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Wing-strain-based flight control of flapping-wing drones through reinforcement learningoa mark
  • Kim, Taewi ;
  • Hong, Insic ;
  • Im, Sunghoon ;
  • Rho, Seungeun ;
  • Kim, Minho ;
  • Roh, Yeonwook ;
  • Kim, Changhwan ;
  • Park, Jieun ;
  • Lim, Daseul ;
  • Lee, Doohoe ;
  • Lee, Seunggon ;
  • Lee, Jingoo ;
  • Back, Inryeol ;
  • Cho, Junggwang ;
  • Hong, Myung Rae ;
  • Kang, Sanghun ;
  • Lee, Joonho ;
  • Seo, Sungchul ;
  • Kim, Uikyum ;
  • Choi, Young Man ;
  • Koh, Je Sung ;
  • Han, Seungyong ;
  • Kang, Daeshik
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Publication Year
2024-09-01
Publisher
Nature Research
Citation
Nature Machine Intelligence, Vol.6, pp.992-1005
Mesh Keyword
Dynamic controlsDynamic windsFlapping-wingFlight controlFlight controllersReinforcement learningsSensing abilitiesStrain basedStrain sensorsWind sensing
All Science Classification Codes (ASJC)
SoftwareHuman-Computer InteractionComputer Vision and Pattern RecognitionComputer Networks and CommunicationsArtificial Intelligence
Abstract
Although drone technology has advanced rapidly, replicating the dynamic control and wind-sensing abilities of biological flight is still beyond reach. Biological studies reveal that insect wings are equipped with mechanoreceptors known as campaniform sensilla, which detect complex aerodynamic loads critical for flight agility. By leveraging robotic experiments designed to mimic these biological systems, we confirm that wing strain provides crucial information about the drone’s attitude angle, as well as the direction and velocity of the wind. We introduce a wing-strain-based flight controller that employs the aerodynamic forces exerted on a flapping drone’s wings to deduce vital flight data such as attitude and airflow without accelerometers and gyroscopic sensors. The present work spans five key experiments: initial validation of the wing strain sensor system for state information provision, control in a single degree of freedom movement environment with changing winds, control in a two degrees of freedom movement environment for gravitational attitude adjustment, a test for position control in windy conditions and a demonstration of precise flight path manipulation in a windless condition using only wing strain sensors. We have successfully demonstrated control of a flapping drone in various environments using only wing strain sensors, with the aid of a reinforcement-learning-driven flight controller. The demonstrated adaptability to environmental shifts will be beneficial across varied applications, from gust resistance to wind-assisted flight for autonomous flying robots.
ISSN
2522-5839
Language
eng
URI
https://dspace.ajou.ac.kr/dev/handle/2018.oak/34468
DOI
https://doi.org/10.1038/s42256-024-00893-9
Fulltext

Type
Article
Funding
S.I. thanks M. Kar\\u00E1sek for providing detailed information about the prior research on the flapping drone (Delfly). S.I. also thanks A.M. Yarger for advice on current research trends regarding campaniform sensilla on the dragonfly\\u2019s wing and for sharing related prior research. D.K., S.H. and J.-S.K. acknowledge financial support from the Ajou University research fund. This work was supported by National Research Foundation of Korea grants funded by the Korea government (grant nos. 2021R1A6A3A01087289, 2021R1C1C1011872, 2022R1A2C2093100, RS-2023-00277110, RS-2024-00411660) and Korea Environment Industry & Technology Institute through the Digital Infrastructure Building Project for Monitoring, Surveying and Evaluating the Environmental Health Program, funded by the Korea Ministry of Environment (grant no. 2021003330009).
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Choi, Young Man최영만
Department of Mechanical Engineering
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