Constraints Mitigation in Cognitive Radio Networks Using Cloud Computing
PDF

Keywords

Cloud Computing
Vast Storage
Computational Capability
Cognitive Radio Network
Spectrum Sensing
Spectrum Management

How to Cite

V, Bindhu. 2020. “Constraints Mitigation in Cognitive Radio Networks Using Cloud Computing”. Journal of Trends in Computer Science and Smart Technology 2 (1): 1-14. https://doi.org/10.36548/jtcsst.2020.1.001.

Abstract

One of the most supportive technologies in enhancing the bandwidth utilization of the next generation network is cognitive radio network (CR-N). However the traditional CR-N is substantially constrained in accessing and the spectrum sensing, due to its limited, processing power and the storage capabilities. To advance the spectrum sensing performance and the spectrum management along with the development in the radio frequency resource allocation in the CR-N the paper clouts the cloud computing services in the proposed method to mitigate the constraints in the cognitive radio networking and also address the intrinsic security threats that are caused by the jamming in the CR-N. The performance of the proposed method is validated and the results are observed to evince the performance enhancement gained in managing the constraint in the CR-N using the cloud.

PDF

References

Xiao, Yang, and Fei Hu, eds. Cognitive radio networks. CRC press, 2008.

Wang, Beibei, and KJ Ray Liu. "Advances in cognitive radio networks: A survey." IEEE Journal of selected topics in signal processing 5, no. 1 (2010): 5-23.

Lee, Won-Yeol, and Ian F. Akyildiz. "Optimal spectrum sensing framework for cognitive radio networks." IEEE Transactions on wireless communications 7, no. 10 (2008): 3845-3857.

Nie, Nie, and Cristina Comaniciu. "Adaptive channel allocation spectrum etiquette for cognitive radio networks." Mobile networks and applications 11, no. 6 (2006): 779-797.

Akyildiz, Ian F., Brandon F. Lo, and Ravikumar Balakrishnan. "Cooperative spectrum sensing in cognitive radio networks: A survey." Physical communication 4, no. 1 (2011): 40-62.

Quan, Zhi, Shuguang Cui, and Ali H. Sayed. "Optimal linear cooperation for spectrum sensing in cognitive radio networks." IEEE Journal of selected topics in signal processing 2, no. 1 (2008): 28-40.

Zhang, Wei, Ranjan K. Mallik, and Khaled Ben Letaief. "Cooperative spectrum sensing optimization in cognitive radio networks." In 2008 IEEE International Conference on Communications, pp. 3411-3415. IEEE, 2008.

Valanarasu, Mr R., and A. Christy. "COMPREHENSIVE SURVEY OF WIRELESS COGNITIVE AND 5G NETWORKS." Journal of Ubiquitous Computing and Communication Technologies (UCCT) (2019): 23-32.

Kumar, T. Senthil. "Efficient resource allocation and QOS enhancements of IoT with FOG network." J ISMAC 1 (2019): 101-110.

Raj, Jennifer S., and S. Smys. "VIRTUAL STRUCTURE FOR SUSTAINABLE WIRELESS NETWORKS IN CLOUD SERVICES AND ENTERPRISE INFORMATION SYSTEM." Journal of ISMAC 1, no. 03 (2019): 188-204.

Bhalaji, N. "DELAY DIMINISHED EFFICIENT TASK SCHEDULING AND ALLOCATION FOR HETEROGENEOUS CLOUD ENVIRONMENT." Journal of trends in Computer Science and Smart technology (TCSST) 1, no. 01 (2019): 51-62.

Shakya, Subarna. "AN EFFICIENT SECURITY FRAMEWORK FOR DATA MIGRATION IN A CLOUD COMPUTING ENVIRONMENT." Journal of Artificial Intelligence 1, no. 01 (2019): 45-53.

Darney, P. Ebby, and I. Jeena Jacob. "PERFORMANCE ENHANCEMENTS OF COGNITIVE RADIO NETWORKS USING THE IMPROVED FUZZY LOGIC." Journal of Soft Computing Paradigm (JSCP) 1, no. 02 (2019): 57-68.

Ghasemi, Amir, and Elvino S. Sousa. "Spectrum sensing in cognitive radio networks: requirements, challenges and design trade-offs." IEEE Communications magazine 46, no. 4 (2008): 32-39.

Akyildiz, Ian F., Won-Yeol Lee, Mehmet C. Vuran, and Shantidev Mohanty. "NeXt generation/dynamic spectrum access/cognitive radio wireless networks: A survey." Computer networks 50, no. 13 (2006): 2127-2159.