Smart City Gnosys

Smart city article details

Title Geographical Energy-Aware Data Aggregation Using Mobile Sinks (Geadams) Algorithm In Wireless Sensor Networks To Minimize Latency
ID_Doc 27915
Authors Bharathi S.D.; Veni S.
Year 2025
Published International Journal of Performability Engineering, 21, 5
DOI http://dx.doi.org/10.23940/ijpe.25.05.p6.288297
Abstract Wireless Sensor Networks (WSNs) are critically vital in real-time data transmission and acquisition. Unfortunately, they are often afflicted with high latency, because of inefficient approaches for data routing and aggregation. To resolve the above issues, we propose the Geographical Energy-Conscious Data Aggregation Using Mobile Sinks (GEADAMS) Algorithm for maximal data aggregation with minimal delay. GEADAMS invokes geographic information and energy-conscious routing for dynamically choosing rendezvous points so as to reduce long-distance transmission and share energy consumption among sensor nodes. Adding the mobile sinks, introduced by this approach, greatly facilitates efficient data collection in handling data collected from several sources, thus preventing the congestion and thereby ensuring seamless delivery of data. The protocol has been compared with other existing protocols, viz., LEACH, GEAR, and RPM, through performance parameters like throughput, energy consumption, Packet Delivery Ratio (PDR), and Latency. Simulation results confirm that GEADAMS outperforms other approaches under similar testing scenarios with high throughput, energy savings, and low latency working efficiently without compromising on reliability. The novel method increases overall network life through reduced selection of nodes and reduced transmission flooding. The research paves the way for making the WSN even more efficient for high-speed routing in more dynamic environments such as environment monitoring, rescue during disasters, and smart cities. Future work will investigate machine learning approaches that will assist further in improvements in adaptive routing design in dynamic WSN networks. © 2025 Totem Publisher, Inc. All rights reserved.
Author Keywords data aggregation; energy efficiency; geographical energy; transmission delays; wireless sensor networks


Similar Articles


Id Similarity Authors Title Published
19064 View0.879Minhas D.; Suresh V.G.; Patil M.S.; Kumar R.; Kumar A.; Primmia D.R.Designing An Energy-Efficient Virtual Cell-Based Data Propagation Scheme For Wireless Sensor Networks With Single Mobile Sink2024 IEEE 4th International Conference on ICT in Business Industry and Government, ICTBIG 2024 (2024)
24194 View0.872El-Fouly F.H.; Kachout M.; Alharbi Y.; Alshudukhi J.S.; Alanazi A.; Ramadan R.A.Environment-Aware Energy Efficient And Reliable Routing In Real-Time Multi-Sink Wireless Sensor Networks For Smart Cities ApplicationsApplied Sciences (Switzerland), 13, 1 (2023)
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)
15297 View0.867Mahmoud A.A.; Al-Mahdi H.; Ali A.F.; Abd El Salam K.; Elgohary R.Comprehensive Analysis Of Data Collection Approaches In Wireless Sensor NetworksLecture Notes on Data Engineering and Communications Technologies, 220 (2024)
2672 View0.865Ahlawat N.; Kaur J.A Mobility Based Approach To Strengthen The Network Lifetime Of Wireless Sensor Networks In 3D RegionInternational Journal of Sensors, Wireless Communications and Control, 14, 1 (2024)
23467 View0.863Kumari A.; Malik S.Energy-Efficient Data Aggregation In Wireless Sensor Networks Using Neural Network-Based Prediction ModelsCommunications on Applied Nonlinear Analysis, 32, 2s (2025)
23793 View0.862Elmonser 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)
17231 View0.86Gurewitz O.; Shifrin M.; Dvir E.Data Gathering Techniques In Wsn: A Cross-Layer ViewSensors, 22, 7 (2022)
47098 View0.858Min K.T.; Jeyanthi N.Routing Performances In Wireless Sensor Networks: Determining Shortest Path Algorithms EffectivenessInternational Journal of Computer Networks and Communications, 16, 6 (2024)
30698 View0.858Reddy G.V.R.; Abhiram P.S.; Ashwanth G.P.N.; Narayana G.S.; Thangam S.Improved Cluster-Based Data Aggregation In Wsn For Efficient Data Transmission Using Pegasis-Teen Hybrid AlgorithmProceedings of 2025 International Conference on Computing for Sustainability and Intelligent Future, COMP-SIF 2025 (2025)