Online deep learning for improved trajectory tracking of unmanned aerial vehicles using expert knowledge
This work presents an online learning-based control method for improved trajectory tracking of unmanned aerial vehicles using both deep learning and expert knowledge. The proposed method does not require the exact model of the system to be controlled, and it is robust against variations in system dy...
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sg-ntu-dr.10356-1414072023-03-04T17:07:29Z Online deep learning for improved trajectory tracking of unmanned aerial vehicles using expert knowledge Sarabakha, Andriy Kayacan, Erdal School of Mechanical and Aerospace Engineering 2019 International Conference on Robotics and Automation (ICRA) Library Engineering::Electrical and electronic engineering Training Fuzzy Logic This work presents an online learning-based control method for improved trajectory tracking of unmanned aerial vehicles using both deep learning and expert knowledge. The proposed method does not require the exact model of the system to be controlled, and it is robust against variations in system dynamics as well as operational uncertainties. The learning is divided into two phases: offline (pre-)training and online (post-)training. In the former, a conventional controller performs a set of trajectories and, based on the input-output dataset, the deep neural network (DNN)-based controller is trained. In the latter, the trained DNN, which mimics the conventional controller, controls the system. Unlike the existing papers in the literature, the network is still being trained for different sets of trajectories which are not used in the training phase of DNN. Thanks to the rule-base, which contains the expert knowledge, the proposed framework learns the system dynamics and operational uncertainties in real-time. The experimental results show that the proposed online learning-based approach gives better trajectory tracking performance when compared to the only offline trained network. NRF (Natl Research Foundation, S’pore) MOE (Min. of Education, S’pore) Accepted version 2020-06-08T05:49:26Z 2020-06-08T05:49:26Z 2019 Conference Paper Sarabakha, A., & Kayacan, E. (2019). Online deep learning for improved trajectory tracking of unmanned aerial vehicles using expert knowledge. Proceedings of 2019 International Conference on Robotics and Automation (ICRA). doi:10.1109/ICRA.2019.8794314 978-1-5386-8176-3 https://hdl.handle.net/10356/141407 10.1109/ICRA.2019.8794314 2-s2.0-85071439874 7727 7733 en © 2019 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/ICRA.2019.8794314 application/pdf |
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Engineering::Electrical and electronic engineering Training Fuzzy Logic Sarabakha, Andriy Kayacan, Erdal Online deep learning for improved trajectory tracking of unmanned aerial vehicles using expert knowledge |
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This work presents an online learning-based control method for improved trajectory tracking of unmanned aerial vehicles using both deep learning and expert knowledge. The proposed method does not require the exact model of the system to be controlled, and it is robust against variations in system dynamics as well as operational uncertainties. The learning is divided into two phases: offline (pre-)training and online (post-)training. In the former, a conventional controller performs a set of trajectories and, based on the input-output dataset, the deep neural network (DNN)-based controller is trained. In the latter, the trained DNN, which mimics the conventional controller, controls the system. Unlike the existing papers in the literature, the network is still being trained for different sets of trajectories which are not used in the training phase of DNN. Thanks to the rule-base, which contains the expert knowledge, the proposed framework learns the system dynamics and operational uncertainties in real-time. The experimental results show that the proposed online learning-based approach gives better trajectory tracking performance when compared to the only offline trained network. |
author2 |
School of Mechanical and Aerospace Engineering |
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School of Mechanical and Aerospace Engineering Sarabakha, Andriy Kayacan, Erdal |
format |
Conference or Workshop Item |
author |
Sarabakha, Andriy Kayacan, Erdal |
author_sort |
Sarabakha, Andriy |
title |
Online deep learning for improved trajectory tracking of unmanned aerial vehicles using expert knowledge |
title_short |
Online deep learning for improved trajectory tracking of unmanned aerial vehicles using expert knowledge |
title_full |
Online deep learning for improved trajectory tracking of unmanned aerial vehicles using expert knowledge |
title_fullStr |
Online deep learning for improved trajectory tracking of unmanned aerial vehicles using expert knowledge |
title_full_unstemmed |
Online deep learning for improved trajectory tracking of unmanned aerial vehicles using expert knowledge |
title_sort |
online deep learning for improved trajectory tracking of unmanned aerial vehicles using expert knowledge |
publishDate |
2020 |
url |
https://hdl.handle.net/10356/141407 |
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1759854920018690048 |