Specific emitter identification based on ensemble domain adversarial neural network in multi-domain environments

被引:0
作者
Dingshan Li
Bin Yao
Pu Sun
Peitong Li
Jianfeng Yan
Juzhen Wang
机构
[1] China Ship Research and Development Academy,School of Electronic Information
[2] Wuhan University,undefined
来源
EURASIP Journal on Advances in Signal Processing | / 2024卷
关键词
Domain adaptation; Domain adversarial neural networks; Ensemble learning; Specific emitter identification; Transformer encoder;
D O I
暂无
中图分类号
学科分类号
摘要
Specific emitter identification is pivotal in both military and civilian sectors for discerning the unique hardware distinctions inherent to various launchers, it can be used to implement security in wireless communications. Recently, a large number of deep learning-based methods for specific emitter identification have been proposed, achieving good performance. However, these methods are trained based on a large amount of data and the data are independently and identically distributed. In actual complex environments, it is very difficult to obtain reliable labeled data. Aiming at the problems of difficulty in data collection and annotation, and the large difference in distribution between training data and test data, a method for individual radiation source identification based on ensemble domain adversarial neural network was proposed. Specifically, a domain adversarial neural network is designed and a Transformer encoder module is added to make the features obey Gaussian distribution and achieve better feature alignment. Ensemble classifiers are then used to enhance the generalization and reliability of the model. In addition, three real and complex migration environments, Alpine–Montane Channel, Plain-Hillock Channel, and Urban-Dense Channel, were constructed, and experiments were conducted on WiFi dataset. The simulation results show that the proposed method exhibits superior performance compared to the other six methods, with an accuracy improvement of about 3%.
引用
收藏
相关论文
共 118 条
[1]  
Tu Y(2020)Complex-valued networks for automatic modulation classification IEEE Trans. Veh. Technol. 69 10085-10089
[2]  
Lin Y(2020)DeepReceiver: a deep learning-based intelligent receiver for wireless communications in the physical layer IEEE Trans. Cogn. Commun. Netw. 7 5-20
[3]  
Hou C(2021)Adversarial attacks in modulation recognition with convolutional neural networks IEEE Trans. Reliab. 70 389-401
[4]  
Mao S(2022)Threat of adversarial attacks on DL-based IoT device identification IEEE Internet Things J. 9 9012-9024
[5]  
Zheng S(2019)Wavelet packet and granular computing with application to communication emitter recognition IEEE Access. 7 94717-94724
[6]  
Chen S(2020)An improved neural network pruning technology for automatic modulation classification in edge devices IEEE Trans. Veh. Technol. 69 5703-5706
[7]  
Yang X(2023)Semi-supervised specific emitter identification based on bispectrum feature extraction CGAN in multiple communication scenarios IEEE Trans. Aerosp. Electron. Syst. 59 292-310
[8]  
Lin Y(2022)Deep learning-based specific emitter identification using integral bispectrum and the slice of ambiguity function SIViP 16 2009-2017
[9]  
Zhao H(2012)Wavelet fingerprinting of radio-frequency identification (RFID) tags IEEE Trans. Ind. Electron. 59 4843-4850
[10]  
Ma X(2016)Specific emitter identification via Hilbert–Huang transform in single-hop and relaying scenarios IEEE Trans. Inf. Forensics Secur. 11 1192-1205