Smart City Gnosys

Smart city article details

Title Cluster Selection For Load Balancing In Flying Ad Hoc Networks Using An Optimal Low-Energy Adaptive Clustering Hierarchy Based On Optimization Approach
ID_Doc 14506
Authors Sefati S.S.; Halunga S.; Farkhady R.Z.
Year 2022
Published Aircraft Engineering and Aerospace Technology, 94, 8
DOI http://dx.doi.org/10.1108/AEAT-08-2021-0264
Abstract Purpose: Flying ad hoc networks (FANETs) have a major effect in various areas such as civil projects and smart cities. The facilities of installation and low cost of unmanned aerial vehicles (UAVs) have created a new challenge for researchers. Cluster head (CH) selection and load balancing between the CH are the most critical issues in the FANETs. For CH selection and load balancing in FANETs, this study used efficient clustering to address both problems and overcome these challenges. This paper aims to propose a novel CH selection and load balancing scheme to solve the low energy consumption and low latency in the FANET system. Design/methodology/approach: This paper tried to select the CH and load balancing with the help of low-energy adaptive clustering hierarchy (LEACH) algorithm and bat algorithm (BA). Load balancing and CH selection are NP-hard problems, so the metaheuristic algorithms can be the best answer for these issues. In the LEACH algorithm, UAVs randomly generate numerical, and these numbers are sorted according to those values. To use the load balancing, the threshold of CH has to be considered; if the threshold is less than 0.7, the BA starts working and begins to find new CH according to the emitted pulses. Findings: The proposed method compares with three algorithms, called bio-inspired clustering scheme FANETs, Grey wolf optimization and ant colony optimization in the NS3 simulator. The proposed algorithm has a good efficiency with respect to the network lifetime, energy consumption and cluster building time. Originality/value: This study aims to extend the UAV group control concepts to include CH selection and load balancing to improve UAV energy consumption and low latency. © 2022, Emerald Publishing Limited.
Author Keywords Ad hoc network; Cluster head selection; FANET; Fly ad hoc network; Load balancing; Optimization algorithm


Similar Articles


Id Similarity Authors Title Published
56941 View0.867Sharma A.; Sharma S.; Singh P.The Study Of Cluster-Based Energy-Efficient Algorithms Of Flying Ad-Hoc NetworksLecture Notes in Networks and Systems, 681 (2023)
2132 View0.85Saeedi I.D.I.; Al-Qurabat A.K.M.A Hybrid Approach To Cluster Head Selection In Space-Air-Ground Integrated Networks: Leveraging Smc And Ooa For Optimal PerformanceJournal of Supercomputing, 81, 4 (2025)