Energy Efficient Clustered Architecture in Cognitive Radio Network with Optimum Sensing Time
How to Cite?
Ms. Katre Apurva Daman, Dr. T. C. Thanuja, "Energy Efficient Clustered Architecture in Cognitive Radio Network with Optimum Sensing Time," International Journal of Engineering Trends and Technology, vol. 69, no. 7, pp. 143-149, 2021. Crossref, https://doi.org/10.14445/22315381/IJETT-V69I7P220
Abstract
Cognitive Radio (CR) is an upcoming technology for spectrum usage optimization in wireless communication. Energy Detector(ED) with Cooperative Spectrum Sensing (CSS) is thepreferred detection methodology for CR system. Selecting a appropriate detection threshold for ED is essential to achieve the target Detection Probability (Pd). This work proposes an energy efficient cluster-based CR with optimum sensing time. Clustering organizes Secondary Users (SUs) into sets in order to improve the throughput and stability of Cognitive Radio Networks (CRN). By considering various affecting factors, to establish the optimal clustering is a challenge. This paper is focused ontwo phase Cluster Head (CH) selection based partition clustering algorithm to obtain the balanced clustered architecture with optimum energy efficiency. The result achieved with this clustering verifies the improvement in Pd and energy efficiency of CRN with optimum Sensing Time (Ts).
Keywords
Radio Network, Optimum Sensing Time
Reference
[1] Telecom Regulatory Authority Of India(TRAI)., Consultation Paper on Methodology of applying Spectrum Usage Charges (SUC) under the weighted-average method of SUC assessment, in cases of Spectrum Sharing, New Delhi, India, (2020).
[2] A. M. Joykutty and B. Baranidharan., Cognitive Radio Networks: Recent Advances in Spectrum Sensing Techniques and Security, International Conference on Smart Electronics and Communication (ICOSEC), (2020) 878-884. DOI: 10.1109/ICOSEC49089.2020.9215360.
[3] Hinman, Richard., Application of Cognitive Radio Technology to Legacy Military Waveforms in a JTRS (Joint Tactical Radio System) Radio, MILCOM, (2006) 1-5. 10.1109/MILCOM.2006.302522.
[4] A. Bagwari, S. Tuteja, J. Bagwari, and A. Samarah., Spectrum Sensing Techniques for Cognitive Radio: A Re-examination, IEEE 9th International Conference on Communication Systems and Network Technologies (CSNT), Gwalior, India, (2020)93-96. DOI: 10.1109/CSNT48778.2020.9115795.
[5] Hu X-L, Ho P-H, Peng L., Statistical Properties of Energy Detection for Spectrum Sensing by Using Estimated Noise Variance, Journal of Sensor and Actuator Networks, 8(2) (2019) 28. https://doi.org/10.3390/jsan8020028
[6] Hossain, M.A., Schukat, M. & Barrett, E., Enhancing the Spectrum Sensing Performance of Cluster-Based Cooperative Cognitive Radio Networks via Sequential Multiple Reporting Channels, Wireless PersCommun 116 (2021) 2411–2433.https://doi.org/10.1007/s11277- 020-07802-4
[7] N. Panahi, H. O. Rohi, A. Payandeh and M. S. Haghighi., Adaptation of LEACH routing protocol to cognitive radio sensor networks, 6th International Symposium on Telecommunications (IST), (2012) 541- 547. doi: 10.1109/ISTEL.2012.6483049.
[8] Shakhov, V.; Koo, I., An Efficient Clustering Protocol for Cognitive Radio Sensor Networks, Electronics 10 (2021) 84. https:// doi.org/10.3390/electronics10010084
[9] Pei, E., Han, H., Sun, Z. et al., LEAUCH: low-energy adaptive uneven clustering hierarchy for cognitive radio sensor network, J Wireless Com Network, 122 (2015). https://doi.org/10.1186/s13638-015-0354-x
[10] N. Mansoor, A. K. M. M. Islam, M. Zareei, S. Baharun and S. Komaki., A stable cluster-based architecture for cognitive radio ad-hoc networks, TENCON IEEE Region 10 Conference, (2014) 1-5, doi: 10.1109/TENCON.2014.7022403.
[11] H. B. Salameh, M. F. Dhainat, A. Al-Hajji, R. Aqeli and M. Fathi., A Two-Level Cluster-Based Cognitive Radio Sensor Network: System Architecture, Hardware Design, and Distributed Protocols, IEEE International Conference on Cloud Engineering, (2015) 287-292. doi: 10.1109/IC2E.2015.46.
[12] Amin Shahraki, Amir Taherkordi, Øystein Haugen, Frank Eliassen., Clustering objectives in wireless sensor networks: A survey and research direction analysis,ComputerNetworks, 180 (2020) 107376. ISSN 1389-1286,https://doi.org/10.1016/j.comnet.2020.107376.
[13] D. Arul Selve, K. Kavitha., Cluster Based Resource Allocation Using K-Medoid Clustering Algorithm, IJETT International Journal of Computer Science and Engineering, 3(5) (2016) 10- 13.
[14] S. Zhang, Y. Wang, Y. Zhang, P. Wan and J. Zhuang., Riemannian Distance-Based Fast K-Medoids Clustering Algorithm for Cooperative Spectrum Sensing, in IEEE Systems Journal, doi: 10.1109/JSYST.2021.3056547.
[15] Zhuang, Jiawei& Wang, Yonghua& Wan, Pin & Zhang, Shunchao& Zhang, Yongwei., Centralized spectrum sensing based on covariance matrix decomposition and particle swarm clustering, Physical Communication, 46. 101322. 10.1016/j.phycom.2021.101322, (2021).
[16] M. A. Hossain, M. Schukat and E. Barrett., Enhancing the Spectrum Utilization in Cellular Mobile Networks by Using Cognitive Radio Technology, 30th Irish Signals and Systems Conference (ISSC), (2019) 1-6. doi: 10.1109/ISSC.2019.8904965.
[17] Ye, H., Jiang, J., Optimal linear weighted cooperative spectrum sensing for clustered-based cognitive radio networks. J Wireless Com Network , 84 (2021). https://doi.org/10.1186/s13638-021-01977-5
[18] S. Zhang, Y. Wang, P. Wan, J. Zhuang, Y. Zhang and Y. Li., Clustering Algorithm-Based Data Fusion Scheme for Robust Cooperative Spectrum Sensing, in IEEE Access, 8 (2020) 5777-5786. doi: 10.1109/ACCESS.2019.2963512.
[19] Cerro, Gianni &Mody, Apurva&Saha, Anindya&Reede, Ivan &Miele, Gianfranco., IEEE 802.22/802.22.3 Cognitive Radio Standards: Theory to Implementation, 10.1007/978-981-10-1389-8_54-1, (2017).
[20] S. Bhosle., Emerging trends in small-cell technology, IEEE International Conference on Electrical, Instrumentation and Communication Engineering (ICEICE), Karur, India, (2017) 1-4. doi: 10.1109/ICEICE.2017.8191847.
[21] Johnsymol Joy., Overview of Different Data Clustering Algorithms for Static and Dynamic Data Sets, IJETT International Journal of Computer Science and Engineering (IJETT-IJCSE) – 5(3) (2018) 1-3. ISSN: 2231-8387.
[22] M. Cui, B. Hu, X. Li, H. Chen, S. Hu and Y. Wang., Energy-Efficient Power Control Algorithms in Massive MIMO Cognitive Radio Networks, in IEEE Access, 5 (2017) 1164-1177. doi: 10.1109/ACCESS.2017.2652441.