Smart City Gnosys

Smart city article details

Title Comparative Analysis Of Neural Network-Based Routing Algorithms For Wireless Sensor Networks
ID_Doc 15004
Authors Bellani S.; Yadav M.
Year 2024
Published IEEE International Conference on Signal Processing and Advance Research in Computing, SPARC 2024
DOI http://dx.doi.org/10.1109/SPARC61891.2024.10827846
Abstract Wireless Sensor Networks (WSNs) are integral to diverse applications, including environmental monitoring, healthcare, and smart city infrastructure. The efficiency of data routing within these networks is crucial for optimizing performance and extending the lifespan of sensor nodes. This paper presents a comparative study between neural network-based routing algorithms and traditional protocols in WSNs. The analysis focuses on key performance metrics such as energy consumption, packet delivery ratio, and end-to-end delay across various network scenarios. Our findings highlight the advantages of employing neural networks, which can adapt to dynamic network conditions, thereby enhancing overall efficiency. The study emphasizes the potential of integrating machine learning techniques into WSN routing protocols, offering more intelligent, responsive, and energy-efficient network management solutions. The results suggest a promising future for machine learning-driven approaches in WSNs, with future research opportunities including the exploration of advanced machine learning models and their applicability in large-scale and heterogeneous WSN deployments. This work contributes to the evolving landscape of WSNs, aiming to support the development of smarter and more sustainable networks. © 2024 IEEE.
Author Keywords Backpropagation; Cluster-Based Algorithms; Data Routing; Energy Efficiency; Neural Networks; Predictive Modeling; Wireless Sensor Networks


Similar Articles


Id Similarity Authors Title Published
9026 View0.986Ahmer M.; Sajid A.; Bin Anwar M.H.; Verma T.; Khare P.; Shafeeq M.Analysing Neural Network Techniques For Efficient Routing In Wireless Sensor Networks2024 2nd International Conference Computational and Characterization Techniques in Engineering and Sciences, IC3TES 2024 (2024)
23467 View0.907Kumari A.; Malik S.Energy-Efficient Data Aggregation In Wireless Sensor Networks Using Neural Network-Based Prediction ModelsCommunications on Applied Nonlinear Analysis, 32, 2s (2025)
4281 View0.898Osamy W.; Khedr A.M.; Salim A.; Al Ali A.I.; El-Sawy A.A.A Review On Recent Studies Utilizing Artificial Intelligence Methods For Solving Routing Challenges In Wireless Sensor NetworksPeerJ Computer Science, 8 (2022)
676 View0.898Senthamil Selvi M.; Ranjeeth Kumar C.; Jansi Rani S.A Cluster-Based Routing In Wsn For Smart City Applications Using Neural NetworksJournal of Intelligent and Fuzzy Systems, 44, 6 (2023)
20677 View0.894Jeevanantham S.; Venkatesan C.; Rebekka B.Distributed Neuro-Fuzzy Routing For Energy-Efficient Iot Smart City Applications In WsnTelecommunication Systems, 87, 2 (2024)
989 View0.889Saradha K.R.; Sakthy S.S.A Comprehensive Survey On Energy-Efficient Wireless Sensor Network Protocols For Real-Time Applications2025 International Conference on Computing and Communication Technologies, ICCCT 2025 (2025)
36002 View0.888Sharma H.; Haque A.; Blaabjerg F.Machine Learning In Wireless Sensor Networks For Smart Cities: A SurveyElectronics (Switzerland), 10, 9 (2021)
23222 View0.887Amit; Hanji G.Energy Efficiency Techniques In Wireless Sensor Network For Sensor Nodes2024 Global Conference on Communications and Information Technologies, GCCIT 2024 (2024)
22412 View0.885Park J.; Kang S.; Vo V.-V.; Choo H.Efficient Shortest-Path Tree Construction Based On Graph Convolutional NetworksProceedings of the 2024 18th International Conference on Ubiquitous Information Management and Communication, IMCOM 2024 (2024)
47098 View0.884Min K.T.; Jeyanthi N.Routing Performances In Wireless Sensor Networks: Determining Shortest Path Algorithms EffectivenessInternational Journal of Computer Networks and Communications, 16, 6 (2024)