Katayama M, Kawato M
Intelligent Systems Laboratory, Sanyo Electric Co., Ltd., Tsukuba Research Center, Ibaraki, Japan.
Biol Cybern. 1993;69(5-6):353-62.
We predict the virtual trajectories and stiffness ellipses during multijoint arm movements by computer simulations. A two-link manipulator with four single-joint muscles and two double-joint muscles is used as a model of the human arm. Physical parameters of the model are derived from several experimental data. Among them, special emphasis is put on low values of the dynamic hand stiffness recently measured during single-joint and multijoint movements. The feedback-error-learning scheme to acquire the inverse dynamics model and the inverse statics model is utilized for this prediction. The virtual trajectories are much more complex than the actual trajectories. This indicates that planning the virtual trajectory is as difficult as solving the inverse dynamics problem for medium and fast movements, and simply falsifies the advocated computational advantage of the virtual trajectory control hypothesis. Thus, we conclude that learning inverse models is essential even in the virtual trajectory control framework. Finally, we propose a new computational model to learn the complicated shape of the virtual trajectories by integrating the virtual trajectory control and the feedback-error-learning scheme.
我们通过计算机模拟预测多关节手臂运动期间的虚拟轨迹和刚度椭圆。一个具有四块单关节肌肉和两块双关节肌肉的双连杆操纵器被用作人类手臂的模型。该模型的物理参数源自多个实验数据。其中,特别强调了最近在单关节和多关节运动期间测量到的动态手部刚度的低值。用于获取逆动力学模型和逆静力学模型的反馈误差学习方案被用于此预测。虚拟轨迹比实际轨迹复杂得多。这表明规划虚拟轨迹与解决中速和快速运动的逆动力学问题一样困难,并且简单地证伪了虚拟轨迹控制假设所主张的计算优势。因此,我们得出结论,即使在虚拟轨迹控制框架中,学习逆模型也是必不可少的。最后,我们提出了一种新的计算模型,通过整合虚拟轨迹控制和反馈误差学习方案来学习虚拟轨迹的复杂形状。