Data-Driven Modelling of the Non-Linear Dynamics of Passive Lower-Limb Prosthetic Systems

Seth Donahue, Trevor Kingsbury, Kota Takahshi, Matty J. Major
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Abstract

Modelling the non-linear dynamics of prosthetic feet is an important tool for linking prosthesis mechanical properties to end-user outcomes. There has been a renewed interest in data-driven modelling of dynamical systems, with the development of the Extended Dynamic Mode Decomposition with control (eDMDc), and the Sparse Identification of Non-Linear Dynamics with Control (SINDYc). These algorithms do not require prior information about the system, including mechanical configuration, and are data-driven. The aim of this study was to assess feasibility and accuracy of applying these data-driven algorithms to model prosthesis non-linear load response dynamics. Different combinations of a dynamic response foot, a hydraulic ankle unit, and three shock absorbing pylons of varying resistance were tested loaded and unloaded at three orientations reflecting critical positions during the stance phase of walking. We tested two different data-driven algorithms, the eDMDc, with two different kernels, and the SINDYc, which regresses the coefficients for a non-linear ordinary differential equation. Each algorithm was able to model the non-linear prosthesis dynamics, but the SINDYc outperformed the eDMDc methods with a root mean square error across orientations < 1.50 mm and a maximum error in peak displacement of 1.28 mm or 4% relative error. From the estimated SINDYc governing equation of the system dynamics, we were able to simulate different mechanical behavior by systematically varying parameter values, which offers a novel foundation for designing, controlling, and classifying prosthetic systems ultimately aimed at improving prosthesis user outcomes.
被动下肢假肢系统非线性动力学数据驱动建模
建立义足的非线性动力学模型是将义足机械性能与最终用户结果联系起来的重要工具。随着带控制的扩展动态模式分解(eDMDc)和带控制的非线性动力学稀疏识别(SINDYc)的发展,人们对数据驱动的动力学系统建模重新产生了兴趣。这些算法不需要系统的先验信息,包括机械配置,而且是数据驱动的。本研究旨在评估应用这些数据驱动算法建立假肢非线性负载响应动力学模型的可行性和准确性。我们测试了动态响应脚、液压踝关节装置和三个不同阻力的减震塔的不同组合,它们在三个方向上加载和卸载,反映了行走姿态阶段的关键位置。我们测试了两种不同的数据驱动算法,一种是具有两种不同内核的 eDMDc 算法,另一种是对非线性常微分方程系数进行回归的 SINDYc 算法。每种算法都能建立非线性假体动力学模型,但 SINDYc 的性能优于 eDMDc 方法,其各方向的均方根误差小于 1.50 毫米,峰值位移的最大误差为 1.28 毫米或 4% 的相对误差。根据估计的 SINDYc 系统动力学控制方程,我们能够通过系统地改变参数值来模拟不同的机械行为,这为假肢系统的设计、控制和分类提供了新的基础,最终旨在改善假肢使用者的效果。
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