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基于在线稀疏高斯过程的电动下肢外骨骼人体运动意图学习

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

作者信息

Long Yi, Du Zhi-Jiang, Chen Chao-Feng, Dong Wei, Wang Wei-Dong

出版信息

IEEE Int Conf Rehabil Robot. 2017 Jul;2017:919-924. doi: 10.1109/ICORR.2017.8009366.

DOI:10.1109/ICORR.2017.8009366
PMID:28813938
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.

摘要

下肢外骨骼最重要的一步是推断人体运动意图(HMI),这有助于实现人机外骨骼协作。由于用户处于控制回路中,人机交互(HRI)信息与HMI之间的关系是非线性且复杂的,难以用数学方法进行建模。可以使用机器学习方法来学习非线性近似。高斯过程(GP)回归适用于高维和小样本非线性回归问题。由于其计算复杂度,GP回归对于大数据集具有局限性。本文构建了一种在线稀疏GP算法来学习HMI。原始训练数据集是在用户佩戴带有摩擦补偿的外骨骼系统尽可能进行无约束运动时收集的。该数据集有两种数据,即:(1)物理HRI,由放置在主动关节(即膝关节)交互袖口处的扭矩传感器收集;(2)关节角位置,由光学位置传感器测量。为了降低GP的计算复杂度,则利用灰色关联分析(GRA)来指定原始数据集并提供最终训练数据集。通过最大化边际似然对这些超参数进行离线优化,并将其应用于在线GP回归算法中。HMI,即人体关节的角位置,将被视为机械腿的参考轨迹。为了验证所提算法的有效性,以自然速度在一名受试者身上进行了实验。实验结果表明,可以实时获得HMI,这可以在类似的外骨骼系统中扩展和应用。

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