Knowledge Agora



Similar Articles

Title Energy-balanced neuro-fuzzy dynamic clustering scheme for green & sustainable IoT based smart cities
ID_Doc 40968
Authors Chithaluru, P; Al-Turjman, F; Kumar, M; Stephan, T
Title Energy-balanced neuro-fuzzy dynamic clustering scheme for green & sustainable IoT based smart cities
Year 2023
Published
Abstract The Internet of Things (IoT) is a pervasive computing technology that provides solutions to critical sustainable smart city applications. Each sustainable application has its own set of requirements, including energy efficiency, Quality of Service (QoS), hardware, and software resources. Even though green IoT devices operate in a resource-constrained environment. Monitoring, recognizing, and responding to activities that entail continuous access to timely information in a partially or fully distributed ecosystem is a difficult task. To overcome the challenges of resource management in the IoT, we proposed an energy-efficient Dynamic Clustering Routing (DCR) protocol using a neuro-fuzzy technique for restricting the resources of IoT devices. The proposed protocol uses a dynamic self-organizing neural network to create dynamic clusters in a network. The test-bed analysis is for computing the real-time event detection and clustering sensor nodes using TinyOS. The simulation result shows that the proposed protocol achieved a significant gain over peer-competing well-known green communication routing protocols like Low-energy Adaptive Clustering Hierarchy (LEACH) and Low-energy Adaptive Clustering Hierarchy-Centralized (LEACH-C). The proposed model results show that using neuro-fuzzy logic is effective for sustainable IoT devices and green smart city applications in terms of resource management and dynamic clustering. The result analysis shows that the proposed protocol shows an average 35% significant gain on the First Node Dies (FND), Last Node Dies (LND), the number of packets sent to CH & BS, network convergence time, network overhead, and average packet delay to compare with the LEACH and LEACH-C.
PDF

Similar Articles

ID Score Article
41453 Jeevanantham, S; Venkatesan, C; Rebekka, B Distributed neuro-fuzzy routing for energy-efficient IoT smart city applications in WSN(2024)
41467 Hosseinzadeh, M; Hemmati, A; Rahmani, AM Clustering for smart cities in the internet of things: a review(2022)Cluster Computing-The Journal Of Networks Software Tools And Applications, 25, 6
37260 Verma, S Energy-efficient routing paradigm for resource-constrained Internet of Things-based cognitive smart city(2022)Expert Systems, 39.0, 5
36244 Lei, XT; Guo, Z; Montenegro-Marin, CE; Crespo, RG RETRACTED: Integration of Wireless Sensor Networks with the Smart City for Optimized Economic Management (Retracted Article)(2022)Wireless Personal Communications, 127, Suppl 1
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
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)
38726 Li, MM; Goswami, P; Mukherjee, P; Mukherjee, A; Yang, LX; Ghosh, U; Menon, VG; Qi, YN; Nkenyereye, L Distributed Artificial Intelligence Empowered Sustainable Cognitive Radio Sensor Networks: A Smart City on-demand Perspective(2021)
39289 Yin, Q Design and Application of Smart City Internet of Things Service Platform Based on Fuzzy Clustering Algorithm(2022)
42145 Fanian, F; Rafsanjani, MK CFMCRS: Calibration fuzzy- metaheuristic clustering routing scheme simultaneous in on-demand WRSNs for sustainable smart city(2023)
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