基于神经网络回归分析和MES小波变换的1自由度外骨骼控制

Rafael Puerta, A. Lopez, L. Roldan, Diego Patino
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引用次数: 1

摘要

通过外骨骼等外部装置改善人体运动性能是一个活跃的研究领域。本文介绍了一种用于辅助上肢屈伸的单自由度外骨骼的设计与实现。外骨骼由来自力传感器和肌电信号(MES)的信号控制,从而减少使用者的肌肉活动。MES是从肱三头肌和肱二头肌群捕获的。随后的数字信号处理包括:对信号进行时频小波变换提取特征,然后利用人工神经网络(ANN)对其进行回归分析。我们根据上述信号提出了外骨骼的速度控制方案,该方案是实时执行的,实现了二头肌活动减少高达94%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Control of 1-DOF Exoskeleton based on Neural Network Regression Analysis and Wavelet Transform of MES
Improvement of human locomotor performance through external devices such as exoskeletons is a field of active research. This paper presents the design and implementation of an exoskeleton of one degree of freedom (DOF) to assist the flexion and extension of the upper limb. The exoskeleton is controlled by signals from force sensors and myoelectric signals (MES), achieving a reduction of the muscle activity of the user. The MES are captured from the triceps and biceps muscle groups. Subsequent digital signal processing comprises: for feature extraction of signals the time-frequency Wavelet transform is performed, and its following regression analysis is done by an artificial neural network (ANN). We propose a speed control scheme of the exoskeleton from the aforementioned signals, which is executed in real time, achieving a reduction of the biceps muscle activity up to 94%.
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