Knowledge Agora



Similar Articles

Title GWLBC: Gray Wolf Optimization Based Load Balanced Clustering for Sustainable WSNs in Smart City Environment
ID_Doc 38400
Authors Singh, S; Nikolovski, S; Chakrabarti, P
Title GWLBC: Gray Wolf Optimization Based Load Balanced Clustering for Sustainable WSNs in Smart City Environment
Year 2022
Published Sensors, 22, 19
Abstract In a smart city environment, with increased demand for energy efficiency, information exchange and communication through wireless sensor networks (WSNs) plays an important role. In WSNs, the sensors are usually operating in clusters, and they are allowed to restructure for effective communication over a large area and for a long time. In this scenario, load-balanced clustering is the cost-effective means of improving the system performance. Although clustering is a discrete problem, the computational intelligence techniques are more suitable for load balancing and minimizing energy consumption with different operating constraints. The literature reveals that the swarm intelligence-inspired computational approaches give excellent results among population-based meta-heuristic approaches because of their more remarkable exploration ability. Conversely, in this work, load-balanced clustering for sustainable WSNs is presented using improved gray wolf optimization (IGWO). In a smart city environment, the significant parameters of energy-efficient load-balanced clustering involve the network lifetime, dead cluster heads, dead gateways, dead sensor nodes, and energy consumption while ensuring information exchange and communication among the sensors and cluster heads. Therefore, based on the above parameters, the proposed IGWO is compared with the existing GWO and several other techniques. Moreover, the convergence characteristics of the proposed algorithm are demonstrated for an extensive network in a smart city environment, which consists of 500 sensors and 50 cluster heads deployed in an area of 500 x 500 m(2), and it was found to be significantly improved.
PDF https://www.mdpi.com/1424-8220/22/19/7113/pdf?version=1665284702

Similar Articles

ID Score Article
41854 Abdulwahid, HM; Mishra, A Deployment Optimization Algorithms in Wireless Sensor Networks for Smart Cities: A Systematic Mapping Study(2022)Sensors, 22, 14
36859 Singh, S; Garg, D; Manju; Malik, A A novel cluster head selection algorithm based IoT enabled heterogeneous WSNs distributed architecture for smart city(2023)
38993 Selvi, MS; Kumar, CR; Rani, SJ A cluster-based routing in WSN for smart city applications using neural networks(2023)Journal Of Intelligent & Fuzzy Systems, 44, 6
39225 Keshari, SK; Kansal, V; Kumar, S A Cluster Based Intelligent Method To Manage Load Of Controllers In Sdn-Iot Networks For Smart Cities(2021)Scalable Computing-Practice And Experience, 22, 2
41566 Sirsikar, S; Chandak, M Energy-Efficient Self-organization Wireless Sensor Network for Traffic Management in Smart Cities(2017)
42145 Fanian, F; Rafsanjani, MK CFMCRS: Calibration fuzzy- metaheuristic clustering routing scheme simultaneous in on-demand WRSNs for sustainable smart city(2023)
37367 Roshan, R; Rishi, OP Design and Development of Multi-Objective Hybrid Clustering Framework for Smart City in India Using Internet of Things(2023)Journal Of Information & Knowledge Management, 22.0, 1
42571 Alazab, M; Lakshmanna, K; Reddy, GT; Pham, QV; Maddikunta, PKR Multi-objective cluster head selection using fitness averaged rider optimization algorithm for IoT networks in smart cities(2021)
39037 Venkatesan, VK; Izonin, I; Periyasamy, J; Indirajithu, A; Batyuk, A; Ramakrishna, MT Incorporation of Energy Efficient Computational Strategies for Clustering and Routing in Heterogeneous Networks of Smart City(2022)Energies, 15, 20
43808 Praveen, KV; Prathap, PMJ Energy Efficient Congestion Aware Resource Allocation and Routing Protocol for IoT Network using Hybrid Optimization Techniques(2021)Wireless Personal Communications, 117, 2
Scroll