ATENA: Adaptive TEchniques for Network Area Coverage and Routing in IoT-Based Edge Computing
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Published:2024-08-27
Issue:4
Volume:32
Page:
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ISSN:1064-7570
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Container-title:Journal of Network and Systems Management
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language:en
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Short-container-title:J Netw Syst Manage
Author:
Jagho Mdemaya Garrik Brel,Kengne Tchendji Vianney,Velempini Mthulisi,Atchaze Ariege
Abstract
AbstractThe Internet of Things (IoT) and Edge Computing (EC) are now pervasive. IoT networks are made up of several objects, deployed in an area of interest (AoI), that can communicate with each other and with a remote computing centre for decision-making. EC reduces latency and data congestion by bringing data processing closer to the source. In this paper, we address the problems of network coverage and data collection in IoT-based EC networks. Several solutions exist designed to solve these problems unfortunately, they are either not energy-efficient or do not consider connectivity and they do not cover AoI. The proposed routing mechanisms are often not suited for AoI coverage schemes and lead to poor data routing delay or high packet losses. To address these shortcomings, we propose ATENA, a periodic, lightweight and energy-efficient protocol that aims to improve network coverage based on the two new schemes used to define a few number of objects to be kept awake at each period it also uses an adaptive routing scheme to send the collected data to the computing centre. This protocol is designed to take into account the limited resources of objects and ensures a longer network lifetime. A comparison of ATENA’s simulation results with recent existing protocols shows that it significantly improves network coverage, network lifetime and end-to-end delay to the computing centre.
Funder
National research Foundation of South Africa University of Limpopo
Publisher
Springer Science and Business Media LLC
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