Smart City Gnosys

Smart city article details

Title Gradient Enhanced Regressive Multivariate Artificial Fish Swarm Optimized Data Collection For Iot-Enabled Wsn In Smart Environments
ID_Doc 28237
Authors Sheeja Rani S.; Mostafa R.R.; Bannany M.E.; Khedr A.M.
Year 2023
Published 2023 International Conference on Advances in Intelligent Computing and Applications, AICAPS 2023
DOI http://dx.doi.org/10.1109/AICAPS57044.2023.10074386
Abstract The emerging Internet of Things (IoT)-based Wireless Sensor Networks (WSN) consist of small size of sensor nodes for monitoring and collecting data from environmental conditions and it transmits to other sensors through the internet. The major issues in WSN are energy constraints that degrade the efficient functioning and lifetime of WSN. Therefore, a novel technique called Gradient Enhanced Broken-stick Regressive Multivariate Artificial Fish Swarm Optimized Data Collection (GEBRMAFSODC) is introduced. The main objective of the GEBRMAFSODC technique for performing energy-efficient data collection with lesser delay , data loss. Smart cities improve effectiveness of different applications including public transport services. By applying this method, the resource efficient optimal path and the population of artificial fishes (i.e. sensor nodes) is randomly initialized in the search space. For each node, fitness is measured depend on multivariate function namely energy, bandwidth, and distance. The Gradient Enhanced Broken-stick Regression is applied to fitness estimation for analyzing the resources and finding the optimal results. Efficient neighboring nodes are selected to transmit the collected data to sink node via best path. Sink node perform as a data collector with better resource sensor nodes through lesser delay. Simulation is conducted in NS2 simulator using Warrigal Dataset and the performance is analyzed by various parameters namely energy consumption, data collection delay, throughput, and data loss rate based on number of data. The observed result shows the superior performance of the proposed GEBRMAFSODC technique with a higher delivery ratio, throughput by 10%, 48% and lesser loss, delay, and energy consumption by 53%, 37%, and 27% as compared to other related methods respectively. © 2023 IEEE.
Author Keywords data collection; Gradient-enhanced broken-stick regression; Multivariate Artificial Fish Swarm Optimization; WSN-IoT


Similar Articles


Id Similarity Authors Title Published
37593 View0.863Srinivasan B.; Kalimuthu V.K.; Muthu T.; Velumani R.Modeling Of Tuna Swarm Algorithm Based Unequal Clustering Approach On Internet Of Things Assisted NetworksBrazilian Archives of Biology and Technology, 67 (2024)
28645 View0.862Singh S.; Nikolovski S.; Chakrabarti P.Gwlbc: Gray Wolf Optimization Based Load Balanced Clustering For Sustainable Wsns In Smart City EnvironmentSensors, 22, 19 (2022)
23460 View0.858Devassy 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)
49667 View0.858Darabkh K.A.; Al-Akhras M.Smart Cities Optimization Using Computational Intelligence In Power-Constrained Iot Sensor NetworksSwarm and Evolutionary Computation, 94 (2025)
622 View0.857Wen D.; Cao Q.; Feng S.; Zhang Z.; Zhou P.A Chaotic Elite Cloning Artificial Jellyfish Algorithm For Efficient Task Allocation In IotwsnsIEEE Sensors Journal, 25, 4 (2025)
11959 View0.855Mutneja L.S.; Harkut D.G.; Thakar P.D.Bicc: Optimizing Sensor Network Performance Via An Efficient Bioinspired Iterative Approach With Congestion ControlLecture Notes in Networks and Systems, 962 LNNS (2025)
30756 View0.855Kumar A.; Agrawal K.K.Improved Swarm Based Distributed Energy- Efficient Clustering Protocol For Iot Network Using Hybrid Optimization MethodJournal of Information Systems Engineering and Management, 10 (2025)
8370 View0.855Darabkh 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)
27915 View0.855Bharathi S.D.; Veni S.Geographical Energy-Aware Data Aggregation Using Mobile Sinks (Geadams) Algorithm In Wireless Sensor Networks To Minimize LatencyInternational Journal of Performability Engineering, 21, 5 (2025)
40777 View0.855Basirnezhad M.; Houshmand M.; Hosseini S.A.; Jalali M.Optimizing Coverage In Wireless Sensor Networks Using The Cheetah Meta-Heuristic Algorithm7th International Conference on Internet of Things and Applications, IoT 2023 (2023)