模拟前馈神经网络在神经假体中手握与手腕角度的协调。

M M Adamczyk, P E Crago
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引用次数: 46

摘要

当多关节肌肉在关节之间引入机械耦合时,本研究提出了神经假体中协调肌肉刺激的一般问题的可能解决方案。在手握神经假体中,外源性手肌肉穿过腕关节并在抓握过程中引入大的腕屈曲力矩。为了独立控制手握和手腕角度,控制器必须考虑机械耦合。在模拟中,我们研究了使用人工神经网络来协调手和手腕肌肉刺激。这些网络是用容易通过实验获得的数据进行训练的。当系统特性固定且存在已知的外部负载时,前馈控制表现出良好的手、腕部协调性。可预测的干扰(例如,作用在手上的重力)可以通过感知手臂方向来补偿。然而,由于手腕角度对不可预测的干扰(如疲劳或物体重量)很敏感,可能需要自愿干预或反馈控制来减少残余误差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Simulated feedforward neural network coordination of hand grasp and wrist angle in a neuroprosthesis.

This study presents a possible solution of the general problem of coordinating muscle stimulation in a neuroprosthesis when multiarticular muscles introduce mechanical coupling between joints. In a hand-grasp neuroprosthesis, extrinsic hand muscles cross the wrist joint and introduce large wrist flexion moments during grasp. In order to control hand grasp and wrist angle independently, a controller must take the mechanical coupling into account. In simulation, we investigated the use of artificial neural networks to coordinate hand and wrist muscle stimulation. The networks were trained with data that is easily obtained experimentally. Feedforward control showed excellent hand and wrist coordination when the properties of the system were fixed and there were known external loads. Predictable disturbances (e.g., gravity acting on the hand) can be compensated by sensing arm orientation. However, since wrist angle is sensitive to unpredictable disturbances (e.g., fatigue or object weight), voluntary intervention or feedback control may be required to reduce residual errors.

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