Guarin Diego L, Jalaleddini Kian, Kearney Robert E
Annu Int Conf IEEE Eng Med Biol Soc. 2013;2013:5065-70. doi: 10.1109/EMBC.2013.6610687.
Dynamic ankle joint stiffness defines the relationship between the position of the ankle and the torque acting about it and can be separated into intrinsic and reflex components. Under stationary conditions, intrinsic stiffness can described by a linear second order system while reflex stiffness is described by Hammerstein system whose input is delayed velocity. Given that reflex and intrinsic torque cannot be measured separately, there has been much interest in the development of system identification techniques to separate them analytically. To date, most methods have been nonparametric and as a result there is no direct link between the estimated parameters and those of the stiffness model. This paper presents a novel algorithm for identification of a discrete-time model of ankle stiffness. Through simulations we show that the algorithm gives unbiased results even in the presence of large, non-white noise. Application of the method to experimental data demonstrates that it produces results consistent with previous findings.
动态踝关节刚度定义了踝关节位置与作用于其上的扭矩之间的关系,并且可以分为固有成分和反射成分。在静止条件下,固有刚度可以用线性二阶系统来描述,而反射刚度则由汉默斯坦系统来描述,其输入是延迟速度。鉴于反射扭矩和固有扭矩无法单独测量,因此人们对开发系统识别技术以通过分析将它们分离出来产生了浓厚兴趣。迄今为止,大多数方法都是非参数的,因此估计参数与刚度模型的参数之间没有直接联系。本文提出了一种用于识别踝关节刚度离散时间模型的新算法。通过仿真我们表明,即使存在大量非白噪声,该算法也能给出无偏结果。将该方法应用于实验数据表明,它产生的结果与先前的发现一致。