作为优化问题的机器人运动训练:设计一个只在需要时辅助的控制器

J. Emken, J. Bobrow, D. Reinkensmeyer
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引用次数: 143

摘要

神经损伤后物理康复的主流模式之一是“按需辅助”;也就是说,康复治疗师手动协助患者完成动作,只提供完成动作所需的帮助。几个研究小组正试图用机器人运动训练设备将这一原理自动化。本文通过将问题框架化为优化问题,推导出一种“按需辅助”机器人训练算法。我们假设运动恢复可以建模为学习一种新的感觉运动转换的过程。优化后的机器人运动训练器是一个带有遗忘因子的基于误差的控制器。它在系统地减少辅助的同时限制了运动误差。如果恢复的主导动力类似于强化过程,同样的控制器也能发挥作用。我们通过实验验证了控制器与一个未受损的受试者,展示了控制器如何帮助受试者学习一种新的感觉运动变换(即内部模型),其运动误差比典型的小。这里研究的任务是在一个新的动态环境中在跑步机上行走。这里提出的按需辅助控制器可能有助于限制任务学习过程中的错误,其中大错误是危险的或令人沮丧的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robotic movement training as an optimization problem: designing a controller that assists only as needed
One of the prevailing paradigms of physical rehabilitation following neurologic injury is to "assist-as-needed"; that is, the rehabilitation therapist manually assists patients in performing movements, providing only as much assistance as needed to complete the movement. Several research groups are attempting to automate this principle with robotic movement training devices. This paper derives an "assist as needed" robotic training algorithm by framing the problem as an optimization problem. We assume that motor recovery can be modeled as a process of learning a novel sensory motor transformation. The optimized robotic movement trainer is then an error-based controller with a forgetting factor. It bounds kinematic errors while systematically reducing its assistance. The same controller also works well if the dominant dynamics of recovery are akin to a strengthening process. We experimentally validate the controller with an unimpaired subject by demonstrating how the controller can help the subject to learn a novel sensory motor transformation (i.e. an internal model) with smaller kinematic errors than typical. The task studied here is walking on a treadmill in the presence of a novel dynamic environment. The assist-as-needed controller proposed here may be useful for limiting error during the learning of tasks in which large errors are dangerous or discouraging.
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