Prediction model-based learning adaptive control for underwater grasping of a soft manipulator

被引:0
作者
Hui Yang
Jiaqi Liu
Xi Fang
Xingyu Chen
Zheyuan Gong
Shiqiang Wang
Shihan Kong
Junzhi Yu
Li Wen
机构
[1] Beihang University,School of Mechanical Engineering and Automation
[2] Chinese Academy of Sciences,State Key Laboratory of Management and Control for Complex Systems, Institute of Automation
[3] Peking University,Beijing Innovation Center for Engineering Science and Advanced Technology
来源
International Journal of Intelligent Robotics and Applications | 2021年 / 5卷
关键词
Non-destructive underwater tasks; Guided reinforcement learning; Prediction model; Soft manipulator; Underwater environment;
D O I
暂无
中图分类号
学科分类号
摘要
Soft robotic manipulators have promising features for performing non-destructive underwater tasks. Nevertheless, soft robotic systems are sensitive to the inherent nonlinearity of soft materials, the underwater flow current disturbance, payload, etc. In this paper, we propose a prediction model-based guided reinforcement learning adaptive controller (GRLMAC) for a soft manipulator to perform spatial underwater grasping tasks. In the GRLMAC, a feed-forward prediction model (FPM) is established for describing the length/pressure hysteresis of a chamber in the soft manipulator. Then, the online adjustment for FPM is achieved by reinforcement learning. Introducing the human experience into the reinforcement learning method, we can choose an appropriate adjustment action for the FPM from the action space without the offline training phase, allowing online adjusting the inflation pressure. To demonstrate the effectiveness of the controller, we tested the soft manipulator in the pumped flow current and different gripping loads. The results show that GRLMAC acquires promising accuracy, robustness, and adaptivity. We envision that the soft manipulator with online learning would endow future underwater robotic manipulation under natural turbulent conditions.
引用
收藏
页码:337 / 353
页数:16
相关论文
共 199 条
  • [1] Best CM(2016)A new soft robot control method: using model predictive control for a pneumatically actuated humanoid IEEE Robot. Autom. Mag. 23 75-84
  • [2] Gillespie MT(2020)Data-driven control of soft robots using koopman operator theory IEEE Trans. Robot. 49 677-686
  • [3] Hyatt P(2019)Model free adaptive iterative learning consensus tracking control for a class of nonlinear multiagent systems IEEE Trans. Syst. Man Cybern. Syst. 25 906-918
  • [4] Rupert L(2020)RBF neural network based adaptive robust control for nonlinear bilateral teleoperation manipulators with uncertainty and time delay IEEE/ASME Trans. Mech. 4 1194-1201
  • [5] Sherrod V(2019)Vision-based online learning kinematic control for soft robots using local Gaussian process regression IEEE Robot. Autom. Lett. 5 149-163
  • [6] Killpack MD(2018)Control strategies for soft robotic manipulators: a survey Soft Rob. 35 124-134
  • [7] Bruder D(2019)Model-based reinforcement learning for closed-loop dynamic control of soft robotic manipulators IEEE Trans. Robot. 15 204-219
  • [8] Fu X(2018)A bio-inspired soft robotic arm: kinematic modeling and hydrodynamic experiments J. Bionic. Eng. 6 26-469
  • [9] Gillespie RB(2019)An opposite-bending-and-extension soft robotic manipulator for delicate grasping in shallow water Front. Robot. AI 40 449-2780
  • [10] Remy CD(2020)A soft manipulator for efficient delicate grasping in shallow water: modeling, control, and real-world experiments Int. J. Robot. Res. 28 2769-1183