Online sparse Gaussian process based human motion intent learning for an electrically actuated lower extremity exoskeleton.

Journal: IEEE ... International Conference on Rehabilitation Robotics : [proceedings]
Published Date:

Abstract

The most important step for lower extremity exoskeleton is to infer human motion intent (HMI), which contributes to achieve human exoskeleton collaboration. Since the user is in the control loop, the relationship between human robot interaction (HRI) information and HMI is nonlinear and complicated, which is difficult to be modeled by using mathematical approaches. The nonlinear approximation can be learned by using machine learning approaches. Gaussian Process (GP) regression is suitable for high-dimensional and small-sample nonlinear regression problems. GP regression is restrictive for large data sets due to its computation complexity. In this paper, an online sparse GP algorithm is constructed to learn the HMI. The original training dataset is collected when the user wears the exoskeleton system with friction compensation to perform unconstrained movement as far as possible. The dataset has two kinds of data, i.e., (1) physical HRI, which is collected by torque sensors placed at the interaction cuffs for the active joints, i.e., knee joints; (2) joint angular position, which is measured by optical position sensors. To reduce the computation complexity of GP, grey relational analysis (GRA) is utilized to specify the original dataset and provide the final training dataset. Those hyper-parameters are optimized offline by maximizing marginal likelihood and will be applied into online GP regression algorithm. The HMI, i.e., angular position of human joints, will be regarded as the reference trajectory for the mechanical legs. To verify the effectiveness of the proposed algorithm, experiments are performed on a subject at a natural speed. The experimental results show the HMI can be obtained in real time, which can be extended and employed in the similar exoskeleton systems.

Authors

  • Yi Long
    State Key Laboratory of Robotics and System, Harbin Institute of Technology (HIT), Harbin 150001, China. scdxhgd@gmail.com.
  • Zhi-Jiang Du
    State Key Laboratory of Robotics and System, Harbin Institute of Technology (HIT), Harbin 150001, China. duzj01@hit.edu.cn.
  • Chao-Feng Chen
  • Wei Dong
    Department of Cardiology, Chinese PLA General Hospital, Beijing, China.
  • Wei-Dong Wang
    State Key Laboratory of Robotics and System, Harbin Institute of Technology (HIT), Harbin 150001, China. wangweidong@hit.edu.cn.