Route coordination of UAV fleet to track a ground moving target in search and lock (SAL) task over urban airspace

Drone has become more and more popular in various civil applications due to the open of the low-altitude airspace and its easy operation. Unlike the common search and track task for the target, the new search and lock (SAL) task is focused on in this paper. In the SAL task, multiple drones first try...

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Main Authors: Wu, Yu, Low, Kin Huat
Other Authors: School of Mechanical and Aerospace Engineering
Format: Article
Language:English
Published: 2022
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Online Access:https://hdl.handle.net/10356/160614
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Institution: Nanyang Technological University
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spelling sg-ntu-dr.10356-1606142022-07-30T20:10:32Z Route coordination of UAV fleet to track a ground moving target in search and lock (SAL) task over urban airspace Wu, Yu Low, Kin Huat School of Mechanical and Aerospace Engineering Air Traffic Management Research Institute Engineering::Aeronautical engineering Drone Low-Altitude Airspace Search and Lock Urban Environments Swarm-Based Imitative Learning Optimization Algorithm Distributed Asynchronous Decision-Making Approach Drone has become more and more popular in various civil applications due to the open of the low-altitude airspace and its easy operation. Unlike the common search and track task for the target, the new search and lock (SAL) task is focused on in this paper. In the SAL task, multiple drones first try to detect the moving ground target cooperatively. Then they must lock the target by covering all the surrounding area of it at a low flight altitude, which indicates that the target can be watched clearly in all directions from then on. The SAL task can be applied in the panorama shot for the moving ground target. First, the low-altitude urban airspace is discretized into cubes, based on which the flight rules of drone are defined. The field of view (FOV) of drone is modeled considering the flight altitude and the block of buildings. For the cooperation among multiple drones, the constraints on the type of waypoint, the communication distance and the collision avoidance are all included. The goal in the search phase is to cover more area which have not been visited recently to increase the probability of detecting the target, and it is expected to lock the target as soon as possible in the lock phase. A new swarm-based imitative learning optimization (SBILO) algorithm is proposed to determine the waypoint of drone in the search phase considering the characteristic of the established SAL model. To have a quick response to the escape behavior of the target in the lock phase, the waypoint of drone is generated in a distributed way to cover more surrounding area of the target and lock it gradually. The case of losing the target in the FOV of all drones is also addressed by covering more possible places where the target may appear. Simulation results demonstrate that the SAL task can be performed efficiently by the drones with the flight routes obtained by the proposed SBILO algorithm and the distributed asynchronous decision-make (DADM) approach. Ministry of Education (MOE) Submitted/Accepted version This research work is supported by the Chongqing Research Program of Basic Research and Frontier Technology with the grant numbers of cstc2020jcyjmsxmX0602, Fundamental Research Funds for the Central Universities with the project reference number of 2020CDJ-LHZZ-066, China Scholarship Council with the project reference number of 201906055030. This collaborative research is also supported by the Ministry of Education (MOE, Singapore) Tier-1 project research grant (Project ID: 2018-T1-002-124) and the UAS Program on “Urban Aerial Transport Traffic Management and Systems” in the ATMRI, NTU, Singapore. 2022-07-28T00:58:10Z 2022-07-28T00:58:10Z 2022 Journal Article Wu, Y. & Low, K. H. (2022). Route coordination of UAV fleet to track a ground moving target in search and lock (SAL) task over urban airspace. IEEE Internet of Things Journal. https://dx.doi.org/10.1109/JIOT.2022.3178089 2327-4662 https://hdl.handle.net/10356/160614 10.1109/JIOT.2022.3178089 en NRF ATP Programme on UAS (Award no: #001332-00019) 2018-T1-002-124 (RG184/18) IEEE Internet of Things Journal © 2022 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for all other uses, in any current or future media, including reprinting/republishing this material for advertising or promotional purposes, creating new collective works, for resale or redistribution to servers or lists, or reuse of any copyrighted component of this work in other works. The published version is available at: https://doi.org/10.1109/JIOT.2022.3178089. application/pdf
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Engineering::Aeronautical engineering
Drone
Low-Altitude Airspace
Search and Lock
Urban Environments
Swarm-Based Imitative Learning Optimization Algorithm
Distributed Asynchronous Decision-Making Approach
spellingShingle Engineering::Aeronautical engineering
Drone
Low-Altitude Airspace
Search and Lock
Urban Environments
Swarm-Based Imitative Learning Optimization Algorithm
Distributed Asynchronous Decision-Making Approach
Wu, Yu
Low, Kin Huat
Route coordination of UAV fleet to track a ground moving target in search and lock (SAL) task over urban airspace
description Drone has become more and more popular in various civil applications due to the open of the low-altitude airspace and its easy operation. Unlike the common search and track task for the target, the new search and lock (SAL) task is focused on in this paper. In the SAL task, multiple drones first try to detect the moving ground target cooperatively. Then they must lock the target by covering all the surrounding area of it at a low flight altitude, which indicates that the target can be watched clearly in all directions from then on. The SAL task can be applied in the panorama shot for the moving ground target. First, the low-altitude urban airspace is discretized into cubes, based on which the flight rules of drone are defined. The field of view (FOV) of drone is modeled considering the flight altitude and the block of buildings. For the cooperation among multiple drones, the constraints on the type of waypoint, the communication distance and the collision avoidance are all included. The goal in the search phase is to cover more area which have not been visited recently to increase the probability of detecting the target, and it is expected to lock the target as soon as possible in the lock phase. A new swarm-based imitative learning optimization (SBILO) algorithm is proposed to determine the waypoint of drone in the search phase considering the characteristic of the established SAL model. To have a quick response to the escape behavior of the target in the lock phase, the waypoint of drone is generated in a distributed way to cover more surrounding area of the target and lock it gradually. The case of losing the target in the FOV of all drones is also addressed by covering more possible places where the target may appear. Simulation results demonstrate that the SAL task can be performed efficiently by the drones with the flight routes obtained by the proposed SBILO algorithm and the distributed asynchronous decision-make (DADM) approach.
author2 School of Mechanical and Aerospace Engineering
author_facet School of Mechanical and Aerospace Engineering
Wu, Yu
Low, Kin Huat
format Article
author Wu, Yu
Low, Kin Huat
author_sort Wu, Yu
title Route coordination of UAV fleet to track a ground moving target in search and lock (SAL) task over urban airspace
title_short Route coordination of UAV fleet to track a ground moving target in search and lock (SAL) task over urban airspace
title_full Route coordination of UAV fleet to track a ground moving target in search and lock (SAL) task over urban airspace
title_fullStr Route coordination of UAV fleet to track a ground moving target in search and lock (SAL) task over urban airspace
title_full_unstemmed Route coordination of UAV fleet to track a ground moving target in search and lock (SAL) task over urban airspace
title_sort route coordination of uav fleet to track a ground moving target in search and lock (sal) task over urban airspace
publishDate 2022
url https://hdl.handle.net/10356/160614
_version_ 1739837426650578944