Energy Efficient and Real-Time Remote Sensing in AI-Powered Drone

Remote sensing using drones has the advantage of being able to quickly monitor large areas such as rivers, oceans, mountains, and urban areas. In the case of applications dealing with large sensing data, it is not possible to send data from a drone to the server online, so it must be copied to the s...

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Main Authors: Bongjae Kim, Jinman Jung, Hong Min, Junyoung Heo
Format: Article
Language:English
Published: Hindawi Limited 2021-01-01
Series:Mobile Information Systems
Online Access:http://dx.doi.org/10.1155/2021/6650053
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spelling doaj-8d6ab1f6230c4f599daa1ddc920e9b9e2021-07-02T13:35:30ZengHindawi LimitedMobile Information Systems1875-905X2021-01-01202110.1155/2021/6650053Energy Efficient and Real-Time Remote Sensing in AI-Powered DroneBongjae Kim0Jinman Jung1Hong Min2Junyoung Heo3Department of Computer EngineeringDepartment of Computer EngineeringSchool of ComputingDivision of Computer EngineeringRemote sensing using drones has the advantage of being able to quickly monitor large areas such as rivers, oceans, mountains, and urban areas. In the case of applications dealing with large sensing data, it is not possible to send data from a drone to the server online, so it must be copied to the server offline after the end of the flight. However, online transmission is essential for applications that require real-time data analysis. The existing computation offloading scheme enables online transmission by processing large amounts of data in a drone and transferring it to the server, but without consideration for real-time constraints. We propose a novel computation offloading scheme which considers real-time constraints while minimizing the energy consumption of drones. Experimental results showed that the proposed scheme satisfied real-time constraints compared to the existing computation offloading scheme. Furthermore, the proposed technique showed that real-time constraints were satisfied even in situations where delays occurred on the server due to the processing of requests from multiple drones.http://dx.doi.org/10.1155/2021/6650053
collection DOAJ
language English
format Article
sources DOAJ
author Bongjae Kim
Jinman Jung
Hong Min
Junyoung Heo
spellingShingle Bongjae Kim
Jinman Jung
Hong Min
Junyoung Heo
Energy Efficient and Real-Time Remote Sensing in AI-Powered Drone
Mobile Information Systems
author_facet Bongjae Kim
Jinman Jung
Hong Min
Junyoung Heo
author_sort Bongjae Kim
title Energy Efficient and Real-Time Remote Sensing in AI-Powered Drone
title_short Energy Efficient and Real-Time Remote Sensing in AI-Powered Drone
title_full Energy Efficient and Real-Time Remote Sensing in AI-Powered Drone
title_fullStr Energy Efficient and Real-Time Remote Sensing in AI-Powered Drone
title_full_unstemmed Energy Efficient and Real-Time Remote Sensing in AI-Powered Drone
title_sort energy efficient and real-time remote sensing in ai-powered drone
publisher Hindawi Limited
series Mobile Information Systems
issn 1875-905X
publishDate 2021-01-01
description Remote sensing using drones has the advantage of being able to quickly monitor large areas such as rivers, oceans, mountains, and urban areas. In the case of applications dealing with large sensing data, it is not possible to send data from a drone to the server online, so it must be copied to the server offline after the end of the flight. However, online transmission is essential for applications that require real-time data analysis. The existing computation offloading scheme enables online transmission by processing large amounts of data in a drone and transferring it to the server, but without consideration for real-time constraints. We propose a novel computation offloading scheme which considers real-time constraints while minimizing the energy consumption of drones. Experimental results showed that the proposed scheme satisfied real-time constraints compared to the existing computation offloading scheme. Furthermore, the proposed technique showed that real-time constraints were satisfied even in situations where delays occurred on the server due to the processing of requests from multiple drones.
url http://dx.doi.org/10.1155/2021/6650053
work_keys_str_mv AT bongjaekim energyefficientandrealtimeremotesensinginaipowereddrone
AT jinmanjung energyefficientandrealtimeremotesensinginaipowereddrone
AT hongmin energyefficientandrealtimeremotesensinginaipowereddrone
AT junyoungheo energyefficientandrealtimeremotesensinginaipowereddrone
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