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

dc.contributor.authorUkpong, Udeme C.
dc.contributor.authorIdowu-Bismark, Olabode
dc.contributor.authorAdetiba, Emmanuel
dc.contributor.authorKala, Jules R.
dc.contributor.authorOwolabi, Emmanuel
dc.contributor.authorOshin, Oluwadamilola
dc.contributor.authorAbayomi, Abdultaofeek
dc.contributor.authorDare, Oluwatobi E.
dc.date.accessioned2025-02-07T07:51:46Z
dc.date.available2025-02-07T07:51:46Z
dc.date.issued2025-03
dc.description.abstractBusinesses, 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 Q-Networks (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.en_US
dc.description.departmentElectrical, Electronic and Computer Engineeringen_US
dc.description.librarianhj2024en_US
dc.description.sdgSDG-09: Industry, innovation and infrastructureen_US
dc.description.sponsorshipThe Covenant Applied Informatics and Communication Africa Centre of Excellence (CApICACE), Google through the Google Award for TensorFlow Outreaches in Colleges.en_US
dc.description.urihttps://www.elsevier.com/locate/sciafen_US
dc.identifier.citationUkpong, U.C., Idowu-Bismark, O., Adetiba, E. et al. 2025, 'Deep reinforcement learning agents for dynamic spectrum access in television whitespace cognitive radio networks', Scientific African, vol. 27, art. e02523, pp. 1-16, doi : 10.1016/j.sciaf.2024.e02523.en_US
dc.identifier.issn2468-2276 (online)
dc.identifier.other10.1016/j.sciaf.2024.e02523
dc.identifier.urihttp://hdl.handle.net/2263/100608
dc.language.isoenen_US
dc.publisherElsevieren_US
dc.rights© 2024 The Authors. Published by Elsevier B.V. This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).en_US
dc.subjectWireless communicationen_US
dc.subjectCognitive radio networksen_US
dc.subjectDeep reinforcement learning (DRL)en_US
dc.subjectDeep Q-networks (DQN)en_US
dc.subjectDynamic spectrum access (DSA)en_US
dc.subjectQuantile-regression deep Q-networks (QR-DQN)en_US
dc.subjectRFRL gymen_US
dc.subjectTelevision whitespace (TVWS)en_US
dc.subjectRadio frequency reinforcement learning (RFRL)en_US
dc.subjectSDG-09: Industry, innovation and infrastructureen_US
dc.titleDeep reinforcement learning agents for dynamic spectrum access in television whitespace cognitive radio networksen_US
dc.typeArticleen_US

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