Enhancing cognitive radio networks for education systems: A machine learning approach to optimized spectrum sensing in remote learning environments

Shalini S. Associate, Rajesh Yadav, Leena N. Fukey, Nilofar Mulla, Debashis Dev Misra, Megha Chauhan, Lankoji V. Sambasivarao

Article ID: 10466
Vol 9, Issue 1, 2025

VIEWS - 61 (Abstract)

Abstract


The present study focuses on improving Cognitive Radio Networks (CRNs) based on applying machine learning to spectrum sensing in remote learning scenarios. Remote education requires connection dependability and continuity that can be affected by the scarcity of the amount of usable spectrum and suboptimal spectrum usage. The solution for the proposed problem utilizes deep learning approaches, namely CNN and LSTM networks, to enhance the spectrum detection probability (92% detection accuracy) and consequently reduce the number of false alarms (5% false alarm rate) to maximize spectrum utilization efficiency. By developing the cooperative spectrum sensing where many users share their data, the system makes detection more reliable and energy-saving (achieving 92% energy efficiency) which is crucial for sustaining stable connections in educational scenarios. This approach addresses critical challenges in remote education by ensuring scalability across diverse network conditions and maintaining performance on resource-constrained devices like tablets and IoT sensors. Combining CRNs with new technologies like IoT and 5G improves their capabilities and allows these networks to meet the constantly changing loads of distant educational systems. This approach presents another prospect to spectrum management dilemmas in that education delivery needs are met optimally from any STI irrespective of the availability of resources in the locale. The results show that together with machine learning, CRNs can be considered a viable path to improving the networks’ performance in the context of remote learning and advancing the future of education in the digital environment. This work also focuses on how machine learning has enabled the enhancement of CRNs for education and provides robust solutions that can meet the increasing needs of online learning.


Keywords


Cognitive Radio Networks (CRNs); machine learning; spectrum sensing; deep learning (CNN; LSTM); remote learning environments

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References


Abou Chaaya, J., et al. (2021). Cognitive Radio Networks for Efficient Spectrum Utilization in Education Systems. MDPI.

Anandakumar, H., & Umamaheswari, K. (2017). An efficiently optimized handover in cognitive radio networks using cooperative spectrum sensing. Intelligent Automation & Soft Computing, 1-8.

Balakrishnan, R., et al. (2022). Deep Learning for Spectrum Sensing in Cognitive Radio Networks. MDPI.

Camuñas-Mesa, L. A., et al. (2023). Using Software-Defined Radios and Cognitive Radios for Teaching Communication Systems. MDPI.

Hassan, H. A., et al. (2021). Spectrum Sensing and Cognitive Radio Networks in IoTDriven Environments. MDPI.

Letaief, K. B., & Zhang, W. (2009). Cooperative communications for cognitive radio networks. Proceedings of the IEEE, 97(5), 878-893.

Liang, Y. C., Chen, K. C., Li, G. Y., & Mahonen, P. (2011). Cognitive radio networking and communications: An overview. IEEE transactions on vehicular technology, 60(7), 3386-3407.

Liang, Y., Chen, S., et al. (2020). Spectrum Sensing in Cognitive Radio Networks. IEEE Xplore. Mobile Multimedia Communications, 3(2).

Mitola, J. (1999). Cognitive Radio for Flexible Mobile Multimedia Communications.

Pandit, S., & Singh, G. (2017). Spectrum sharing in cognitive radio networks (pp. 35-75). Berlin, Germany: Springer.

Ramaiah, V. S., Singh, B., Raju, A. R., et al. (2021). Teaching and Learning-based 5G cognitive radio application for future application. In 2021 International Conference on Computational Intelligence and Knowledge Economy (ICCIKE) (pp. 31-36). IEEE.

Solanki, S., et al. (2021). Deep Learning for Spectrum Sensing in Cognitive Radio. MDPI.

Tragos, E. Z., Zeadally, S., Fragkiadakis, A. G., & Siris, V. A. (2013). Spectrum assignment in cognitive radio networks: A comprehensive survey. IEEE communications surveys & tutorials, 15(3), 1108-1135.

Wang, B., & Liu, K. R. (2010). Advances in cognitive radio networks: A survey. IEEE Journal of selected topics in signal processing, 5(1), 5-23.

Wyglinski, A. M., Nekovee, M., & Hou, T. (2009). Cognitive radio communications and networks: principles and practice. Academic Press.

Xie, Z., Peng, X., et al. (2021). CNN-LSTM Spectrum Sensing in Cognitive Radio Networks. IEEE Communications Surveys & Tutorials.

Zhang, P., Liu, Y., Feng, Z., et al. (2012). Intelligent and efficient development of wireless networks: A review of cognitive radio networks. Chinese Science Bulletin, 57, 3662-3676.




DOI: https://doi.org/10.24294/jipd10466

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