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首页> 外文期刊>Mechatronics, IEEE/ASME Transactions on >FES-Induced Torque Prediction With Evoked EMG Sensing for Muscle Fatigue Tracking
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FES-Induced Torque Prediction With Evoked EMG Sensing for Muscle Fatigue Tracking

机译:利用EMG感应的FES诱导的扭矩预测进行肌肉疲劳跟踪。

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This paper investigates a torque estimation method for muscle fatigue tracking, using stimulus evoked electromyography (eEMG) in the context of a functional electrical stimulation (FES) rehabilitation system. Although FES is able to effectively restore motor function in spinal cord injured (SCI) individuals, its application is inevitably restricted by muscle fatigue. In addition, the sensory feedback indicating fatigue is missing in such patients. Therefore, torque estimation is essential to provide feedback or feedforward signal for adaptive FES control. In this paper, a fatigue-inducing protocol is conducted on five SCI subjects via transcutaneous electrodes under isometric condition, and eEMG signals are collected by surface electrodes. A myoelectrical mechanical muscle model based on the Hammerstein structure with eEMG as model input is employed to capture muscle contraction dynamics. It is demonstrated that the correlation between eEMG and torque is time varying during muscle fatigue. Compared to conventional fixed-parameter models, the adapted-parameter model shows better torque prediction performance in fatiguing muscles. It motivates us to use a Kalman filter with forgetting factor for estimating the time-varying parameters and for tracking muscle fatigue. The assessment with experimental data reveals that the identified eEMG-to-torque model properly predicts fatiguing muscle behavior. Furthermore, the performance of the time-varying parameter estimation is efficient, suggesting that real-time tracking is feasible with a Kalman filter and driven by eEMG sensing in the application of FES.
机译:本文研究了在功能性电刺激(FES)康复系统的背景下使用刺激诱发的肌电图(eEMG)进行肌肉疲劳跟踪的扭矩估算方法。尽管FES能够有效地恢复脊髓损伤(SCI)个体的运动功能,但其应用不可避免地受到肌肉疲劳的限制。另外,在这些患者中缺少指示疲劳的感觉反馈。因此,扭矩估计对于为自适应FES控制提供反馈或前馈信号至关重要。在本文中,在等距条件下通过经皮电极对五个SCI受试者进行了疲劳诱导方案,并通过表面电极收集了eEMG信号。使用基于Hammerstein结构的eEMG作为模型输入的肌电机械肌肉模型来捕获肌肉收缩动力学。结果表明,eEMG与扭矩之间的相关性在肌肉疲劳过程中随时间而变化。与传统的固定参数模型相比,自适应参数模型在疲劳肌肉中显示出更好的扭矩预测性能。它促使我们使用具有遗忘因子的卡尔曼滤波器来估计随时间变化的参数并跟踪肌肉疲劳。通过实验数据进行的评估表明,所识别的eEMG转转矩模型正确预测了疲劳的肌肉行为。此外,时变参数估计的性能是有效的,这表明在FES应用中使用卡尔曼滤波器进行实时跟踪是可行的,并且由eEMG感应驱动。

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