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FES-induced muscular torque prediction with evoked EMG synthesized by NARX-type recurrent neural network

机译:由NARX型递归神经网络合成的诱发肌电信号诱发FES诱发的肌肉扭矩预测

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摘要

Functional electrical stimulation (FES) is able to restore motor function of spinal cord injured (SCI) patients. To make adaptive FES control taking into account the actual muscle state with muscular feedback information, torque estimation and prediction are important to be provided beforehand. Evoked EMG (eEMG) has been found to be highly correlated with FES-induced torque under various muscle conditions, indicating that it can be an useful tool for torque/force prediction. To better construct the relationship between eEMG and stimulated muscular torque, nonlinear-arx-type (NARX-type) model is preferred. This paper presents and exploits a NARX-type recurrent neural network (NARX-RNN) model for identification and prediction of FES-induced muscular dynamics with eEMG. Such NARX-RNN model is with a novel architecture for prediction, with robust prediction performance. To make fast convergence for identification of such NARX-RNN, directly-learning pattern is exploited during the learning phase. Due to difficulty of choosing a proper forgetting factor of Kalman filter for predicting time-variant torque with eEMG, such NARX-RNN may be considered to be a better alternative as torque predictor. Data gathered from two SCI patients is used to evaluate the proposed NARX-RNN model. The NARX-RNN model shows promising estimation and prediction performance only based on eEMG.
机译:功能性电刺激(FES)能够恢复脊髓损伤(SCI)患者的运动功能。为了在考虑具有肌肉反馈信息的实际肌肉状态的情况下进行自适应FES控制,预先提供扭矩估计和预测很重要。已发现在各种肌肉条件下,诱发的EMG(eEMG)与FES诱发的扭矩高度相关,这表明它可能是预测扭矩/力的有用工具。为了更好地构建eEMG与刺激的肌肉扭矩之间的关系,首选非线性Arx型(NARX型)模型。本文介绍并利用了NARX型递归神经网络(NARX-RNN)模型,用于通过eEMG识别和预测FES诱导的肌肉动力学。这种NARX-RNN模型具有新颖的预测架构,具有强大的预测性能。为了使这种NARX-RNN的识别快速收敛,在学习阶段采用了直接学习模式。由于难以选择适当的卡尔曼滤波器的遗忘因子来预测eEMG的时变扭矩,因此可以将这种NARX-RNN视为更好的替代扭矩预测器。从两名SCI患者收集的数据用于评估建议的NARX-RNN模型。仅基于eEMG的NARX-RNN模型显示出有希望的估计和预测性能。

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