利用关节运动学深度学习估计重量分布,实现下肢外骨骼控制

IF 3.4 Q2 ENGINEERING, BIOMEDICAL
Clément Lhoste;Emek Barış Küçüktabak;Lorenzo Vianello;Lorenzo Amato;Matthew R. Short;Kevin M. Lynch;Jose L. Pons
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引用次数: 0

摘要

在对带脚的下肢外骨骼进行控制时,可以通过监测脚部的重量分布来确定步态周期的阶段。这一阶段信息可用于外骨骼控制器,以补偿外骨骼的动力并分配阻抗参数。通常情况下,重量分布是通过跑步机力板或鞋垫力传感器等传感器的数据计算得出的。然而,这些解决方案增加了设置的复杂性和成本。为此,我们提出了一种深度学习方法,利用关节运动学的短时间窗口来实时预测外骨骼的重量分布。该模型在六名佩戴四自由度外骨骼的用户的跑步机行走数据上进行了训练,并在三名佩戴相同设备的不同用户身上进行了实时测试。该测试集包括两名不在训练集中的用户,以证明该模型的跨个体泛化能力。结果表明,所提出的方法能够拟合实际重量分布,R^{2}=0.9$,适合实时控制,预测时间小于 1 毫秒。闭环外骨骼控制实验表明,基于深度学习的体重分布估计可用于取代地面和跑步机行走中的力传感器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep-Learning Estimation of Weight Distribution Using Joint Kinematics for Lower-Limb Exoskeleton Control
In the control of lower-limb exoskeletons with feet, the phase in the gait cycle can be identified by monitoring the weight distribution at the feet. This phase information can be used in the exoskeleton’s controller to compensate the dynamics of the exoskeleton and to assign impedance parameters. Typically the weight distribution is calculated using data from sensors such as treadmill force plates or insole force sensors. However, these solutions increase both the setup complexity and cost. For this reason, we propose a deep-learning approach that uses a short time window of joint kinematics to predict the weight distribution of an exoskeleton in real time. The model was trained on treadmill walking data from six users wearing a four-degree-of-freedom exoskeleton and tested in real time on three different users wearing the same device. This test set includes two users not present in the training set to demonstrate the model’s ability to generalize across individuals. Results show that the proposed method is able to fit the actual weight distribution with $R^{2}=0.9$ and is suitable for real-time control with prediction times less than 1 ms. Experiments in closed-loop exoskeleton control show that deep-learning-based weight distribution estimation can be used to replace force sensors in overground and treadmill walking.
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CiteScore
6.80
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