Transfer learning on UR robots
As neural networks and deep learning develop, researchers are continually exploring the capabilities and potential of using data-driven methods to control robots. As a data-driven approach, training neural networks requires substantial data support, making the collection of sufficient data to...
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Nanyang Technological University
2024
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sg-ntu-dr.10356-1769082024-05-24T15:43:54Z Transfer learning on UR robots Yu, Xiwei Cheah Chien Chern School of Electrical and Electronic Engineering ECCCheah@ntu.edu.sg Engineering Robot control Deep learning As neural networks and deep learning develop, researchers are continually exploring the capabilities and potential of using data-driven methods to control robots. As a data-driven approach, training neural networks requires substantial data support, making the collection of sufficient data to create datasets crucial. However, in many practical applications, data collection is expensive, time-consuming, and sometimes impossible. Transfer learning can address the issue of data collection by fine-tuning and transferring already trained neural networks to new robots. This paper proposes a new data collection method that gathers unbiased data, achieving transfer learning from the UR10e to the UR5e robot. The transferred neural network was then tested on the physical UR5e robot, and experimental results of tracking control on industrial robots were presented, verifying the low data loss and effectiveness of transfer learning. Bachelor's degree 2024-05-23T05:09:31Z 2024-05-23T05:09:31Z 2024 Final Year Project (FYP) Yu, X. (2024). Transfer learning on UR robots. Final Year Project (FYP), Nanyang Technological University, Singapore. https://hdl.handle.net/10356/176908 https://hdl.handle.net/10356/176908 en J1209-232 application/pdf Nanyang Technological University |
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Engineering Robot control Deep learning Yu, Xiwei Transfer learning on UR robots |
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As neural networks and deep learning develop, researchers are continually exploring
the capabilities and potential of using data-driven methods to control robots. As
a data-driven approach, training neural networks requires substantial data support,
making the collection of sufficient data to create datasets crucial. However, in many
practical applications, data collection is expensive, time-consuming, and sometimes
impossible. Transfer learning can address the issue of data collection by fine-tuning
and transferring already trained neural networks to new robots. This paper proposes a
new data collection method that gathers unbiased data, achieving transfer learning from
the UR10e to the UR5e robot. The transferred neural network was then tested on the
physical UR5e robot, and experimental results of tracking control on industrial robots
were presented, verifying the low data loss and effectiveness of transfer learning. |
author2 |
Cheah Chien Chern |
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Cheah Chien Chern Yu, Xiwei |
format |
Final Year Project |
author |
Yu, Xiwei |
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Yu, Xiwei |
title |
Transfer learning on UR robots |
title_short |
Transfer learning on UR robots |
title_full |
Transfer learning on UR robots |
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Transfer learning on UR robots |
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Transfer learning on UR robots |
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transfer learning on ur robots |
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Nanyang Technological University |
publishDate |
2024 |
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https://hdl.handle.net/10356/176908 |
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1814047193699450880 |