Considerations for Radio Frequency Fingerprinting across Multiple Frequency Channels

被引:12
作者
del Arroyo, Jose A. Gutierrez [1 ]
Borghetti, Brett J. [1 ]
Temple, Michael A. [1 ]
机构
[1] Air Force Inst Technol, Dept Elect & Comp Engn, Wright Patterson AFB, OH 45433 USA
关键词
RF machine learning; deep learning; RF fingerprinting; RFF; specific emitter identification; wireless security;
D O I
10.3390/s22062111
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
Radio Frequency Fingerprinting (RFF) is often proposed as an authentication mechanism for wireless device security, but application of existing techniques in multi-channel scenarios is limited because prior models were created and evaluated using bursts from a single frequency channel without considering the effects of multi-channel operation. Our research evaluated the multi-channel performance of four single-channel models with increasing complexity, to include a simple discriminant analysis model and three neural networks. Performance characterization using the multi-class Matthews Correlation Coefficient (MCC) revealed that using frequency channels other than those used to train the models can lead to a deterioration in performance from MCC > 0.9 (excellent) down to MCC < 0.05 (random guess), indicating that single-channel models may not maintain performance across all channels used by the transmitter in realistic operation. We proposed a training data selection technique to create multi-channel models which outperform single-channel models, improving the cross-channel average MCC from 0.657 to 0.957 and achieving frequency channel-agnostic performance. When evaluated in the presence of noise, multi-channel discriminant analysis models showed reduced performance, but multi-channel neural networks maintained or surpassed single-channel neural network model performance, indicating additional robustness of multi-channel neural networks in the presence of noise.
引用
收藏
页数:21
相关论文
共 35 条
[11]   Comparing two K-category assignments by a K-category correlation coefficient [J].
Gorodkin, J .
COMPUTATIONAL BIOLOGY AND CHEMISTRY, 2004, 28 (5-6) :367-374
[12]  
IEEE Standard for Information technology, 2016, IEEE Std 802.11-2016, P1, DOI [10.1109/ IEEESTD.2016.7524656, DOI 10.1109/IEEESTD.2016.7524656]
[13]   Deep Learning for RF Fingerprinting: A Massive Experimental Study [J].
Jian, Tong ;
Rendon, Bruno Costa ;
Ojuba, Emmanuel ;
Soltani, Nasim ;
Wang, Zifeng ;
Sankhe, Kunal ;
Gritsenko, Andrey ;
Dy, Jennifer ;
Chowdhury, Kaushik ;
Ioannidis, Stratis .
IEEE Internet of Things Magazine, 2020, 3 (01) :50-57
[14]   Radio Frequency Fingerprinting on the Edge [J].
Jian, Tong ;
Gong, Yifan ;
Zhan, Zheng ;
Shi, Runbin ;
Soltani, Nasim ;
Wang, Zifeng ;
Dy, Jennifer G. ;
Chowdhury, Kaushik Roy ;
Wang, Yanzhi ;
Ioannidis, Stratis .
IEEE TRANSACTIONS ON MOBILE COMPUTING, 2022, 21 (11) :4078-4093
[15]   RF Fingerprinting of IoT Devices Based on Transient Energy Spectrum [J].
Kose, Memduh ;
Tascioglu, Selcuk ;
Telatar, Ziya .
IEEE ACCESS, 2019, 7 :18715-18726
[16]   Robust Signal Classification Using Siamese Networks [J].
Langford, Zachary ;
Eisenbeiser, Logan ;
Vondal, Matthew .
PROCEEDINGS OF THE 2019 ACM WORKSHOP ON WIRELESS SECURITY AND MACHINE LEARNING (WISEML '19), 2019, :1-5
[17]   COMPARISON OF PREDICTED AND OBSERVED SECONDARY STRUCTURE OF T4 PHAGE LYSOZYME [J].
MATTHEWS, BW .
BIOCHIMICA ET BIOPHYSICA ACTA, 1975, 405 (02) :442-451
[18]   Deep Learning for RF Device Fingerprinting in Cognitive Communication Networks [J].
Merchant, Kevin ;
Revay, Shauna ;
Stantchev, George ;
Nousain, Bryan .
IEEE JOURNAL OF SELECTED TOPICS IN SIGNAL PROCESSING, 2018, 12 (01) :160-167
[19]   On the Performance of Energy Criterion Method in Wi-Fi Transient Signal Detection [J].
Mohamed, Ismail ;
Dalveren, Yaser ;
Catak, Ferhat Ozgur ;
Kara, Ali .
ELECTRONICS, 2022, 11 (02)
[20]  
Olds J, DESIGNING OQPSK DEMO