Minimum-Cost Drone–Nest Matching through the Kuhn–Munkres Algorithm in Smart Cities: Energy Management and Efficiency Enhancement

The development of new concepts for smart cities and the application of drones in this area requires different architecture for the drones’ stations (nests) and their placement. Drones’ stations are designed to protect drones from hazards and utilize charging mechanisms such as s...

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Main Authors: Amir Mirzaeinia, Mostafa Hassanalian
Format: Article
Language:English
Published: MDPI AG 2019-11-01
Series:Aerospace
Subjects:
Online Access:https://www.mdpi.com/2226-4310/6/11/125
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spelling doaj-eaf663a80d6a43ae98f5e3d594e1d8882020-11-25T00:39:43ZengMDPI AGAerospace2226-43102019-11-0161112510.3390/aerospace6110125aerospace6110125Minimum-Cost Drone–Nest Matching through the Kuhn–Munkres Algorithm in Smart Cities: Energy Management and Efficiency EnhancementAmir Mirzaeinia0Mostafa Hassanalian1Department of Computer Science and Engineering, New Mexico Tech, Socorro, NM 87801, USADepartment of Mechanical Engineering, New Mexico Tech, Socorro, NM 87801, USAThe development of new concepts for smart cities and the application of drones in this area requires different architecture for the drones’ stations (nests) and their placement. Drones’ stations are designed to protect drones from hazards and utilize charging mechanisms such as solar cells to recharge them. Increasing the number of drones in smart cities makes it harder to find the optimum station for each drone to go to after performing its mission. In classic ordered technique, each drone returns to its preassigned station, which is shown to be not very efficient. Greedy and Kuhn−Munkres (Hungarian) algorithms are used to match the drone to the best nesting station. Three different scenarios are investigated in this study; (1) drones with the same level of energy, (2) drones with different levels of energy, and (3) drones and stations with different levels of energy. The results show that an energy consumption reduction of 25−80% can be achieved by applying the Kuhn−Munkres and greedy algorithms in drone−nest matching compared to preassigned stations. A graphical user interface is also designed to demonstrate drone−station matching through the Kuhn−Munkres and greedy algorithms.https://www.mdpi.com/2226-4310/6/11/125smart citiesdronesnestenergykuhn–munkres algorithmefficiency
collection DOAJ
language English
format Article
sources DOAJ
author Amir Mirzaeinia
Mostafa Hassanalian
spellingShingle Amir Mirzaeinia
Mostafa Hassanalian
Minimum-Cost Drone–Nest Matching through the Kuhn–Munkres Algorithm in Smart Cities: Energy Management and Efficiency Enhancement
Aerospace
smart cities
drones
nest
energy
kuhn–munkres algorithm
efficiency
author_facet Amir Mirzaeinia
Mostafa Hassanalian
author_sort Amir Mirzaeinia
title Minimum-Cost Drone–Nest Matching through the Kuhn–Munkres Algorithm in Smart Cities: Energy Management and Efficiency Enhancement
title_short Minimum-Cost Drone–Nest Matching through the Kuhn–Munkres Algorithm in Smart Cities: Energy Management and Efficiency Enhancement
title_full Minimum-Cost Drone–Nest Matching through the Kuhn–Munkres Algorithm in Smart Cities: Energy Management and Efficiency Enhancement
title_fullStr Minimum-Cost Drone–Nest Matching through the Kuhn–Munkres Algorithm in Smart Cities: Energy Management and Efficiency Enhancement
title_full_unstemmed Minimum-Cost Drone–Nest Matching through the Kuhn–Munkres Algorithm in Smart Cities: Energy Management and Efficiency Enhancement
title_sort minimum-cost drone–nest matching through the kuhn–munkres algorithm in smart cities: energy management and efficiency enhancement
publisher MDPI AG
series Aerospace
issn 2226-4310
publishDate 2019-11-01
description The development of new concepts for smart cities and the application of drones in this area requires different architecture for the drones’ stations (nests) and their placement. Drones’ stations are designed to protect drones from hazards and utilize charging mechanisms such as solar cells to recharge them. Increasing the number of drones in smart cities makes it harder to find the optimum station for each drone to go to after performing its mission. In classic ordered technique, each drone returns to its preassigned station, which is shown to be not very efficient. Greedy and Kuhn−Munkres (Hungarian) algorithms are used to match the drone to the best nesting station. Three different scenarios are investigated in this study; (1) drones with the same level of energy, (2) drones with different levels of energy, and (3) drones and stations with different levels of energy. The results show that an energy consumption reduction of 25−80% can be achieved by applying the Kuhn−Munkres and greedy algorithms in drone−nest matching compared to preassigned stations. A graphical user interface is also designed to demonstrate drone−station matching through the Kuhn−Munkres and greedy algorithms.
topic smart cities
drones
nest
energy
kuhn–munkres algorithm
efficiency
url https://www.mdpi.com/2226-4310/6/11/125
work_keys_str_mv AT amirmirzaeinia minimumcostdronenestmatchingthroughthekuhnmunkresalgorithminsmartcitiesenergymanagementandefficiencyenhancement
AT mostafahassanalian minimumcostdronenestmatchingthroughthekuhnmunkresalgorithminsmartcitiesenergymanagementandefficiencyenhancement
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