Multi-mode adaptive control strategy for a lower limb rehabilitation robot

Front Bioeng Biotechnol. 2024 May 16:12:1392599. doi: 10.3389/fbioe.2024.1392599. eCollection 2024.

Abstract

Different patients have different rehabilitation requirements. It is essential to ensure the safety and comfort of patients at different recovery stages during rehabilitation training. This study proposes a multi-mode adaptive control method to achieve a safe and compliant rehabilitation training strategy. First, patients' motion intention and motor ability are evaluated based on the average human-robot interaction force per task cycle. Second, three kinds of rehabilitation training modes-robot-dominant, patient-dominant, and safety-stop-are established, and the adaptive controller can dexterously switch between the three training modes. In the robot-dominant mode, based on the motion errors, the patient's motor ability, and motion intention, the controller can adaptively adjust its assistance level and impedance parameters to help patients complete rehabilitation tasks and encourage them to actively participate. In the patient-dominant mode, the controller only adjusts the training speed. When the trajectory error is too large, the controller switches to the safety-stop mode to ensure patient safety. The stabilities of the adaptive controller under three training modes are then proven using Lyapunov theory. Finally, the effectiveness of the multi-mode adaptive controller is verified by simulation results.

Keywords: human–robot interaction; impedance control; multi-mode adaptive control; rehabilitation robot; rehabilitation training strategy.

Grants and funding

The authors declare that financial support was received for the research, authorship, and/or publication of this article. This work was supported by the National Key R&D Program of China under Grant 2023YFE0202100; the Natural Science Foundation of China under grants 62373013, 62103007, 62203442, and 62003005; the R&D Program of Beijing Municipal Education Commission under grants KM202110009009 and KM202210009010; the Natural Science Foundation of Beijing under grants L202020 and 4204097; and the Talent Fund of Beijing Jiaotong University under grant KAIXKRC24003532.