4.6 Article

sEMG-Based Gain-Tuned Compliance Control for the Lower Limb Rehabilitation Robot during Passive Training

Journal

SENSORS
Volume 22, Issue 20, Pages -

Publisher

MDPI
DOI: 10.3390/s22207890

Keywords

sEMG; lower limb rehabilitation robot; compliance control; training mode; MOTOmed; continuous passive motion; straight leg raise; feature analysis

Funding

  1. National Key Research and Development Program [2019YFB1312500]
  2. National Natural Science Foundation of China [U1913216]
  3. Science and Technology (S&T) Program of Hebei [216Z1803G, E2020103001]
  4. Shanghai Clinical Research Center for Aging and Medicine [19MC1910500]

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This study developed a surface electromyography-based gain-tuned compliance control strategy for lower limb rehabilitation robot, aiming to improve the safety and physiological information during passive training. The results showed that this strategy significantly enhanced the compliance and safety of the robot, indicating its promising application in the field of rehabilitation robotics.
The lower limb rehabilitation robot is a typical man-machine coupling system. Aiming at the problems of insufficient physiological information and unsatisfactory safety performance in the compliance control strategy for the lower limb rehabilitation robot during passive training, this study developed a surface electromyography-based gain-tuned compliance control (EGCC) strategy for the lower limb rehabilitation robot. First, the mapping function relationship between the normalized surface electromyography (sEMG) signal and the gain parameter was established and an overall EGCC strategy proposed. Next, the EGCC strategy without sEMG information was simulated and analyzed. The effects of the impedance control parameters on the position correction amount were studied, and the change rules of the robot end trajectory, man-machine contact force, and position correction amount analyzed in different training modes. Then, the sEMG signal acquisition and feature analysis of target muscle groups under different training modes were carried out. Finally, based on the lower limb rehabilitation robot control system, the influence of normalized sEMG threshold on the robot end trajectory and gain parameters under different training modes was experimentally studied. The simulation and experimental results show that the adoption of the EGCC strategy can significantly enhance the compliance of the robot end-effector by detecting the sEMG signal and improve the safety of the robot in different training modes, indicating the EGCC strategy has good application prospects in the rehabilitation robot field.

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