Ling-Huan Kong, Wei He, Wen-Shi Chen, Hui Zhang, Yao-Nan Wang. Dynamic Movement Primitives Based Robot Skills Learning. Machine Intelligence Research. https://doi.org/10.1007/s11633-022-1346-z
Citation: Ling-Huan Kong, Wei He, Wen-Shi Chen, Hui Zhang, Yao-Nan Wang. Dynamic Movement Primitives Based Robot Skills Learning. Machine Intelligence Research. https://doi.org/10.1007/s11633-022-1346-z

Dynamic Movement Primitives Based Robot Skills Learning

doi: 10.1007/s11633-022-1346-z
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  • Author Bio:

    Ling-Huan Kong received the B. Eng. degree in automation from College of Engineering, Qufu Normal University, China in 2016 and the M. Eng. degree in control engineering from School of Automation Engineering, University of Electronic Science and Technology of China, China in 2019. He is currently a Ph. D. degree candidate in control science and engineering with School of Automation and Electrical Engineering, University of Science and Technology Beijing, China.His research interests include robotics, neural network control, and adaptive control.E-mail: kong.ahuan@gmail.comORCID iD: 0000-0001-9866-4822

    Wei He received the B. Eng. and M. Eng. degrees in automation science and engineering from the South China University of Technology, China in 2006 and 2008, respectively, and the Ph. D. degree in electrical and computer engineering from the National University of Singapore, Singapore in 2011. He is currently working as a full professor with School of Intelligence Science and Technology and Institute of Artificial Intelligence, University of Science and Technology Beijing, China. He has co-authored three books published in Springer and over 100 international journal and conference papers. He was a recipient of the IEEE Systems, Man, and Cybernetics Society Andrew P. Sage Best Transactions Paper Award. He was awarded a Newton Advanced Fellowship from the Royal Society, UK. He is serving as the Chair of IEEE Systems, Man, and Cybernetics Society Beijing Capital Region Chapter. Since 2018, he has been the Chair of Technical Committee on Autonomous Bionic Robotic Aircraft, and IEEE Systems, Man and Cybernetics Society. He is a highly cited researcher by Clarivate Analytics from 2019 to 2021. He is serving as an Associate Editor for IEEE Transactions on Robotics, IEEE Transactions on Neural Networks and Learning Systems, IEEE Transactions on Control Systems Technology, IEEE Transactions on Systems, Man, and Cybernetics: Systems, Science China Information Sciences, IEEE/CAA Journal of Automatica Sinica, Assembly Automation, and Machine Intelligence Research.His research interests include robotics, distributed parameter systems, and intelligent control systems.E-mail: weihe@ieee.org (Corresponding author)ORCID iD: 0000-0002-8944-9861

    Wen-Shi Chen received the B. Eng. and M. Eng. degrees in automation from School of Automation and Electrical Engineering, University of Science and Technology Beijing (USTB), China in 2018 and 2021, respectively.His research interests include robotics, neural network control, and dynamic movement primitives.E-mail: wenshi.chen@foxmail.com

    Hui Zhang received the B. Sc, M. Sc and Ph. D. degrees in pattern recognition and intelligent system from Hunan University, China in 2004, 2007 and 2012, respectively. He is currently a professor with School of Robotics, Hunan University, China. He was a visiting scholar with the CVSS Laboratory, Department of Electrical and Computer Engineering, University of Windsor, Canada. His research interests include machine vision, sparse representation, and image processing.E-mail: zhanghuihby@126.com

    Yao-Nan Wang received the B. Sc. degree in computer engineering from the East China University of Science and Technology, China in 1981, and the M. Sc. and Ph. D. degrees in control engineering from Hunan University, China in 1990 and 1994, respectively. He was a postdoctoral research fellow with National University of Defense Technology, China from 1994 to 1995, a Senior Humboldt Fellow in Germany from 1998 to 2000, and a visiting professor with University of Bremen, Germany from 2001 to 2004. He has been a professor with Hunan University, China since 1995. He has been a member of China Engineering Academy since 2019. His research interests include robot control, intelligent control and information processing, industrial process control, and image processing.E-mail: yaonan@hnu.edu.cn

  • Received Date: 2022-03-21
  • Accepted Date: 2022-06-06
  • Publish Online: 2023-01-07
  • In this article, a robot skills learning framework is developed, which considers both motion modeling and execution. In order to enable the robot to learn skills from demonstrations, a learning method called dynamic movement primitives (DMPs) is introduced to model motion. A staged teaching strategy is integrated into DMPs frameworks to enhance the generality such that the complicated tasks can be also performed for multi-joint manipulators. The DMP connection method is used to make an accurate and smooth transition in position and velocity space to connect complex motion sequences. In addition, motions are categorized into different goals and durations. It is worth mentioning that an adaptive neural networks (NNs) control method is proposed to achieve highly accurate trajectory tracking and to ensure the performance of action execution, which is beneficial to the improvement of reliability of the skills learning system. The experiment test on the Baxter robot verifies the effectiveness of the proposed method.

     

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