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CNN-Enabled Multiple Power-Levels Identification in Cognitive Radio Networks
Tan, Zhenyu1; Liu, Qi2; Li, Zan1; Wang, Danyang1; Zhang, Ning3; Dai, Hong-Ning4
2023-01-11
Conference NameIEEE Global Communications Conference (GLOBECOM), 04-08 December 2022
Source PublicationIEEE Global Communications Conference (GLOBECOM), 04-08 December 2022
Pages1881-1886
Conference DateDec 04-08, 2022
Conference PlaceRio de Janeiro, BRAZIL
CountryBRAZIL
Publication PlaceNEW YORK
PublisherIeee
Contribution Rank2
AbstractSpectrum sensing with transmit power identification can greatly facilitate the application of the hybrid spectrum access strategy in cognitive radio (CR) networks. Conventional model-driven methods suffer from severe performance degradation in low signal-to-noise ratio (SNR) regime. In this paper, we propose a multiple transmit power levels identification network (TPIN) which consists of three components. In the data preprocessing components, the covariance matrix (COV) of the received data is first employed as the observation data. Then, the residual network (ResNet) based feature extractor components is used to construct the test statistic by extracting high-dimensional features of the observation data. Furthermore, the likelihood ratio test (LRT) criterion is leveraged to design the cost function for obtaining the maximum posterior probability in the classifier components. Different from the assumption in conventional method, the prior probability of each transmit power levels is unknown to the TPIN, and the array of training set is randomly disturbed. In addition, in order to verify the ability of TPIN in data features extraction, a comparison reference experiment using a general test statistic (e.g., higher-order cumulative) as the observation data is introduced. Finally, simulation results demonstrate the identification performance of the COV-based (COV-TPIN) scheme.
Keywordcognitive radio convolutional neural network multiple transmit power levels identification non-gaussian signal
DOI10.1109/globecom48099.2022.10001297
Indexed ByCPCI
Language英语
ISBN978-1-6654-3540-6
WOS IDWOS:000922633501150
Citation statistics
Document Type会议论文
Identifierhttp://ir.xao.ac.cn/handle/45760611-7/6702
Collection射电天文研究室_微波技术实验室
Affiliation1.State Key Laboratory of Integrated Service Networks, Xidian University, Xi’an, 710071, China;
2.Xinjiang Astronomical Observatory, Chinese Academy of Sciences, Urumqi, 830011;
3.Department of Electrical and Computer Engineering, University of Windsor, Windsor, ON, N9B 3P4, Canada;
4.Lingnan University, Hong Kong
Recommended Citation
GB/T 7714
Tan, Zhenyu,Liu, Qi,Li, Zan,et al. CNN-Enabled Multiple Power-Levels Identification in Cognitive Radio Networks[C]. NEW YORK:Ieee,2023:1881-1886.
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