Towards more efficient robotic gait training: A novel controller to modulate movement errors

Simon Rudt, Marco Moos, Solange Seppey, R. Riener, L. Marchal-Crespo
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引用次数: 11

Abstract

Robot-aided gait training has been presented as a promising technique to improve rehabilitation in patients with neurological lesions. Although robotic guidance is often used to reduce performance errors while practicing, there is currently little evidence that robotic guidance is more beneficial for human motor learning than unassisted practice. Research on motor learning has emphasized that movement errors drive motor adaptation. Thereby, robotic algorithms that augment errors rather than decrease them have a great potential to provoke better motor learning. In this paper, we present a novel control algorithm that modulates movement errors by limiting dangerous and discouraging large errors with haptic guidance, while augmenting awareness of task relevant errors by means of error amplification. We also designed a controller that applies random disturbance torques that can work on top of the error-modulating controller. The controllers were evaluated using robotic testing. The error-modulating controller resulted in larger errors due to error amplification, but limited the maximum deviation from the desired pattern, thanks to haptic guidance. Adding random disturbance torques increased gait variability. The combination of the random disturbance and error-modulating controllers increased the kinematic errors and gait variability, while limited large errors, providing an excellent framework to enhance motor learning.
迈向更有效的机器人步态训练:一种调节运动误差的新型控制器
机器人辅助步态训练被认为是一种很有前途的技术,可以改善神经病变患者的康复。虽然机器人指导经常被用来减少练习时的表现错误,但目前很少有证据表明机器人指导对人类运动学习比无辅助练习更有益。运动学习的研究强调运动错误驱动运动适应。因此,增加误差而不是减少误差的机器人算法具有激发更好的运动学习的巨大潜力。在本文中,我们提出了一种新的控制算法,通过限制触觉引导的危险和阻止大误差来调节运动误差,同时通过误差放大来增强任务相关误差的意识。我们还设计了一个应用随机干扰转矩的控制器,该控制器可以在误差调制控制器上工作。使用机器人测试对控制器进行评估。由于误差放大,误差调制控制器导致较大的误差,但由于触觉引导,限制了与期望模式的最大偏差。增加随机干扰扭矩增加步态变异性。随机干扰和误差调节控制器的结合增加了运动误差和步态变异性,同时限制了大误差,为增强运动学习提供了一个很好的框架。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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