Design of a System For QoS1 Optimizing And Load Balancing In Wi-Fi Networks Using The Ryu Controller In Software-Defined Network
Keywords:
Machine learning, SDN, QoS, WiFi networks, Load balancingAbstract
The growing demand for connectivity, combined with the exponential increase in data traffic, presents significant challenges for WiFi networks, particularly in managing quality of service and load balancing. These issues are further intensified by technological advancements and the integration of systems such as Artificial Intelligence and the Internet of Things, which generate data volumes that current infrastructures struggle to handle efficiently. To address this, the project proposes designing a system based on an SDN environment that, using the Ryu controller, integrates QoS and load balancing algorithms supported by machine learning techniques. The methodology involves analysis, design, implementation, evaluation, and optimization through simulations and testing in various scenarios. The system is expected to improve traffic distribution, reduce latency and packet loss, and optimize other network resources, ensuring a better user experience and greater operational efficiency amid growing demands. In conclusion, the proposed solution tackles current congestion and overload issues in WiFi networks with an SDN and machine learning-based approach, providing an efficient and scalable alternative to enhance the performance of modern networks.
References
Alhilali, A. and Montazerolghaem, A. (2023). Artificial intelligence-based load balancing in sdn: A comprehensive survey. Internet of Things, 21:100814.
Bank, W. (2024). Global digitalization in 10 charts.
Fernández, R. (2023). Energy efficiency and network performance: A reality check in sdn-based 5g systems. Energies, 10(12).
Gebremariam, T. (2019). Artificial intelligence based load balancing in sdn. ScienceDirect.
González Sarabia, C. (2023). Working together: A review on safe human–robot collaboration in industrial environments. IEEE Access, 5:26754–26773.
Gopal, K. (2023). Machine learning in software defined network. ResearchGate.
Hilbert, M. (2010). When is cheap, cheap enough to bridge the digital divide? modeling income related structural challenges of technology diffusion in latin america. World Development, 38(5):756–770.
Maria D., O. P. (2024). Artificial intelligence based load balancing in sdn: A comprehensive survey. ResearchGate.
MDMARKETINGDIGITAL (2024). Wi-fi marketing essentials: Turn a basic utility into a profit center. Forbes.
Olaya, M. E., Bernal, I., and Mejía, D. (2016). Application for load balancing in sdn. In 2016 8th Euro American Conference on Telematics and Information Systems (EATIS), pages 1–8. IEEE.
Serag, R. H., Abdalzaher, M. S., Hussein Abd El, A. E., Sobh, M., Krichen, M., and Salim, M. M. (2024). Machine-learning-based traffic classification in software-defined networks. Electronics, 13(6):1108.
Sridevi, K. and Saifulla, M. A. (2023). Lbabc: Distributed controller load balancing using artificial bee colony optimization in an sdn. Peer-to-Peer Networking and Applications, 6(2):947–957.
Todorov, D., Valchanov, H., and Aleksieva, V. (2020). Load balancing model based on machine learning and segment routing in sdn. In 2020 International Conference Automatics and Informatics (ICAI), pages 1–4. IEEE.
Yang, C. T., Chen, S. T., Liu, J. C., Su, Y. W., Puthal, D., and Ranjan, R. (2019). A predictive load balancing technique for software defined networked cloud services. Computing, 101:211–235.
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Copyright (c) 2025 Jorge Gómez Gómez, Juan Cueto Morelo

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