Deep reinforcement learning agents for dynamic spectrum access in television whitespace cognitive radio networks

被引:0
|
作者
Ukpong, Udeme C. [1 ,2 ]
Idowu-Bismark, Olabode [1 ,2 ]
Adetiba, Emmanuel [1 ,2 ,5 ]
Kala, Jules R. [3 ]
Owolabi, Emmanuel [4 ]
Oshin, Oluwadamilola [1 ,2 ]
Abayomi, Abdultaofeek [6 ,7 ]
Dare, Oluwatobi E. [1 ,2 ]
机构
[1] Covenant Univ, Dept Elect & Informat Engn, Ota, Nigeria
[2] Covenant Univ, Covenant Appl Informat & Commun African Ctr Excell, Ota, Nigeria
[3] Int Univ Grand Bassam, Grand Bassam, Cote Ivoire
[4] Univ Pretoria, Pretoria, South Africa
[5] Durban Univ Technol, Inst Syst Sci, HRA, Durban, South Africa
[6] Walter Sisulu Univ, HRA, ZA-5200 East London, South Africa
[7] Summit Univ, Innovat & Adv Sci Res Grp IASRG, PMB 4412, Offa, Kwara, Nigeria
关键词
Cognitive radio networks; Deep reinforcement learning; DQN; Dynamic spectrum access; QR-DQN; Television whitespace; RFRL gym; MULTIPLE-ACCESS; ALLOCATION;
D O I
10.1016/j.sciaf.2024.e02523
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
Businesses, security agencies, institutions, and individuals depend on wireless communication to run their day-to-day activities successfully. The ever-increasing demand for wireless communication services, coupled with the scarcity of available radio frequency spectrum, necessitates innovative approaches to spectrum management. Cognitive Radio (CR) technology has emerged as a pivotal solution, enabling dynamic spectrum sharing among secondary users while respecting the rights of primary users. However, the basic setup of CR technology is insufficient to manage spectrum congestion, as it lacks the ability to predict future spectrum holes, leading to interferences. With predictive intelligence and Dynamic Spectrum Access (DSA), a CR can anticipate when and where other users will be using the radio frequency spectrum, allowing it to overcome this limitation. Reinforcement Learning (RL) in CRs helps predict spectral changes and identify optimal transmission frequencies. This work presents the development of Deep RL (DRL) models for enhanced DSA in TV Whitespace (TVWS) cognitive radio networks using Deep QNetworks (DQN) and Quantile-Regression (QR-DQN) algorithms. The implementation was done in the Radio Frequency Reinforcement Learning (RFRL) Gym, a training environment of the RF spectrum designed to provide comprehensive functionality. Evaluations show that the DQN model achieves a 96.34 % interference avoidance rate compared to 95.97 % of QRDQN. Average latency was estimated at 1 millisecond and 3.33 milliseconds per packet, respectively. Therefore DRL proves to be a more flexible, scalable, and adaptive approach to dynamic spectrum access, making it particularly effective in the complex and constantly evolving wireless spectrum environment.
引用
收藏
页数:16
相关论文
共 50 条
  • [1] Dynamic Spectrum Access in Cognitive Radio Networks Using Deep Reinforcement Learning and Evolutionary Game
    Yang, Peitong
    Li, Lixin
    Yin, Haying
    Zhang, Huisheng
    Liang, Wei
    Chen, Wei
    Han, Zhu
    2018 IEEE/CIC INTERNATIONAL CONFERENCE ON COMMUNICATIONS IN CHINA (ICCC), 2018, : 405 - 409
  • [2] Dynamic spectrum access based on deep reinforcement learning for multiple access in cognitive radio
    Li, Zeng-qi
    Liu, Xin
    Ning, Zhao-long
    PHYSICAL COMMUNICATION, 2022, 54
  • [3] Reinforcement Learning for Opportunistic Spectrum Access in Cognitive Radio Networks
    Zhao, Fie
    Qu, Daiming
    Zhong, Guohui
    Cao, Yang
    2010 INTERNATIONAL CONFERENCE ON COMMUNICATION AND VEHICULAR TECHNOLOGY (ICCVT 2010), VOL I, 2010, : 116 - 120
  • [4] Reinforcement Learning Based Auction Algorithm for Dynamic Spectrum Access in Cognitive Radio Networks
    Teng, Yinglei
    Zhang, Yong
    Niu, Fang
    Dai, Chao
    Song, Mei
    2010 IEEE 72ND VEHICULAR TECHNOLOGY CONFERENCE FALL, 2010,
  • [5] A Novel Dynamic Spectrum Access Framework Based on Reinforcement Learning for Cognitive Radio Sensor Networks
    Lin, Yun
    Wang, Chao
    Wang, Jiaxing
    Dou, Zheng
    SENSORS, 2016, 16 (10)
  • [6] Deep Reinforcement Learning for Dynamic Spectrum Access in Wireless Networks
    Xu, Y.
    Yu, J.
    Headley, W. C.
    Buehrer, R. M.
    2018 IEEE MILITARY COMMUNICATIONS CONFERENCE (MILCOM 2018), 2018, : 207 - 212
  • [7] An overview of deep reinforcement learning for spectrum sensing in cognitive radio networks
    Obite, Felix
    Usman, Aliyu D.
    Okafor, Emmanuel
    DIGITAL SIGNAL PROCESSING, 2021, 113
  • [8] An overview of deep reinforcement learning for spectrum sensing in cognitive radio networks
    Obite, Felix
    Usman, Aliyu D.
    Okafor, Emmanuel
    Digital Signal Processing: A Review Journal, 2021, 113
  • [9] Deep-Reinforcement-Learning-Based Distributed Dynamic Spectrum Access in Multiuser Multichannel Cognitive Radio Internet of Things Networks
    Zhang, Xiaohui
    Chen, Ze
    Zhang, Yinghui
    Liu, Yang
    Jin, Minglu
    Qiu, Tianshuang
    IEEE INTERNET OF THINGS JOURNAL, 2024, 11 (10): : 17495 - 17509
  • [10] Reinforcement-Learning-Based Double Auction Design for Dynamic Spectrum Access in Cognitive Radio Networks
    Teng, Yinglei
    Yu, F. Richard
    Han, Ke
    Wei, Yifei
    Zhang, Yong
    WIRELESS PERSONAL COMMUNICATIONS, 2013, 69 (02) : 771 - 791