TY - JOUR
T1 - Design of Tiny Contrastive Learning Network With Noise Tolerance for Unauthorized Device Identification in Internet of UAVs
AU - Zhang, Tiantian
AU - Xu, Dongyang
AU - Alfarraj, Osama
AU - Yu, Keping
AU - Guizani, Mohsen
AU - Rodrigues, Joel J.P.C.
N1 - Publisher Copyright:
© 2014 IEEE.
PY - 2024/6/15
Y1 - 2024/6/15
N2 - Artificial intelligence enhanced Internet of unmanned aerial vehicles (UAVs) is a promising network to achieve the complicated vehicular tasks and construct intelligent communication networks. One of the critical tasks is to guarantee a secure network access while achieving tradeoff between accuracy and latency through lightweight deployment on resource-limited and hardware-constrained UAVs. To address this issue, a novel noise-tolerant radio frequency fingerprinting (NT-RFF) based on tiny machine learning (TinyML) scheme is proposed, which amalgamates contrastive learning and data augmentation, aiming to improve the generalization ability of unauthorized device identification (UDI). Particularly, we first exploit the augmentation technique to enhance the legitimate training data sets under the circumstance of varying signal-to-noise ratios, facilitating an enhanced and diversified data sets. Second, a synthesis of contrastive learning and supervised learning is employed to attain comprehensive global learning. We design a new contrastive loss criteria to capture relevant information from the samples collected over the air. Besides, we design a categorical cross-entropy loss criteria by which supervisory information can be leveraged from associated labels. Finally, quantification is utilized to enhance model efficiency and achieve an optimal balance between accuracy and latency within computing and energy resource-limited UAVs. Experimental results demonstrate that the proposed tiny NT-RFF which only contains about 25-30% quantitative parameters can maintain excellent performance and improve the UDI accuracy greatly compared with the traditional machine learning-based RFF schemes. Moreover, the remarkable results showcase that our proposed framework attains a substantial increase in identification accuracy compared to the data augmentation and contrastive learning-based RFF and DASL-RFF methods, exhibiting improvements of 14.16% and 5.17%, respectively.
AB - Artificial intelligence enhanced Internet of unmanned aerial vehicles (UAVs) is a promising network to achieve the complicated vehicular tasks and construct intelligent communication networks. One of the critical tasks is to guarantee a secure network access while achieving tradeoff between accuracy and latency through lightweight deployment on resource-limited and hardware-constrained UAVs. To address this issue, a novel noise-tolerant radio frequency fingerprinting (NT-RFF) based on tiny machine learning (TinyML) scheme is proposed, which amalgamates contrastive learning and data augmentation, aiming to improve the generalization ability of unauthorized device identification (UDI). Particularly, we first exploit the augmentation technique to enhance the legitimate training data sets under the circumstance of varying signal-to-noise ratios, facilitating an enhanced and diversified data sets. Second, a synthesis of contrastive learning and supervised learning is employed to attain comprehensive global learning. We design a new contrastive loss criteria to capture relevant information from the samples collected over the air. Besides, we design a categorical cross-entropy loss criteria by which supervisory information can be leveraged from associated labels. Finally, quantification is utilized to enhance model efficiency and achieve an optimal balance between accuracy and latency within computing and energy resource-limited UAVs. Experimental results demonstrate that the proposed tiny NT-RFF which only contains about 25-30% quantitative parameters can maintain excellent performance and improve the UDI accuracy greatly compared with the traditional machine learning-based RFF schemes. Moreover, the remarkable results showcase that our proposed framework attains a substantial increase in identification accuracy compared to the data augmentation and contrastive learning-based RFF and DASL-RFF methods, exhibiting improvements of 14.16% and 5.17%, respectively.
KW - Contrastive learning
KW - data augmentation
KW - tiny machine learning (TinyML)
KW - unauthorized device identification (UDI)
KW - unmanned aerial vehicles (UAVs)
UR - https://www.scopus.com/pages/publications/85189156177
U2 - 10.1109/JIOT.2024.3376529
DO - 10.1109/JIOT.2024.3376529
M3 - 文章
AN - SCOPUS:85189156177
SN - 2327-4662
VL - 11
SP - 20912
EP - 20929
JO - IEEE Internet of Things Journal
JF - IEEE Internet of Things Journal
IS - 12
ER -