Smart City Gnosys

Smart city article details

Title Maximizing Energy Efficiency In Hybrid Overlay-Underlay Cognitive Radio Networks Based On Energy Harvesting-Cooperative Spectrum Sensing
ID_Doc 36508
Authors Liu Y.; Qin X.; Huang Y.; Tang L.; Fu J.
Year 2022
Published Energies, 15, 8
DOI http://dx.doi.org/10.3390/en15082803
Abstract Spectrum demand has increased with the rapid growth of wireless devices and wireless service usage. The rapid development of 5G smart cities and the industrial Internet of Things makes the problem of spectrum resource shortage and increased energy consumption even more severe. To address the issues of high energy consumption for spectrum sensing and low user access rate in the cognitive radio networks (CRN) model powered entirely by energy harvesting, we propose a novel energy harvesting (EH)-distributed cooperative spectrum sensing (DCSS) architecture that allows SUs to acquire from the surrounding environment and radio frequency (RF) signals energy, and an improved distributed cooperative spectrum sensing scheme based on energy-correlation is proposed. First, we formulate an optimization problem to select a leader for each channel; then formulate another optimization problem to select the corresponding cooperative secondary users (SUs). Each channel has a fixed SUs cluster in each time slot to sense the main user state, which can reduce the energy consumption of SUs sensing and can reduce the sensing time, and the remaining time can be used for data transmission to improve throughput, and finally achieve the purpose of improving energy efficiency. Simulation results show that our proposed scheme significantly outperforms the centralized scheme in terms of SUs access capability and energy efficiency. © 2022 by the authors. Licensee MDPI, Basel, Switzerland.
Author Keywords cognitive radio networks; cooperative spectrum sensing; energy harvesting; energy-efficiency; hybrid underlay-overlay scheme


Similar Articles


Id Similarity Authors Title Published
8007 View0.879Khaled H.; Ahmad I.; Habibi D.; Phung Q.V.An Energy-Aware Cognitive Radio-Based Communication Approach For Next Generation Wireless NetworksProceedings - 21st IEEE International Conference on High Performance Computing and Communications, 17th IEEE International Conference on Smart City and 5th IEEE International Conference on Data Science and Systems, HPCC/SmartCity/DSS 2019 (2019)
4156 View0.879Muallim E.; Awal M.R.; Annuar A.Z.A Review Of Integrated Radio Frequency Energy Harvesting And Cognitive Radio For The Internet Of ThingsJournal of Sustainability Science and Management, 18, 4 (2023)
30782 View0.867Rani S.; Babbar H.; Shah S.H.A.; Singh A.Improvement Of Energy Conservation Using Blockchain-Enabled Cognitive Wireless Networks For Smart CitiesScientific Reports, 12, 1 (2022)
16162 View0.858Amaliya Harahap I.H.; Dony Ariananda D.; Nugroho H.A.; Dewanto W.Cooperative Spectrum Sensing For Cognitive Radio Based On Decision Tree Algorithm2023 International Conference on Advanced Mechatronics, Intelligent Manufacture and Industrial Automation, ICAMIMIA 2023 - Proceedings (2023)
19820 View0.857Maharaj B.T.J.; Awoyemi B.S.Developments In Cognitive Radio Networks: Future Directions For Beyond 5GDevelopments in Cognitive Radio Networks: Future Directions for Beyond 5G (2021)
14714 View0.852Lu, WD; Gong, Y; Liu, X; Wu, JY; Peng, HCollaborative Energy And Information Transfer In Green Wireless Sensor Networks For Smart CitiesIEEE TRANSACTIONS ON INDUSTRIAL INFORMATICS, 14, 4 (2018)
46472 View0.851Muallim E.; Annuar A.Z.; Bakhri S.Review Of Rf Energy Harvesting And Cognitive Radio Internet Of ThingsAIP Conference Proceedings, 2484 (2023)