首页> 外文期刊>Multibody system dynamics >The influence of modeling hypothesis and experimental methodologies in the accuracy of muscle force estimation using EMG-driven models
【24h】

The influence of modeling hypothesis and experimental methodologies in the accuracy of muscle force estimation using EMG-driven models

机译:建模假设和实验方法对使用肌电图驱动模型估算肌肉力量的准确性的影响

获取原文
获取原文并翻译 | 示例
           

摘要

This paper discusses some methodological questions regarding the application of EMG-driven models to estimate muscle forces, for the triceps surae performing isometric contractions. Ankle torque is estimated from a Hill-type muscle model driven by EMG data, collected from the three components of triceps surae and tibialis anterior. Ankle joint torque is synchronously collected from a dynamometer, which is compared to the sum of each muscle force multiplied by the respective ankle moment arm. A protocol consisting of two steps of low and medium/high loads is used. Raw EMG signal is processed and used as the input signal for the muscle model. The difference between simulated and dynamometer measured torque is calculated as the RMS error between the two curves. A set of nominal muscle model parameters is initially chosen from literature (e.g., OpenSim), which allows observing the characteristics of the error distribution. One possibility to improve model accuracy is using individual muscle parameters. We investigated the effect of applying simple scale factors to the nominal muscle model parameters and using ultrasound for estimating muscle maximum force. Other questions regarding muscle model improvements are also addressed, such as using a nonlinear formulation of activation dynamics and variable pennation angle. Surface EMG signals acquisition and processing can also affect force estimation accuracy. Electrodes positioning can influence signal amplitude, and the one-channel EMG may not represent actual excitation for the whole muscle. We have shown that high density EMG reduces, in some cases, the torque estimation error.
机译:本文讨论了有关肌电图驱动模型用于估计肌力的一些方法学问题,因为肱三头肌进行等距收缩。踝部扭矩是根据肌电图数据驱动的希尔型肌肉模型估算的,该模型是从肱三头肌和胫骨前肌的三个部分收集的。从测功机同步收集踝关节扭矩,将其与每个肌肉力的总和乘以相应的踝关节力矩臂进行比较。使用了由低负载和中/高负载的两个步骤组成的协议。处理原始的EMG信号,并将其用作肌肉模型的输入信号。模拟和测功机测得的扭矩之间的差异计算为两条曲线之间的RMS误差。首先从文献(例如,OpenSim)中选择一组标称的肌肉模型参数,这允许观察误差分布的特征。提高模型准确性的一种可能性是使用单独的肌肉参数。我们研究了将简单比例因子应用于标称肌肉模型参数并使用超声波估算肌肉最大力量的效果。还讨论了有关肌肉模型改善的其他问题,例如使用激活动力学和可变垂角的非线性公式。表面肌电信号的采集和处理也会影响力估计的准确性。电极定位会影响信号幅度,单通道EMG可能无法代表整个肌肉的实际兴奋。我们已经表明,在某些情况下,高密度EMG可以减少扭矩估算误差。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号