Smart City Gnosys

Smart city article details

Title Optimizing Cluster Head Selection In Wireless Sensor Networks Using Mathematical Modeling And Statistical Analysis Of The Hybrid Energy-Efficient Distributed (Heed) Algorithm
ID_Doc 40774
Authors Kanase S.; Babavali S.F.; Kothapalli S.K.; Thangam A.; Labhade-Kumar N.; Bhoopathy V.
Year 2024
Published Communications on Applied Nonlinear Analysis, 31, 6S
DOI http://dx.doi.org/10.52783/cana.v31.1247
Abstract Only two of the various applications for Wireless Sensor Networks (WSNs) are environmental monitoring and smart city infrastructure. Mostly the efficacy of these networks depends on the choice of cluster heads, which manage data aggregation and communication. Conventional approaches as the Hybrid Energy-Efficient Distributed (HEED) algorithm have become relatively popular for cluster head selection because of their simplicity and efficiency. These techniques, meanwhile, sometimes assume a homogeneous node distribution—hardly the case in real-world scenarios. From this follows lower network lifetime and less than optimum energy consumption. Extending network lifetime and improving energy economy depend mostly on maximizing cluster head selection in non-uniformly distributed WSNs. The standard HEED approach ignores the non-uniformity in node distribution, so inefficient energy use and reduced performance can follow. This article provides a new way integrating mathematical modeling and statistical analysis with a non-uniform deep artificial neural network (ANN) to improve the HEED algorithm. The proposed method combines this information with the spatial distribution of sensor nodes using a deep ANN, so simulating the cluster head selecting process. Trained to predict perfect cluster heads, the ANN is evaluated in terms of node density, energy levels, and communication expenses. Mathematical modeling of the network's energy dynamics yields validations for the model using statistical analysis. The optimal approach was tested in a simulated WSN environment including non-uniform node distribution. Compared to the traditional HEED method, results reveal a 25% increase in network lifetime and a 30% drop in energy use. Moreover showing a clear improvement in data aggregation performance, the deep ANN-based approach cut the communication overhead by 20%. © 2024, International Publications. All rights reserved.
Author Keywords Cluster Head Selection; Deep Artificial Neural Network; Energy Efficiency; HEED Algorithm; Wireless Sensor Networks


Similar Articles


Id Similarity Authors Title Published
14502 View0.919Nidhya M.S.; Gurumoorthi E.; Babu M.; Charumathi A.C.; Naved M.; Maram B.Cluster Head Selection Algorithm Using Machine Learning4th International Conference on Sentiment Analysis and Deep Learning, ICSADL 2025 - Proceedings (2025)
35434 View0.917Srivastava A.; Mishra P.K.Load-Balanced Cluster Head Selection Enhancing Network Lifetime In Wsn Using Hybrid Approach For Iot ApplicationsJournal of Sensors, 2023 (2023)
40714 View0.886Sambo D.W.; Yenke B.O.; Förster A.; Dayang P.Optimized Clustering Algorithms For Large Wireless Sensor Networks: A ReviewSensors (Switzerland), 19, 2 (2019)
23874 View0.881Pichamuthu R.; Matheswaran S.; Sengodan P.; Rajkannan K.; Prabhakaran M.Enhancing Network Lifetime In Iot-Based Wireless Sensor Networks Through Mssa-Driven Cluster Head OptimizationICDT 2025 - 3rd International Conference on Disruptive Technologies (2025)
14503 View0.879Jesi P.M.; Antony Asir Daniel V.; Rajagopal R.; Femila L.Cluster Head Selection Using Multi-Dilation Convolutional Neural Network Optimized With Bcmo For Iot NetworksIETE Journal of Research, 70, 8 (2024)
676 View0.875Senthamil 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)
8457 View0.873Baskaran 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)
23460 View0.872Devassy D.; Johnraja J.I.; Paulraj G.J.L.Energy-Efficient Chicken Swarm Optimization Algorithm Using Multiple Cluster Head Selection In Wireless Sensor NetworksICISTSD 2022 - 3rd International Conference on Innovations in Science and Technology for Sustainable Development (2022)
48655 View0.872Sharma N.; Gupta V.; Johri P.; Elngar A.A.Sho-Ch: Spotted Hyena Optimization For Cluster Head Selection To Optimize Energy In Wireless Sensor NetworkPeer-to-Peer Networking and Applications, 18, 3 (2025)
913 View0.871Nedham W.B.; Al-Qurabat A.K.M.A Comprehensive Review Of Clustering Approaches For Energy Efficiency In Wireless Sensor NetworksInternational Journal of Computer Applications in Technology, 72, 2 (2023)