Identification of Gait Phases with Neural Networks for Smooth Transparent Control of a Lower Limb Exoskeleton

Vittorio Lippi, Cristian Camardella, Alessandro Filippeschi, Francesco Porcini
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引用次数: 1

Abstract

Lower limbs exoskeletons provide assistance during standing, squatting, and walking. Gait dynamics, in particular, implies a change in the configuration of the device in terms of contact points, actuation, and system dynamics in general. In order to provide a comfortable experience and maximize performance, the exoskeleton should be controlled smoothly and in a transparent way, which means respectively, minimizing the interaction forces with the user and jerky behavior due to transitions between different configurations. A previous study showed that a smooth control of the exoskeleton can be achieved using a gait phase segmentation based on joint kinematics. Such a segmentation system can be implemented as linear regression and should be personalized for the user after a calibration procedure. In this work, a nonlinear segmentation function based on neural networks is implemented and compared with linear regression. An on-line implementation is then proposed and tested with a subject.
基于神经网络的下肢外骨骼平滑透明控制步态相位识别
下肢外骨骼在站立、下蹲和行走时提供帮助。特别是步态动力学,意味着在接触点、驱动和系统动力学方面设备配置的改变。为了提供舒适的体验和最大限度地提高性能,外骨骼应该以平稳和透明的方式控制,这分别意味着最小化与用户的交互力和由于不同配置之间的转换而导致的不稳定行为。先前的研究表明,基于关节运动学的步态相位分割可以实现外骨骼的平滑控制。这样的分割系统可以实现线性回归,并应在校准程序后为用户个性化。在这项工作中,实现了一个基于神经网络的非线性分割函数,并与线性回归进行了比较。然后提出一个在线实现,并使用一个主题进行测试。
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