Flashner H, Beuter A, Arabyan A
Biol Cybern. 1987;55(6):387-96. doi: 10.1007/BF00318373.
In a previous study (Beuter et al. 1986) the authors modeled a stepping motion using a three-body linkage with four degrees of freedom. Stepping was simulated by using three task parameters (i.e., step height, length, and duration) and sinusoidal joint angular velocity profiles. The results supported the concept of a hierarchical control structure with open-loop control during normal operation. In this study we refine the dynamic model and improve the simulation technique by incorporating the dynamics of the leg after landing, adding a foot segment to the model, and preprogramming the complete step motion using cycloids. The equations of the forces and torques developed on the ground by the foot during the landing phase are derived using the Lagrangian method. Simulation results are compared to experimental data collected on a subject stepping four times over an obstacle using a Selspot motion analysis system. A hierarchical control model that incorporates a learning process is proposed. The model allows an efficient combination of open and closed loop control strategies and involves hardwired movement segments. We also test the hypothesis of cycloidal velocity profiles in the joint programs against experimental data using a novel curve-fitting procedure based on analytical rather than numerical differentiation. The results suggest multiobjective optimization of the joint's motion. The control and learning model proposed here will help the understanding of the mechanisms responsible for assembling selected movement segments into goal-directed movement sequences in humans.
在之前的一项研究中(Beuter等人,1986年),作者使用具有四个自由度的三体连杆机构对踏步运动进行了建模。通过使用三个任务参数(即步高、步长和步长持续时间)和正弦关节角速度曲线来模拟踏步。结果支持了正常运行期间具有开环控制的分层控制结构的概念。在本研究中,我们通过纳入着地后腿部的动力学、在模型中添加足部段以及使用摆线对完整的步运动进行预编程,来完善动态模型并改进模拟技术。使用拉格朗日方法推导了着地阶段足部在地面上产生的力和扭矩方程。将模拟结果与使用Selspot运动分析系统对一名受试者四次跨越障碍物的踏步过程收集的实验数据进行了比较。提出了一个包含学习过程的分层控制模型。该模型允许开环和闭环控制策略的有效组合,并涉及硬连线运动段。我们还使用一种基于解析而非数值微分的新颖曲线拟合程序,根据实验数据检验关节程序中摆线速度曲线的假设。结果表明关节运动的多目标优化。这里提出的控制和学习模型将有助于理解负责将选定的运动段组装成人类目标导向运动序列的机制。