EMASS: A Novel Energy, Safety and Mobility Aware-Based Clustering Algorithm for FANETs

The Unmanned Aerial Vehicles (UAVs), organized as a Flying Ad-hoc NETwork (FANET), are used to make effective remote monitoring in diverse applications. Due to their high mobility, their energy consumption is increasingly affected leading to reduced network stability and communication efficiency. Th...

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Main Authors: Mohamed Aissa, Maroua Abdelhafidh, Adel Ben Mnaouer
Format: Article
Language:English
Published: IEEE 2021-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9486931/
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spelling doaj-f076b994edd24199ae1d8bafaacd5c752021-08-05T23:00:29ZengIEEEIEEE Access2169-35362021-01-01910550610552010.1109/ACCESS.2021.30973239486931EMASS: A Novel Energy, Safety and Mobility Aware-Based Clustering Algorithm for FANETsMohamed Aissa0Maroua Abdelhafidh1https://orcid.org/0000-0003-0626-5598Adel Ben Mnaouer2University of Nizwa, Nizwa, OmanSM@RTS: Laboratory of Signals, systeMs, aRtificial Intelligence and neTworkS, Digital Research Center of Sfax, Sfax University, Sfax, TunisiaDepartment of Computer Engineering and Computational Science, Canadian University Dubai, Dubai, United Arab EmiratesThe Unmanned Aerial Vehicles (UAVs), organized as a Flying Ad-hoc NETwork (FANET), are used to make effective remote monitoring in diverse applications. Due to their high mobility, their energy consumption is increasingly affected leading to reduced network stability and communication efficiency. The design of node clustering of a FANET needs to consider the number of UAVs in the vicinity (transmission range) in order to ensure an adaptive reliable routing. Novel clustering schemes have been employed to deal with the highly dynamic flying behavior of UAVs and to maintain network stability. In this context, a new clustering algorithm is proposed to address the fast mobility of UAVs and provide safe inter-UAV distance, stable communication and extended network lifetime. The main contributions of this paper are first to extend and improve important metrics used in two well-known algorithms in the literature namely: The Bio-Inspired Clustering Scheme for FANETs (BICSF) and the Energy Aware Link-based Clustering (EALC). Then, exploiting the improved metrics, an Energy and Mobility-aware Stable and Safe Clustering (EMASS) algorithm, built upon new schemes useful for ensuring stability and safety in FANETs, is proposed. The simulation results showed that the EMASS algorithm outperformed the BICSF and the EALC algorithms in terms of better cluster stability, guaranteed safety, higher packet deliverability, improved energy saving and lower delays.https://ieeexplore.ieee.org/document/9486931/Unmanned aerial vehicle (UAV)clustering algorithmenergy consumptionstabilitymobilitysafe-inter-UAV distance
collection DOAJ
language English
format Article
sources DOAJ
author Mohamed Aissa
Maroua Abdelhafidh
Adel Ben Mnaouer
spellingShingle Mohamed Aissa
Maroua Abdelhafidh
Adel Ben Mnaouer
EMASS: A Novel Energy, Safety and Mobility Aware-Based Clustering Algorithm for FANETs
IEEE Access
Unmanned aerial vehicle (UAV)
clustering algorithm
energy consumption
stability
mobility
safe-inter-UAV distance
author_facet Mohamed Aissa
Maroua Abdelhafidh
Adel Ben Mnaouer
author_sort Mohamed Aissa
title EMASS: A Novel Energy, Safety and Mobility Aware-Based Clustering Algorithm for FANETs
title_short EMASS: A Novel Energy, Safety and Mobility Aware-Based Clustering Algorithm for FANETs
title_full EMASS: A Novel Energy, Safety and Mobility Aware-Based Clustering Algorithm for FANETs
title_fullStr EMASS: A Novel Energy, Safety and Mobility Aware-Based Clustering Algorithm for FANETs
title_full_unstemmed EMASS: A Novel Energy, Safety and Mobility Aware-Based Clustering Algorithm for FANETs
title_sort emass: a novel energy, safety and mobility aware-based clustering algorithm for fanets
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2021-01-01
description The Unmanned Aerial Vehicles (UAVs), organized as a Flying Ad-hoc NETwork (FANET), are used to make effective remote monitoring in diverse applications. Due to their high mobility, their energy consumption is increasingly affected leading to reduced network stability and communication efficiency. The design of node clustering of a FANET needs to consider the number of UAVs in the vicinity (transmission range) in order to ensure an adaptive reliable routing. Novel clustering schemes have been employed to deal with the highly dynamic flying behavior of UAVs and to maintain network stability. In this context, a new clustering algorithm is proposed to address the fast mobility of UAVs and provide safe inter-UAV distance, stable communication and extended network lifetime. The main contributions of this paper are first to extend and improve important metrics used in two well-known algorithms in the literature namely: The Bio-Inspired Clustering Scheme for FANETs (BICSF) and the Energy Aware Link-based Clustering (EALC). Then, exploiting the improved metrics, an Energy and Mobility-aware Stable and Safe Clustering (EMASS) algorithm, built upon new schemes useful for ensuring stability and safety in FANETs, is proposed. The simulation results showed that the EMASS algorithm outperformed the BICSF and the EALC algorithms in terms of better cluster stability, guaranteed safety, higher packet deliverability, improved energy saving and lower delays.
topic Unmanned aerial vehicle (UAV)
clustering algorithm
energy consumption
stability
mobility
safe-inter-UAV distance
url https://ieeexplore.ieee.org/document/9486931/
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AT marouaabdelhafidh emassanovelenergysafetyandmobilityawarebasedclusteringalgorithmforfanets
AT adelbenmnaouer emassanovelenergysafetyandmobilityawarebasedclusteringalgorithmforfanets
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