Deep learning-based spectrum sensing and modulation categorization for efficient data transmission in cognitive radio

被引:0
|
作者
Vijay, E. Vargil [1 ,2 ]
Aparna, K. [3 ]
机构
[1] Jawaharlal Nehru Technol Univ Anantapur, Ananthapuramu, India
[2] HCAH India, Gudlavalleru, India
[3] Jawaharlal Nehru Technol Univ Anantapur JNTUA, Constituent Coll, Constituent Coll, Ananthapuramu, India
关键词
spectrum sensing; cognitive radio; deep learning; jaccard index; F1; score; NETWORKS; CNN; CLASSIFICATION; CHALLENGES;
D O I
10.1088/1402-4896/ad8cb2
中图分类号
O4 [物理学];
学科分类号
0702 ;
摘要
One prominent feature of cognitive radio (CR) involves spectrum sensing (SS), which allows licensed primary users to remain unaffected by secondary users' ability to discover and exploit unoccupied frequency bands. Spectrum sensing enhances the use of spectrum in CR devices, increasing their adaptability and efficiency in wireless communication systems. The rise of wireless equipment and the advent of IoT technologies compound this need for flexibility. Over time, the fixed allocation of frequencies has led to inefficiencies and underutilization as bandwidth needs increase. Deep learning and artificial intelligence have improved spectrum sensing by increasing detection probability of primary users' presence under noisy environments, enabling cognitive radio systems to respond intelligently to fluctuations in RF environments. This article is concerned with deep learning techniques for spectrum sensing and modulation categorization with CBRT structure, which combines convolutional neural networks (CNNs), bidirectional recurrent neural networks (BRNNs), and transformer networks (TNs) to improve spectrum sensing. CNNs are responsible for performing spectrum feature extraction; BRNNs are used to capture temporal dependencies; and TNs are good at long range dependencies. Better performance for this model is aimed by integrating the three architectures described. In the proposed work, six digital modulation schemes were considered, for spectrum sensing. The sensing of spectrum in this model is performed using the RadioML2016.10B open-source dataset and performance metrics like the Jaccard Index (JI), Fowlkes's Mallows Index, and F1 Score. Modulation classification has been performed using MIGOU-MOD open-source dataset. The proposed model exhibits good detection probability and low sensing error, unlike other methods at lower SNR.
引用
收藏
页数:19
相关论文
共 50 条
  • [21] Analytical and learning-based spectrum sensing time optimisation in cognitive radio systems
    Shokri-Ghadikolaei, Hossein
    Abdi, Younes
    Nasiri-Kenari, Masoumeh
    IET COMMUNICATIONS, 2013, 7 (05) : 480 - 489
  • [22] Deep Learning-Based Robust Automatic Modulation Classification for Cognitive Radio Networks
    Kim, Seung-Hwan
    Kim, Jae-Woo
    Nwadiugwu, Williams-Paul
    Kim, Dong-Seong
    IEEE ACCESS, 2021, 9 : 92386 - 92393
  • [23] Deep Learning-based Modulation Classification of Practical OFDM Signals for Spectrum Sensing
    Kim, Byungjun
    Mecklenbrauker, Christoph
    Gerstoft, Peter
    IEEE INFOCOM 2024-IEEE CONFERENCE ON COMPUTER COMMUNICATIONS, 2024, : 1611 - 1620
  • [24] SPECTRUM SENSING AND DATA TRANSMISSION TRADEOFF FOR COGNITIVE RADIO NETWORKS
    Wang, Yan
    Xu, Wenjun
    Gao, Yan
    Li, Shengyu
    He, Zhiqiang
    Lin, Jiaru
    PROCEEDINGS OF THE 3RD IEEE INTERNATIONAL CONFERENCE ON NETWORK INFRASTRUCTURE AND DIGITAL CONTENT (IEEE IC-NIDC 2012), 2012, : 148 - 152
  • [25] Deep Learning Approaches for Spectrum Sensing in Cognitive Radio Networks
    Syed, Sadaf Nazneen
    Lazaridis, Pavlos, I
    Khan, Faheem A.
    Ahmed, Qasim Zeeshan
    Hafeez, Maryam
    Holmes, Violeta
    Chochliouros, Ioannis P.
    Zaharis, Zaharias D.
    2022 25TH INTERNATIONAL SYMPOSIUM ON WIRELESS PERSONAL MULTIMEDIA COMMUNICATIONS (WPMC), 2022,
  • [26] Performance of Machine Learning-Based Techniques for Spectrum Sensing in Mobile Cognitive Radio Networks
    Abusubaih, Murad A.
    Khamayseh, Sundous
    IEEE ACCESS, 2022, 10 : 1410 - 1418
  • [27] A Cognitive Radio Spectrum Sensing Method for an OFDM Signal Based on Deep Learning and Cycle Spectrum
    Pan, Guangliang
    Li, Jun
    Lin, Fei
    INTERNATIONAL JOURNAL OF DIGITAL MULTIMEDIA BROADCASTING, 2020, 2020
  • [28] Visualizing Deep Learning-Based Radio Modulation Classifier
    Huang, Liang
    Zhang, You
    Pan, Weijian
    Chen, Jinyin
    Qian, Li Ping
    Wu, Yuan
    IEEE TRANSACTIONS ON COGNITIVE COMMUNICATIONS AND NETWORKING, 2021, 7 (01) : 47 - 58
  • [29] Efficient Spectrum Sensing with Minimum Transmission Delay in Cognitive Radio Networks
    Hang Hu
    Hang Zhang
    Hong Yu
    Mobile Networks and Applications, 2014, 19 : 487 - 501
  • [30] Energy-Efficient Spectrum Sensing and Transmission for Cognitive Radio System
    Wu, Yuan
    Tsang, Danny H. K.
    IEEE COMMUNICATIONS LETTERS, 2011, 15 (05) : 545 - 547