
Infortech
Funders :
CyberExcellence project
Funding text :
This research was funded by the CyberExcellence project under grant number 2110186 through the CyberWal initiative by the Walloon region of Belgium.
Available on ORBi UMONS :
since 09 August 2024

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