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首页> 外文期刊>PeerJ Computer Science >Active triggering control of pneumatic rehabilitation gloves based on surface electromyography sensors
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Active triggering control of pneumatic rehabilitation gloves based on surface electromyography sensors

机译:基于表面肌动画传感器的气动康复手套的主动触发控制

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The portable and inexpensive hand rehabilitation robot has become a practical rehabilitation device for patients with hand dysfunction. A pneumatic rehabilitation glove with an active trigger control system is proposed, which is based on surface electromyography (sEMG) signals. It can trigger the hand movement based on the patient’s hand movement trend, which may improve the enthusiasm and efficiency of patient training. Firstly, analysis of sEMG sensor installation position on human’s arm and signal acquisition process were carried out. Then, according to the statistical law, three optimal eigenvalues of sEMG signals were selected as the follow-up neural network classification input. Using the back propagation (BP) neural network, the classifier of hand movement is established. Moreover, the mapping relationship between hand sEMG signals and hand actions is built by training and testing. Different patients choose the same optimal eigenvalues, and the calculation formula of eigenvalues’ amplitude is unique. Due to the differences among individuals, the weights and thresholds of each node in the BP neural network model corresponding to different patients are not the same. Therefore, the BP neural network model library is established, and the corresponding network is called for operation when different patients are trained. Finally, based on sEMG signal trigger, the pneumatic glove training control algorithm was proposed. The combination of the trigger signal waveform and the motion signal waveform indicates that the pneumatic rehabilitation glove is triggered to drive the patient’s hand movement. Preliminary tests have confirmed that the accuracy rate of trend recognition for hand movement is about 90%. In the future, clinical trials of patients will be conducted to prove the effectiveness of this system.
机译:便携式和廉价的手工康复机器人已成为手动功能障碍患者的实用康复装置。提出了一种带有主动触发控制系统的气动康复手套,其基于表面电学(SEMG)信号。它可以根据患者的手动运动趋势触发手动运动,这可能提高患者培训的热情和效率。首先,进行了对人臂和信号采集过程的SEMG传感器安装位置的分析。然后,根据统计法,选择了SEMG信号的三个最佳特征值作为后续神经网络分类输入。使用后传播(BP)神经网络,建立了手动运动的分类器。此外,通过训练和测试建立了手半信号和手动动作之间的映射关系。不同的患者选择相同的最佳特征值,特征值幅度的计算公式是独特的。由于个人之间的差异,与不同患者对应的BP神经网络模型中每个节点的权重和阈值不相同。因此,建立了BP神经网络模型库,并且当训练不同的患者时,调用相应的网络进行操作。最后,基于SEMG信号触发,提出了气动手套训练控制算法。触发信号波形和运动信号波形的组合表明气动康复手套被触发以驱动患者的手动运动。初步测试证实,手工趋势识别的准确度率约为90%。将来,将进行患者的临床试验以证明该系统的有效性。

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