A Hybrid Heuristic Model for Duty Cycle Framework Optimization
Date
2024
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
International Journal of Distributed Sensor Networks
Abstract
This paper proposes a hybrid metaheuristic approach to optimize a duty cycle framework based on Seagull and Mayfly
Optimization (HSMO-DC) Algorithm. This approach becomes crucial as current clustering protocols are unable to efficiently
tune the clustering parameters in accordance to the diversification of varying WSNs. The proposed HSMO-DC primarily has
two parts, where the first part takes care of the online cluster head selection and network communication using the seagull
algorithm while the second part performs parameter optimization using the mayfly algorithm. The seagull is aimed at
improving the energy distribution in the network through an effective bandwidth allocation procedure while reducing the total
energy dissipation. Comparatively, with other clustering protocols, our proposed methods reveal an enhanced network lifetime
with an improved network throughput and adaptability based on selected standard metric of performance measurement.
Description
Research Article
Keywords
Wireless sensor networks (WSNs), Optimization, seagull