Osu Rieko, Burdet Etienne, Franklin David W, Milner Theodore E, Kawato Mitsuo
ATR Computational Neuroscience Laboratories, Kyoto 619-0288, Japan.
J Neurophysiol. 2003 Nov;90(5):3255-69. doi: 10.1152/jn.00073.2003.
Recently, we demonstrated that humans can learn to make accurate movements in an unstable environment by controlling magnitude, shape, and orientation of the endpoint impedance. Although previous studies of human motor learning suggest that the brain acquires an inverse dynamics model of the novel environment, it is not known whether this control mechanism is operative in unstable environments. We compared learning of multijoint arm movements in a "velocity-dependent force field" (VF), which interacted with the arm in a stable manner, and learning in a "divergent force field" (DF), where the interaction was unstable. The characteristics of error evolution were markedly different in the 2 fields. The direction of trajectory error in the DF alternated to the left and right during the early stage of learning; that is, signed error was inconsistent from movement to movement and could not have guided learning of an inverse dynamics model. This contrasted sharply with trajectory error in the VF, which was initially biased and decayed in a manner that was consistent with rapid feedback error learning. EMG recorded before and after learning in the DF and VF are also consistent with different learning and control mechanisms for adapting to stable and unstable dynamics, that is, inverse dynamics model formation and impedance control. We also investigated adaptation to a rotated DF to examine the interplay between inverse dynamics model formation and impedance control. Our results suggest that an inverse dynamics model can function in parallel with an impedance controller to compensate for consistent perturbing force in unstable environments.
最近,我们证明了人类可以通过控制端点阻抗的大小、形状和方向,学会在不稳定环境中做出精确的动作。尽管先前关于人类运动学习的研究表明,大脑会获取新环境的逆动力学模型,但尚不清楚这种控制机制在不稳定环境中是否起作用。我们比较了在“速度依赖力场”(VF)中多关节手臂运动的学习情况,该力场以稳定的方式与手臂相互作用,以及在“发散力场”(DF)中的学习情况,其中相互作用是不稳定的。在这两个力场中,误差演变的特征明显不同。在学习的早期阶段,DF中的轨迹误差方向左右交替;也就是说,有符号误差在每次运动中都不一致,无法指导逆动力学模型的学习。这与VF中的轨迹误差形成了鲜明对比,VF中的轨迹误差最初有偏差,并以与快速反馈误差学习一致的方式衰减。在DF和VF中学习前后记录的肌电图也与适应稳定和不稳定动力学的不同学习和控制机制一致,即逆动力学模型形成和阻抗控制。我们还研究了对旋转DF的适应情况,以检验逆动力学模型形成和阻抗控制之间的相互作用。我们的结果表明,逆动力学模型可以与阻抗控制器并行发挥作用,以补偿不稳定环境中持续的干扰力。