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Reference Trajectory Generation for Closed-Loop Control of Electrical Stimulation for Rehabilitation of Upper Limb

机译:用于恢复上肢恢复的电气刺激的参考轨迹生成

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Functional movements in the paralyzed upper limb can be restored with the help of brain-computer-interface (BCI). A BCI system typically adopts a functional electrical stimulation (FES) system that activates weakened muscles that are otherwise responsible for actuating finger movements. A BCI-FES system can enable muscle contraction through the delivery of electrical stimulation pulses. The control of voltage or current stimulation parameters such as pulse width, frequency, and amplitude along with feedback signals from finger joints positions are essential for stable grasping. For the design of a closed-loop functional electrical stimulation controller, it is obligatory to set standard reference trajectories of finger joints’ angular positions and velocities for controlling stimulation parameters in neuroprosthetics and rehabilitation. This study proposes a new closed-loop control architecture targeted for achieving successful and stable grasping of an upper limb paralyzed subject. This can be achieved by characterizing each of the finger joints’ instantaneous angular position and velocity, through reference trajectories. These reference trajectories are generated corresponding to various types of grasping for feeding to the controller, responsible for stimulation of muscles. Hence, to generate such trajectories, first, grasping classification has been implemented using standard machine learning algorithms on a large set of existing real-time data of different types of objects’ grasping such as various diameter, abducted thumb and other types of objects, from many healthy subjects. The results demonstrate the successful implementation of fairly accurate classifications and trajectory generations which are crucial for closed-loop control towards stable grasping.
机译:瘫痪的上肢中的功能运动可以在脑 - 计算机接口(BCI)的帮助下恢复。 BCI系统通常采用功能性电刺激(FES)系统,其激活较弱的肌肉,否则负责致动手指运动。 BCI-FES系统可以通过输送电刺激脉冲来实现肌肉收缩。控制电压或电流刺激参数,例如脉冲宽度,频率和幅度以及来自手指接头位置的反馈信号对于稳定抓握是必不可少的。对于闭环功能电刺激控制器的设计,设定指关节角度位置和速度的标准参考轨迹,用于控制神经调节剂和康复中的刺激参数。本研究提出了一种新的闭环控制架构,用于实现成功且稳定地掌握上肢瘫痪对象。这可以通过将每个手指接头的瞬时角度位置和速度通过参考轨迹来实现这一点。产生这些参考轨迹,其对应于各种类型的抓握以供给控制器,负责刺激肌肉。因此,为了生成这样的轨迹,首先,使用标准机器学习算法在不同类型的物体抓取的大型现有实时数据上使用标准机器学习算法来实现掌握分类,例如各种直径,被绑架的拇指和其他类型的物体,许多健康的科目。结果表明,成功实施了相当准确的分类和轨迹世代,这对于稳定抓握的闭环控制至关重要。

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