This is a Demo Server. Data inside this system is only for test purpose.
 

Clustered Routing Using Chaotic Genetic Algorithm With Grey Wolf Optimization To Enhance Energy Efficiency in Sensor Networks

No Thumbnail Available

Date

2024

Journal Title

Journal ISSN

Volume Title

Publisher

Mdpi

Open Access Color

OpenAIRE Downloads

OpenAIRE Views

Research Projects

Organizational Units

Organizational Unit
Department of Data Communication Networks and Systems
The department is engaged in activities such as providing students and masters with the necessary knowledge in the relevant disciplines of data transmission networks, preparing them as qualified specialists in their field, as well as providing in-depth knowledge for researchers.

Journal Issue

Abstract

As an alternative to flat architectures, clustering architectures are designed to minimize the total energy consumption of sensor networks. Nonetheless, sensor nodes experience increased energy consumption during data transmission, leading to a rapid depletion of energy levels as data are routed towards the base station. Although numerous strategies have been developed to address these challenges and enhance the energy efficiency of networks, the formulation of a clustering-based routing algorithm that achieves both high energy efficiency and increased packet transmission rate for large-scale sensor networks remains an NP-hard problem. Accordingly, the proposed work formulated an energy-efficient clustering mechanism using a chaotic genetic algorithm, and subsequently developed an energy-saving routing system using a bio-inspired grey wolf optimizer algorithm. The proposed chaotic genetic algorithm-grey wolf optimization (CGA-GWO) method is designed to minimize overall energy consumption by selecting energy-aware cluster heads and creating an optimal routing path to reach the base station. The simulation results demonstrate the enhanced functionality of the proposed system when associated with three more relevant systems, considering metrics such as the number of live nodes, average remaining energy level, packet delivery ratio, and overhead associated with cluster formation and routing.

Description

Mukhamadiyev, Abdinabi/0000-0002-1438-0628; K, Mohaideen pitchai/0000-0003-4058-7718; Khujamatov, Halimjon/0000-0001-5206-635X

Keywords

chaotic genetic algorithm, clustering, energy efficiency, grey wolf optimizer, routing, sensor networks

Turkish CoHE Thesis Center URL

Fields of Science

Citation

2

WoS Q

Q2

Scopus Q

Q2

Source

Volume

24

Issue

13

Start Page

End Page