Smart City Gnosys

Smart city article details

Title Smart Energy Management Leveraging Twin Adaptive Pulse Coupled Networks For Dynamic Energy Optimization In Iot-Based Electrical Wsn
ID_Doc 50832
Authors Ravi Kumar M.; Irfan B.M.; Sugunadevi C.; Soni U.; Madhu B.K.; Maranan R.
Year 2025
Published Proceedings of 5th International Conference on Trends in Material Science and Inventive Materials, ICTMIM 2025
DOI http://dx.doi.org/10.1109/ICTMIM65579.2025.10987961
Abstract Internet of Things (IoT)-driven Wireless Sensor Networks (WSNs) undergo fast growth hence requiring sophisticated energy optimization methods to keep the networks operational longer with reliable data handling. Traditional energy management practices lead to early node failure combined with inefficient network routes and non-even energy distribution which blocks network development and operational performance expansion. The three main factors that cause WSNs to be energy inefficient are improper node positioning along with excessive routing overhead and uneven distribution of power consumption across sensor nodes. The current network management approaches do not provide adequate dynamic energy distribution which results in premature network failure. This research establishes "Smart Energy Management leveraging Twin Adaptive Pulse Coupled Networks for Dynamic Energy Optimization in IoT-Based WSN (MG-TwinAPC-ReP)" to address these challenges. The proposed framework MGTwinAPC-ReP features four layers which (1) strategic node deployment coverage, (2) Cluster-Based Routing Protocol Using Modified Greylag-Goose Optimization, and (3) Energy management through adaptive load balancing using Twin Adaptive Pulse Coupled Network's dual synchronization model and (4) uses Reformed Poplar Optimization to optimize networking parameters. Experimental results indicate remarkable performance capabilities which lead to a 99.82% increase in network lifetime and 99.74% energy conservation together with 99.91% reliable data delivery and 99.65% reduced latency compared to traditional IoT-WSN systems. The proposed scalable self-adapting energy-efficient WSN model provides an optimal solution for smart cities together with healthcare and agriculture and industrial IoT applications which drives sustainable IoT-driven WSN deployment into the future. © 2025 IEEE.
Author Keywords Cluster-Based Routing; Energy Optimization; Internet of Things; Twin Adaptive Pulse Coupled Network; Wireless Sensor Networks


Similar Articles


Id Similarity Authors Title Published
8457 View0.877Baskaran P.; Karuppasamy K.An Integrated Model For Energy Conservation In Iot-Enabled Wsn Using Adaptive Regional Clustering And Monkey Inspired OptimizationJournal of Intelligent and Fuzzy Systems, 43, 4 (2022)
23793 View0.871Elmonser M.; Alaerjan A.; Jabeur R.; Chikha H.B.; Attia R.Enhancing Energy Distribution Through Dynamic Multi-Hop For Heterogeneous Wsns Dedicated To Iot-Enabled Smart GridsScientific Reports, 14, 1 (2024)
8370 View0.869Darabkh K.A.; Amareen A.B.; Al-Akhras M.; Kassab W.K.An Innovative Cluster-Based Power-Aware Protocol For Internet Of Things Sensors Utilizing Mobile Sink And Particle Swarm OptimizationNeural Computing and Applications, 35, 26 (2023)
23415 View0.868Alomari M.F.; Alrubaye J.S.; Alaidi A.H.M.; Alrikabi H.T.H.S.Energy-Aware Collaborative Routing Protocol Using Bio-Inspired Algorithms For Heterogeneous Wireless Sensor NetworksJournal of Advances in Information Technology, 16, 5 (2025)
49667 View0.865Darabkh K.A.; Al-Akhras M.Smart Cities Optimization Using Computational Intelligence In Power-Constrained Iot Sensor NetworksSwarm and Evolutionary Computation, 94 (2025)
2930 View0.865Beniwal R.; Kumar N.A Nature-Inspired Multi-Objective Green Routing Protocol For Iot-Enabled SdwsnsTransactions on Emerging Telecommunications Technologies, 36, 6 (2025)
3468 View0.864Vijayalakshmi K.; Maheshwari A.; Saravanan K.; Vidyasagar S.; Kalyanasundaram V.; Sattianadan D.; Bereznychenko V.; Narayanamoorthi R.A Novel Network Lifetime Maximization Technique In Wsn Using Energy Efficient AlgorithmsScientific Reports, 15, 1 (2025)
31134 View0.863Venkatesan V.K.; Izonin I.; Periyasamy J.; Indirajithu A.; Batyuk A.; Ramakrishna M.T.Incorporation Of Energy Efficient Computational Strategies For Clustering And Routing In Heterogeneous Networks Of Smart CityEnergies, 15, 20 (2022)
32016 View0.863khan S.; Mazhar T.; Shahzad T.; Ghadi Y.Y.; Hamam H.Integrating Iot And Wsn: Enhancing Quality Of Service Through Energy Efficiency, Scalability, And Secure Communication In Smart SystemsPeer-to-Peer Networking and Applications, 18, 5 (2025)
25051 View0.861Darabkh K.A.; Al-Akhras M.Evolutionary Cost Analysis And Computational Intelligence For Energy Efficiency In Internet Of Things-Enabled Smart Cities: Multi-Sensor Data Fusion And Resilience To Link And Device FailuresSmart Cities, 8, 2 (2025)