首页> 外文会议>ASME international design engineering technical conferences and computers and information in engineering conference 2010 >LINEAR AND NONLINEAR SMOOTH ORTHOGONAL DECOMPOSITION TO RECONSTRUCT LOCAL FATIGUE DYNAMICS: A COMPARISON
【24h】

LINEAR AND NONLINEAR SMOOTH ORTHOGONAL DECOMPOSITION TO RECONSTRUCT LOCAL FATIGUE DYNAMICS: A COMPARISON

机译:线性和非线性平滑正交分解重建局部疲劳动力学:比较

获取原文
获取原文并翻译 | 示例

摘要

Identifying physiological fatigue is important for the development of more robust training protocols, better energy supplements, and/or reduction of muscle injuries. Current fatigue measurement technologies are usually invasive and/or impractical, and may not be realizable in out of laboratory settings. A fatigue identification methodology that only uses motion kinematics measurements has a great potential for field applications. Phase space warping (PSW) features of motion kinematic time series analyzed through smooth orthogonal decomposition (SOD) have tracked individual muscle fatigue. In this paper, the performance of a standard SOD analysis is compared to its nonlinear extension using a new experimental data set. Ten healthy right-handed subjects (27 ±2.8 years; 1.71 ±0.10 m height; and 69.91 ± 18.26 kg body mass) perform a sawing motion by pushing a weighted handle back and forth until voluntary exhaustion. Three sets of joint kinematic angles are measured from the elbow, wrist and shoulder as well as surface Electromyography (EMG) from ten different muscle groups. A vector-valued feature time series is generated using PSW metrics estimated from movement kinematics. Dominant SOD coordinates of these features are extracted to track the individual muscle fatigue trends as indicated by mean and median frequencies of the corresponding EMG power spectra. Cross subject variability shows that considerably fewer nonlinear SOD coordinates are needed to track EMG-based fatigue markers, and that nonlinear SOD methodology captures fatigue dynamics in a lower-dimensional sub-space than its linear counterpart.
机译:识别生理疲劳对于开发更强大的训练方案,更好的能量补充和/或减少肌肉损伤很重要。当前的疲劳测量技术通常是侵入性的和/或不切实际的,并且在实验室以外的环境中可能无法实现。仅使用运动学运动学测量的疲劳识别方法在现场应用中具有很大的潜力。通过平滑正交分解(SOD)分析的运动学运动时间序列的相空间扭曲(PSW)特征已经跟踪了单个肌肉的疲劳。在本文中,使用新的实验数据集将标准SOD分析的性能与其非线性扩展进行了比较。十名健康的惯用右手受试者(27±2.8岁;身高1.71±0.10 m;体重69.91±18.26 kg)来回锯切运动,方法是前后推动重物手柄直到自愿筋疲力尽。从肘部,腕部和肩膀以及十个不同肌肉组的表面肌电图(EMG)测量三组关节运动角度。使用从运动学运动估计的PSW度量生成矢量值特征时间序列。提取这些特征的主要SOD坐标,以跟踪各个肌肉的疲劳趋势,如相应EMG功率谱的平均频率和中值频率所示。跨主题变异性表明,跟踪基于EMG的疲劳标记所需的非线性SOD坐标数量要少得多,并且非线性SOD方法可在比其线性对应方法更低维度的子空间中捕获疲劳动态。

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