ENERGY-EFFICIENT ROUTING PROTOCOL FOR WIRELESS SENSOR NETWORKS USING MACHINE LEARNING
DOI:
https://doi.org/10.47390/ts-v3i12y2025N14Keywords:
Machine Learning; Fuzzy Logic, Q-Learning, Cluster Head Selection, Reinforcement Learning.Abstract
Wireless Sensor Networks (WSNs) play an increasingly central role in environmental monitoring, industrial automation, agricultural sensing, and many emerging IoT systems. Due to strict energy limitations of sensor nodes, the design of energy-efficient routing protocols remains one of the most persistent challenges in this field. Traditional routing schemes such as LEACH, HEED, and PEGASIS rely on static rules and often fail to adapt to dynamic network conditions, leading to imbalanced energy consumption and premature node failures.
This paper introduces the Machine Learning–based Energy Efficient Routing Protocol (ML-EERP), a hybrid scheme that combines fuzzy-logic-based cluster-head (CH) selection with Q-learning–based multi-hop routing optimization. The fuzzy system incorporates residual energy, node density, link quality, and distance to the base station into a unified CH decision-making process. Once clusters are established, nodes apply Q-learning to gradually learn optimal next-hop routes that reduce transmission energy while maintaining reliability. Through extensive simulations conducted in MATLAB and Python using the first-order radio energy model, ML-EERP demonstrates significantly superior performance compared to LEACH and HEED. The proposed protocol extends the network lifetime, lowers overall energy consumption, and increases packet delivery ratio.
References
1. Chaudhari, A., Deshpande, V., & Midhunchakkaravarthy, D. (2025). Energy-efficient Q-learning-based routing in wireless sensor networks. International Journal on Smart Sensing and Intelligent Systems, 18(1). https://doi.org/10.2478/ijssis-2025-0008
2. X. Su, Y. Ren, Z. Cai, Y. Liang and L. Guo, "A Q-Learning-Based Routing Approach for Energy Efficient Information Transmission in Wireless Sensor Network," in IEEE Transactions on Network and Service Management, vol. 20, no. 2, pp. 1949-1961, June 2023, doi: 10.1109/TNSM.2022.3218017
3. Karmakar, Payal. (2025). Q-Learning-based Energy-Efficient Custom Cooperative Routing Protocol for Underwater Wireless Sensor Network. Science & Technology Journal. 13. 10.22232/stj.2025.13.01.20
4. Soltani, P., Eskandarpour, M., Ahmadizad, A., & Soleimani, H. (2025). Energy-Efficient Routing Algorithm for Wireless Sensor Networks: A Multi-Agent Reinforcement Learning Approach. arXiv preprint. https://doi.org/10.48550/arXiv.2508.14679
5. Song, Y., Liu, Z., Li, K., He, X., & Zhu, W. Research on High-Efficiency Routing Protocols for HWSNs Based on Deep Reinforcement Learning. Electronics, 13(23), 4746. https://doi.org/10.3390/electronics13234746
6. Sakthimohan, M. et al. Secure deep learning-based energy efficient routing with intrusion detection system for wireless sensor networks, Journal of Ambient Intelligence. https://doi.org/10.3233/JIFS-2355
7. A.Kumar, Deepak Prasad “Deep Learning-Based Route Optimization in Wireless Sensor Networks: Enhancing Energy Efficiency, Reliability, and Scalability” . International Journal of Science and Technology, 1(12). https://doi.org/10.62796/pijst.2024v1i12001
8. Ambareesh, S., Chavan, P., Supreeth, S. et al. A secure and energy-efficient routing using coupled ensemble selection approach and optimal type-2 fuzzy logic in WSN. Sci Rep 15, 38 (2025). https://doi.org/10.1038/s41598-024-82635-w
9. Kumar, A.P., R, S., M, C., Dhananjaya, S., N, K.M., G, N. (2024). An energy-efficient and secure WSN routing protocol using Bayesian networks and elitist genetic algorithms. Journal Européen des Systèmes Automatisés, Vol. 57, No. 6, pp. 1547-1555. https://doi.org/10.18280/jesa.570601
10. R. Alanazi et al. Machine learning-driven routing optimization for energy-efficient WSNs using 6G. https://doi.org/10.1016/j.aej.2025.07.032
11. Shekar, K., Reddy, N.R., Arvind, S. et al. Implementation of novel learning based energy efficient routing protocols in wireless sensor networks for internet of things use cases. Discov Computing 28, 190 (2025). https://doi.org/10.1007/s10791-025-09718-8
12. Thakur, S. et al. (2025). AI-Driven Energy-Efficient Routing in IoT-Based Wireless Sensor Networks: A Comprehensive Review. Sensors, 25(24), 7408.
13. Van-Vi Vo, Tien-Dung Nguyen, Duc-Tai Le, Hyunseung Choo “Distributed Q-learning-based Shortest-Path Tree Construction in IoT Sensor Networks” https://doi.org/10.48550/arXiv.2511.11598
14. Komal Advanced Mathematical Modelling for Energy-Efficient Data Transmission and Fusion in Wireless Sensor Networks. https://doi.org/10.48550/arXiv.2407.12806
15. F. H. El-Fouly, M. Kachout, R. A. Ramadan, A. J. Alzahrani, J. S. Alshudukhi, and I. M. Alseadoon, “Energy-Efficient and Reliable Routing for Real-time Communication in Wireless Sensor Networks”, Eng. Technol. Appl. Sci. Res., vol. 14, no. 3, pp. 13959–13966, Jun. 2024.


