A rehabilitation robot control framework with adaptation of training tasks and robotic assistance

Front Bioeng Biotechnol. 2023 Oct 2:11:1244550. doi: 10.3389/fbioe.2023.1244550. eCollection 2023.

Abstract

Robot-assisted rehabilitation has exhibited great potential to enhance the motor function of physically and neurologically impaired patients. State-of-the-art control strategies usually allow the rehabilitation robot to track the training task trajectory along with the impaired limb, and the robotic motion can be regulated through physical human-robot interaction for comfortable support and appropriate assistance level. However, it is hardly possible, especially for patients with severe motor disabilities, to continuously exert force to guide the robot to complete the prescribed training task. Conversely, reduced task difficulty cannot facilitate stimulating patients' potential movement capabilities. Moreover, challenging more difficult tasks with minimal robotic assistance is usually ignored when subjects show improved performance. In this paper, a control framework is proposed to simultaneously adjust both the training task and robotic assistance according to the subjects' performance, which can be estimated from the users' electromyography signals. Concretely, a trajectory deformation algorithm is developed to generate smooth and compliant task motion while responding to pHRI. An assist-as-needed (ANN) controller along with a feedback gain modification algorithm is designed to promote patients' active participation according to individual performance variance on completing the training task. The proposed control framework is validated using a lower extremity rehabilitation robot through experiments. The experimental results demonstrate that the control scheme can optimize the robotic assistance to complete the subject-adaptation training task with high efficiency.

Keywords: assist-as-needed control; biological signal; human-robot interaction; rehabilitation robotics; trajectory deformation.

Grants and funding

This research is supported by the National Natural Science Foundation of China (52205018), Natural Science Foundation of Jiangsu Province (BK20220894), State Key Laboratory of Robotics and Systems (HIT) (SKLRS-2023-KF-25), Fundamental Research Funds for the Central Universities (NS2022048), Nanjing Overseas Scholars Science and Technology Innovation Project (YQR22044), Scientific Research Foundation of Nanjing University of Aeronauticsand Astronautics (YAH21004), and Jiangsu Provincial Double Innovation Doctor Program (JSSCBS20220232).