外骨骼肌电信号处理与控制的统一框架研究

G. Durandau, W. Suleiman
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引用次数: 5

摘要

本文提出了一种利用表面肌电电极采集的肌电信号对机器人系统进行控制的方法。肌电图信号使用神经肌肉骨骼(NMS)模型进行分析,该模型同时表示身体的肌肉和骨骼。它的优点是在不改变初始参数的情况下向模型中添加外力,这对外骨骼的控制特别有用。该算法已通过仅自由移动肘关节或同时处理具有各种负载的杠铃的实验进行了验证。然后将我们的算法结果与同一会话期间由动作捕捉系统获得的动作进行比较。实验结果表明,该算法仅使用肌电信号预测和估计手臂运动是有效的。
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Toward a Unified Framework for EMG Signals Processing and Controlling an Exoskeleton
In this paper, we present a control method of robotic system using electromyography (EMG) signals collected by surface EMG electrodes. The EMG signals are analyzed using a neuromusculoskeletal (NMS) model that represents at the same time the muscle and the skeleton of the body. It has the advantage of adding external forces to the model without changing the initial parameters which is particularly useful for the control of exoskeletons. The algorithm has been validated through experiments consisting of moving only the elbow joint freely or while handling a barbell having various sets of loads. The results of our algorithm are then compared to the motions obtained by a motion capture system during the same session. The comparison points out the efficiency of our algorithm for predicting and estimating the arm motion using only EMG signals.
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