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Cascade based iterative learning control of robotic-assisted upper extremity stroke rehabilitation

机译:基于级联的机器人辅助上肢中风康复的迭代学习控制

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This paper develops a combined cascade and iterative learning control based scheme for regulating the assistive stimulation applied to the human muscle in robotic-assisted upper-limb stroke rehabilitation. Guided by a robot the patient makes repeated attempts at a finite duration task with assistive stimulation applied to the relevant muscles. Once each attempt is complete, the arm is reset to the starting location and an iterative learning control algorithm is used to compute the stimulation to be applied on the next attempt, where if the patient is improving with each attempt the level of assistive stimulation required should decrease and the voluntary effort increase. This property has been observed in clinical trials where a critical problem is the response of the muscles to electrical stimulation and, in particular, fatigue. The new results in this paper relate to the addition of a cascade controller in an inner feedback loop around the muscle model to counter the onset of fatigue. Results from a simulation based assessment of the final design using patient data are given, where such a study is a prerequisite for obtaining ethical approval to conduct a clinical trial.
机译:本文开发了一种基于级联和迭代学习控制的组合方案,用于调节在机器人辅助上肢中风康复中应用于人体肌肉的辅助刺激。在机器人的引导下,患者会在有限的持续时间进行重复尝试,并在相关肌肉上施加辅助刺激。每次尝试完成后,将手臂重置到起始位置,并使用迭代学习控制算法来计算下一次尝试所要施加的刺激,如果患者每次尝试都在改善,则所需的辅助刺激水平应减少而自愿努力增加。在临床试验中已观察到该特性,其中关键问题是肌肉对电刺激,特别是疲劳的反应。本文的新结果涉及在肌肉模型周围的内部反馈回路中添加级联控制器,以抵抗疲劳的发作。给出了使用患者数据对最终设计进行基于模拟的评估的结果,其中,此类研究是获得进行临床试验的伦理批准的前提。

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