Martin Anne E, Gregg Robert D
Department of Mechanical and Nuclear Engineering, The Pennsylvania State University, University Park, PA, 16802 USA,
Departments of Bioengineering and Mechanical Engineering, University of Texas at Dallas, Dallas, TX, 75080 USA,
IEEE Trans Robot. 2016 Aug;32(4):943-948. doi: 10.1109/TRO.2016.2572687.
Predictive simulations of human walking could be used to investigate a wide range of questions. Promising moderately complex models have been developed using the robotics control technique hybrid zero dynamics (HZD). Existing simulations of human walking only consider the mean motion, so they cannot be used to investigate fall risk, which is correlated with variability. This work determines how to incorporate human-like variability into an HZD-based healthy human model to generate a more realistic gait. The key challenge is determining how to combine the existing mathematical description of variability with the dynamic model so that the biped is still able to walk without falling. To do so, the commanded motion is augmented with a sinusoidal variability function and a polynomial correction function. The variability function captures the variation in joint angles while the correction function prevents the variability function from growing uncontrollably. The necessity of the correction function and the improvements with a reduction of stance ankle variability are demonstrated via simulations. The variability in temporal measures is shown to be similar to experimental values.
人类行走的预测模拟可用于研究广泛的问题。利用机器人控制技术混合零动态(HZD)已经开发出了有前景的中等复杂模型。现有的人类行走模拟仅考虑平均运动,因此无法用于研究与变异性相关的跌倒风险。这项工作确定了如何将类似人类的变异性纳入基于HZD的健康人体模型中,以生成更逼真的步态。关键挑战在于确定如何将现有的变异性数学描述与动态模型相结合,以使两足动物仍能行走而不跌倒。为此,通过正弦变异性函数和多项式校正函数对指令运动进行增强。变异性函数捕捉关节角度的变化,而校正函数则防止变异性函数不受控制地增长。通过模拟证明了校正函数的必要性以及姿态脚踝变异性降低带来的改进。时间测量中的变异性显示与实验值相似。