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Control of a hybrid upper-limb orthosis device based on a data-driven artificial neural network classifier of electromyography signals

机译:基于数据驱动人工神经网络分类器的励磁信号信号控制混合体上肢矫形器装置

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摘要

This study presents the design of a functional electrical stimulation system (FES) for upper limb, including the construction and evaluation of an integral self-carrying rehabilitation device. The proposed device incorporated a hybrid system that performs the active mobilization control for the articulations or the assisted movement for the upper limb using electrical stimulation, as well as an on-line characterization of the electromyographic (EMG) signals captured in the trapezius and deltoid muscles. The orthosis was manufactured using a three-dimensional printer. The constructed device was electronically instrumented as a fully actuated robot, and it was controlled in a decentralized form by a set of state feedback (proportional-derivative) algorithms. This study proposed an interpolation method based on sigmoidal functions to solve the trajectory tracking for each actuated articulation. These algorithms used the estimated time-derivative of the tracking error provided by several explicit discretized super-twisting differentiators. The EMG signals were classified by a static multilayered artificial neural network trained with the Levenberg-Marquardt method, defining the movement intention triggered by the user. The device was tested in simulation software including the integration of several evaluation scenarios depending on the classified EMG signal and the tracking trajectory performance developed by the suggested state feedback controllers. The constructed orthosis was successfully evaluated with four volunteers showing the expected performance according to the proposed evaluation scenarios.
机译:该研究介绍了上肢功能电刺激系统(FES)的设计,包括整体自载康复装置的结构和评估。所提出的装置包括一种混合系统,其使用电刺激对上肢的铰接或辅助运动进行主动动员控制,以及在梯度和三角肌肌中捕获的电拍摄信号的在线表征。使用三维打印机制造矫形器。构造的装置被电子仪表被称为完全致动机器人,并且通过一组状态反馈(比例衍生物)算法以分散形式控制。该研究提出了一种基于矩形函数的插值方法,以解决每个致动铰接的轨迹跟踪。这些算法使用了几个明确离散的超扭转差分提供的跟踪误差的估计时间导数。 EMG信号由静态多层人工神经网络分类,训练用Levenberg-Marquardt方法训练,定义了用户触发的运动意图。该器件在模拟软件中进行测试,包括根据分类的EMG信号和由建议的状态反馈控制器开发的跟踪轨迹性能集成了多个评估场景。由四个志愿者成功评估构建的矫形器,根据所提出的评估方案,有四个志愿者展示预期的绩效。

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