Smart City Gnosys

Smart city article details

Title An Energy-Efficient Auto Clustering Framework For Enlarging Quality Of Service In Internet Of Things-Enabled Wireless Sensor Networks Using Fuzzy Logic System
ID_Doc 8014
Authors Padmanaban P.I.V.; Shanmugaperumal Periasamy M.; Aruchamy P.
Year 2022
Published Concurrency and Computation: Practice and Experience, 34, 25
DOI http://dx.doi.org/10.1002/cpe.7269
Abstract The advancement of the Internet of Things (IoT) technologies will play a vital role in the evolution of the smart city, smart healthcare, and smart grid applications. Wireless sensor network (WSN) is one of the futuristic technologies utilized for sensing and data exchange processes in IoT-enabled applications. However, the hotspot problem, control packet overhead, and inefficient clustering are the most significant challenges to attaining an energy-efficient IoT-enabled WSN (IWSN) model. Most of the existing clustering schemes lagged to mitigate these aforesaid constraints since it consumes extra energy for data computation and forwarding tasks under any environmental conditions. In this article, a novel energy-efficient auto clustering (EEAC) framework has been proposed to develop an effective IWSN model with enhanced quality of service. The EEAC framework comprises three phases such as zone formation, node classification, and auto clustering phases. The objective of the first phase is to significantly form the different zones by alleviating the hotspot problem. Subsequently, the fuzzy logic algorithm is employed in the second phase to classify the nodes as master, sub-master, and member nodes. Finally, the third phase of the proposed framework will accomplish the auto clustering mechanism based on hop information received from the reported packet. The performance results evident that the proposed EEAC framework obtains a lesser energy consumption of 0.01 J during a dense network and the network lifetime is prolonged up to 52% when compared with existing state-of-the-art clustering models. © 2022 John Wiley & Sons, Ltd.
Author Keywords auto clustering; energy computation; fuzzy logic; hotspot problem; Internet of Things; wireless sensor network


Similar Articles


Id Similarity Authors Title Published
27591 View0.908Sebastin Suresh S.; Prabhu V.; Parthasarathy V.Fuzzy Logic Based Nodes Distributed Clustering For Energy Efficient Fault Tolerance In Iot-Enabled WsnJournal of Intelligent and Fuzzy Systems, 44, 3 (2023)
23436 View0.879Chithaluru P.; Al-Turjman F.; Kumar M.; Stephan T.Energy-Balanced Neuro-Fuzzy Dynamic Clustering Scheme For Green & Sustainable Iot Based Smart CitiesSustainable Cities and Society, 90 (2023)
40714 View0.877Sambo D.W.; Yenke B.O.; Förster A.; Dayang P.Optimized Clustering Algorithms For Large Wireless Sensor Networks: A ReviewSensors (Switzerland), 19, 2 (2019)
34823 View0.873Mehra P.S.Lbecr: Load Balanced, Efficient Clustering And Routing Protocol For Sustainable Internet Of Things In Smart CitiesJournal of Ambient Intelligence and Humanized Computing, 14, 8 (2023)
20677 View0.87Jeevanantham S.; Venkatesan C.; Rebekka B.Distributed Neuro-Fuzzy Routing For Energy-Efficient Iot Smart City Applications In WsnTelecommunication Systems, 87, 2 (2024)
8457 View0.869Baskaran 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)
39250 View0.868Sharma P.; Sharma M.; Singh R.; Kumar V.; Agarwal R.; Malik P.K.Nharso-Iwsn: A Novel Hybridized Adaptive-Network-Based Fuzzy Inference System With Reptile Search Optimization Algorithm-Based Routing Protocol For Internet Of Things-Enabled Wireless Sensor NetworksIEEE Transactions on Consumer Electronics, 70, 3 (2024)
29744 View0.865Aleem A.; Thumma R.Hybrid Energy-Efficient Clustering With Reinforcement Learning For Iot-Wsns Using Knapsack And K-MeansIEEE Sensors Journal (2025)
8370 View0.864Darabkh 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)
49667 View0.863Darabkh K.A.; Al-Akhras M.Smart Cities Optimization Using Computational Intelligence In Power-Constrained Iot Sensor NetworksSwarm and Evolutionary Computation, 94 (2025)