Hybrid swarm intelligence based qos aware clustering with routing protocol for wsn

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Abstract

Wireless Sensor Networks (WSN) started gaining attention due to its wide application in the fields of data collection and information processing. The recent advancements in multimedia sensors demand the Quality of Service (QoS) be maintained up to certain standards. The restrictions and requirements in QoS management completely depend upon the nature of target application. Some of the majorQoS parameters inWSNare energy efficiency, network lifetime, delay and throughput. In this scenario, clustering and routing are considered as themost effective techniques tomeet the demands of QoS. Since they are treated as NP (Non-deterministic Polynomial-time) hard problem, SwarmIntelligence (SI) techniques can be implemented. The current research work introduces a new QoS aware Clustering and Routing-based technique using Swarm Intelligence (QoSCRSI) algorithm. The proposed QoSCRSI technique performs two-level clustering and proficient routing. Initially, the fuzzy is hybridized with GlowwormSwarm Optimization (GSO)- based clustering (HFGSOC) technique for optimal selection of Cluster Heads (CHs). Here, Quantum Salp Swarm optimization Algorithm (QSSA)-based routing technique (QSSAR) is utilized to select the possible routes in the network. In order to evaluate the performance of the proposed QoSCRSI technique, the authors conducted extensive simulation analysis with varying node counts. The experimental outcomes, obtained from the proposed QoSCRSI technique, apparently proved that the technique is better compared to other state-of-the-art techniques in terms of energy efficiency, network lifetime, overhead, throughput, and delay.

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APA

Maharajan, M. S., Abirami, T., Pustokhina, I. V., Pustokhin, D. A., & Shankar, K. (2021). Hybrid swarm intelligence based qos aware clustering with routing protocol for wsn. Computers, Materials and Continua, 68(3), 2995–3013. https://doi.org/10.32604/cmc.2021.016139

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