Freeman Chris, Exell Tim, Meadmore Katie, Hallewell Emma, Hughes Ann-Marie
Biomed Tech (Berl). 2015 Jun;60(3):179-91. doi: 10.1515/bmt-2014-0011.
Functional electrical stimulation (FES) has been shown to be an effective approach to upper-limb stroke rehabilitation, where it is used to assist arm and shoulder motion. Model-based FES controllers have recently confirmed significant potential to improve accuracy of functional reaching tasks, but they typically require a reference trajectory to track. Few upper-limb FES control schemes embed a computational model of the task; however, this is critical to ensure the controller reinforces the intended movement with high accuracy. This paper derives computational motor control models of functional tasks that can be directly embedded in real-time FES control schemes, removing the need for a predefined reference trajectory. Dynamic models of the electrically stimulated arm are first derived, and constrained optimisation problems are formulated to encapsulate common activities of daily living. These are solved using iterative algorithms, and results are compared with kinematic data from 12 subjects and found to fit closely (mean fitting between 63.2% and 84.0%). The optimisation is performed iteratively using kinematic variables and hence can be transformed into an iterative learning control algorithm by replacing simulation signals with experimental data. The approach is therefore capable of controlling FES in real time to assist tasks in a manner corresponding to unimpaired natural movement. By ensuring that assistance is aligned with voluntary intention, the controller hence maximises the potential effectiveness of future stroke rehabilitation trials.
功能性电刺激(FES)已被证明是上肢中风康复的一种有效方法,可用于辅助手臂和肩部运动。基于模型的FES控制器最近已证实具有显著潜力,可提高功能性够物任务的准确性,但它们通常需要一条参考轨迹来跟踪。很少有上肢FES控制方案嵌入任务的计算模型;然而,这对于确保控制器高精度地强化预期运动至关重要。本文推导了可直接嵌入实时FES控制方案的功能性任务的计算运动控制模型,从而无需预定义的参考轨迹。首先推导了电刺激手臂的动态模型,并制定了约束优化问题以概括日常生活中的常见活动。使用迭代算法求解这些问题,并将结果与12名受试者的运动学数据进行比较,发现拟合度很高(平均拟合度在63.2%至84.0%之间)。优化使用运动学变量进行迭代执行,因此通过用实验数据替换模拟信号,可以将其转换为迭代学习控制算法。因此,该方法能够实时控制FES,以与未受损的自然运动相对应的方式辅助任务。通过确保辅助与自主意图保持一致,该控制器从而最大限度地提高了未来中风康复试验的潜在效果。