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A Multi-DoF Prosthetic Hand Finger Joint Controller for Wearable sEMG Sensors by Nonlinear Autoregressive Exogenous Model

机译:由非线性自回归外源模型的可穿戴SEM传感器的多-COF假臂手指接合控制器

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摘要

The loss of mobility function and sensory information from the arm, hand, and fingertips hampers the activities of daily living (ADL) of patients. A modern bionic prosthetic hand can compensate for the lost functions and realize multiple degree of freedom (DoF) movements. However, the commercially available prosthetic hands usually have limited DoFs due to limited sensors and lack of stable classification algorithms. This study aimed to propose a controller for finger joint angle estimation by surface electromyography (sEMG). The sEMG data used for training were gathered with the Myo armband, which is a commercial EMG sensor. Two features in the time domain were extracted and fed into a nonlinear autoregressive model with exogenous inputs (NARX). The NARX model was trained with pre-selected parameters using the Levenberg–Marquardt algorithm. Comparing with the targets, the regression correlation coefficient (R) of the model outputs was more than 0.982 over all test subjects, and the mean square error was less than 10.02 for a signal range in arbitrary units equal to [0, 255]. The study also demonstrated that the proposed model could be used in daily life movements with good accuracy and generalization abilities.
机译:从臂,手和指尖的移动功能和感官信息丢失妨碍了患者的日常生活(ADL)的活动。现代仿生假肢可以弥补丢失的功能,实现多程度的自由(DOF)运动。然而,由于有限的传感器和缺乏稳定的分类算法,市售的假肢手通常具有有限的DOF。本研究旨在提出通过表面肌电图像(SEMG)的手指关节角度估计控制器。用于培训的SEMG数据与Myo Armband一起收集,即商业EMG传感器。提取时域中的两个特征,并用外源输入(NARX)进料到非线性自回归模型中。使用Levenberg-Marquardt算法使用预选参数培训NARX模型。与目标相比,模型输出的回归相关系数(R)在所有测试对象上大于0.982,并且对于等于[0,255]的任意单位信号范围小于10.02。该研究还表明,拟议的模型可用于日常生活运动,具有良好的准确性和泛化能力。

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