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Deep reinforcement learning driven autonomous flight UAV for construction progress monitoring

Jung, Yuna
Lee, Dongmin
2023-08-03T09:02:21Z
2023-08-03T09:02:21Z
2023

Abstract

Recently, Unmanned Aerial Vehicles(UAV) have been studied as a means of monitoring construction sites more safely and accurately. However, construction sites are complex environments with numerous heavy equipment and workers constantly moving around, making it difficult to predict obstacles and anticipate changes. To use UAVs for on-site monitoring in such environments, a control algorithm that can adapt to changing conditions is required. Therefore, this study proposes a reinforcement learning-based autonomous drone algorithm. UAVs, obstacles, and target points are positioned in a 3D learning environment, and random movements are assigned. The UAV detects objects using LiDAR sensors and assigns penalties if it collides with an obstacle, while rewarding if it reaches a target point. Through this method, the autonomously driven UAV trained using the proposed algorithm demonstrated similar accuracy to the existing GPS-based autonomous driving algorithm and up to 50% shorter average time to reach the target point, highlighting its high potential for practical use.

http://hdl.handle.net/10890/51264
en
Budapest University of Technology and Economics
Deep reinforcement learning driven autonomous flight UAV for construction progress monitoring
könyvfejezet
Open access
Szerző
2023.06.20.-2023.06.23.
Keszthely, Hungary
Creative Construction Conference 2023
2023-08-01
978-615-5270-79-6
Budapest University of Technology and Economics
Online
Proceedings of the Creative Construction Conference 2023
Építéstechnológia és Menedzsment Tanszék
Online
Faculty of Architecture
33
10.3311/CCC2023-005
41
Automation and Robotics for Construction
Műszaki tudományok
Műszaki tudományok - építészmérnöki tudományok
Műszaki tudományok - építészmérnöki tudományok
Autonomous Flight
Unmanned aerial vehicles (UAVs)
Progress Monitoring
Deep Reinforcement Learning
Proximal Policy Optimization
Konferenciacikk
Budapest University of Technology and Economics

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