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A Learning Quasi-stiffness Control Framework of a Powered Trans-femoral Prosthesis for Adaptive Speed and Incline Walking (2311.15030v3)

Published 25 Nov 2023 in cs.RO

Abstract: Impedance-based control represents a prevalent strategy in the powered trans femoral prostheses because of its ability to reproduce natural walking. However, most existing studies have developed impedance-based prosthesis controllers for specific tasks, while creating a task-adaptive controller for variable-task walking continues to be a significant challenge. This article proposes a task-adaptive quasi-stiffness control framework for powered prostheses that generalizes across various walking tasks, including the torque-angle relationship reconstruction part and the quasi-stiffness controller design part. A Gaussian Process Regression model is introduced to predict the target features of the human joints angle and torque in a new task. Subsequently, a Kernel Movement Primitives is employed to reconstruct the torque-angle relationship of the new task from multiple human reference trajectories and estimated target features. Based on the torque-angle relationship of the new task, a quasi-stiffness control approach is designed for a powered prosthesis. Finally, the proposed framework is validated through practical examples, including varying speeds and inclines walking tasks. Notably, the proposed framework not only aligns with but frequently surpasses the performance of a benchmark finite state machine impedance controller without necessitating manual impedance tuning and has the potential to expand to variable walking tasks in daily life for the trans-femoral amputees.

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Authors (7)
  1. Teng Ma (85 papers)
  2. Shucong Yin (3 papers)
  3. Zhimin Hou (6 papers)
  4. Binxin Huang (2 papers)
  5. Haoyong Yu (15 papers)
  6. Chenglong Fu (31 papers)
  7. Yuxuan Wang (239 papers)

Summary

Introduction

Powered transfemoral prostheses, a type of artificial limb designed to replace a missing leg above the knee, have greatly enhanced the mobility of amputees. However, the design of control systems that adapt effectively to various walking tasks, such as different terrains and speeds, has remained a significant obstacle. Traditional methods require extensive manual tuning, which can be time-consuming and impractical for daily use.

Learning-Based Control Framework

To tackle this challenge, a new framework has been introduced that learns and predicts the necessary control parameters across different tasks. This framework includes two parts: the reconstruction of torque-angle relationships specific to new tasks and the design of a quasi-stiffness controller. Quasi-stiffness, a key concept in the control strategy, refers to the relationship between the torque needed at a joint and the angle of that joint.

For the reconstruction phase, Gaussian Process Regression (GPR) models are utilized to predict joint behaviors in new tasks, leveraging data from human demonstrations. Then, Kernelized Movement Primitives (KMP) use these predictions to reconstruct the torque-angle relationship. Based on this, the quasi-stiffness controller can be customized for various walking tasks, enabling the prosthesis to behave in a manner similar to a human leg.

Application and Results

The framework's performance was validated through experiments with a transfemoral amputee who tried walking at different speeds and inclines. The prosthesis equipped with the new control method demonstrated a strong ability to mimic natural walking patterns. The resulting joint trajectories and delivered torques resembled those of non-amputee walking, suggesting improvements in gait symmetry and adaptability without the need for task-specific tuning.

Conclusion

The proposed learning framework for task-adaptive quasi-stiffness control in powered transfemoral prostheses represents a significant step toward more natural and effective mobility for amputees. It automates the adjustment of control parameters, making the prosthetic leg adaptable to various walking scenarios more seamlessly. Further research and long-term testing with a larger group of amputees will be needed to fully establish the clinical benefits of this technology.