Abstract
Wireless communications have lately experienced substantial exploitation because they provide a lot of flexibility for data delivery. It provides connection and mobility by using air as a medium. Wireless sensor networks (WSN) are now the most popular wireless technologies. They need a communication infrastructure that is both energy and computationally efficient, which is made feasible by developing the best communication protocol algorithms. The internet of things (IoT) paradigm is anticipated to be heavily reliant on a networking architecture that is currently in development and dubbed software-defined WSN. Energy-efficient routing design is a key objective for WSNs. Cluster routing is one of the most commonly used routing techniques for extending network life. This research proposes a novel approach for increasing the energy effectiveness and longevity of software-defined WSNs. The major goal is to reduce the energy consumption of the cluster routing protocol using the firefly algorithm and high-efficiency entropy. According to the findings of the simulation, the suggested method outperforms existing algorithms in terms of system performance under various operating conditions. The number of alive nodes determined by the proposed algorithm is about 42.06% higher than Distributed Energy-Efficient Clustering with firefly algorithm (DEEC-FA) and 13.95% higher than Improved Firefly Clustering IFCEER and 12.05% higher than another referenced algorithm.
Funder
MSIT Korea
Innovative Human Resource Development for Local Intellectualization support program
Publisher
Public Library of Science (PLoS)
Reference96 articles.
1. Online clustering of evolving data streams using a density grid-based method;A. Tareq;IEEE Access,2020
2. Distributed machine learning for multiuser mobile edge computing systems;Y. Guo;IEEE Journal of Selected Topics in Signal Processing,2022
3. Design and analysis of uplink and downlink communications for federated learning;S. Zheng;IEEE Journal of Selected Areas in Communications,2020
4. Secure cache-aided multi-relay networks in the presence of multiple eavesdroppers;J. Xia;IEEE Transactions on Communications,2019
5. Computational intelligence and deep learning for next generation edge-enabled industrial IoT;S. Tang;IEEE Transactions on Networks Science and Engineering,2023