4.7 Article

A Control Framework for Adaptation of Training Task and Robotic Assistance for Promoting Motor Learning With an Upper Limb Rehabilitation Robot

期刊

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TSMC.2022.3163916

关键词

Robots; Trajectory; Task analysis; Training; Oscillators; Rehabilitation robotics; Real-time systems; Assist as needed (AAN); motor learning; nonlinear adaptive control; rehabilitation robotics

资金

  1. National Key Research and Development Program of China [2018YFB1307000]
  2. National Natural Science Foundation of China [U1913601, 61720106012]
  3. Major Scientific and Technological Innovation Projects in Shandong Province [2019JZZY011111]
  4. Strategic Priority Research Program of Chinese Academy of Science [XDB32040000]

向作者/读者索取更多资源

In this article, a control framework for robot-assisted motor learning is proposed, which focuses on detecting human intention, generating reference trajectories, and modifying robotic assistance. The results showed that the difficulty level of reference trajectories can be modulated according to the intention of the patients, and the robotic assistance can be optimized flexibly during trajectory tracking tasks.
Robot-assisted rehabilitation has been a promising solution to improve motor learning of neurologically impaired patients. State-of-the-art control strategies are typically limited to the ignorance of heterogeneous motor capabilities of poststroke patients and therefore intervene suboptimally. In this article, we propose a control framework for robot-assisted motor learning, emphasizing the detection of human intention, generation of reference trajectories, and modification of robotic assistance. A real-time trajectory generation algorithm is presented to extract the high-level features in active arm movements using an adaptive frequency oscillator (AFO) and then integrate the movement rhythm with the minimum-jerk principle to generate an optimal reference trajectory, which synchronizes with the motion intention in the patient as well as the motion pattern in healthy humans. In addition, a subject-adaptive assistance modification algorithm is presented to model the patient's residual motor capabilities employing spatially dependent radial basis function (RBF) networks and then combining the RBF-based feedforward controller with the impedance feedback controller to provide only necessary assistance while simultaneously regulating the maximum-tolerated error during trajectory tracking tasks. We conduct simulation and experimental studies based on an upper limb rehabilitation robot to evaluate the overall performance of the motor-learning framework. A series of results showed that the difficulty level of reference trajectories was modulated to meet the requirements of subjects' intended motion, furthermore, the robotic assistance was compliantly optimized in response to the changing performance of subjects' motor abilities, highlighting the potential of adopting our framework into clinical application to promote patient-led motor learning.

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