Tommasino Paolo, Campolo Domenico
Laboratory of Neuromotor Physiology, Fondazione Santa Lucia, Rome, Italy.
Synergy Lab, Robotics Research Centre, School of Mechanical and Aerospace Engineering, Nanyang Technological University, Singapore, Singapore.
Front Neurorobot. 2017 Nov 30;11:65. doi: 10.3389/fnbot.2017.00065. eCollection 2017.
A major challenge in robotics and computational neuroscience is relative to the posture/movement problem in presence of kinematic redundancy. We recently addressed this issue using a principled approach which, in conjunction with nonlinear inverse optimization, allowed capturing postural strategies such as Donders' law. In this work, after presenting this general model specifying it as an extension of the Passive Motion Paradigm, we show how, once fitted to capture experimental postural strategies, the model is actually able to also predict movements. More specifically, the passive motion paradigm embeds two main intrinsic components: joint damping and joint stiffness. In previous work we showed that joint stiffness is responsible for static postures and, in this sense, its parameters are regressed to fit to experimental postural strategies. Here, we show how joint damping, in particular its anisotropy, directly affects task-space movements. Rather than using damping parameters to fit task-space motions, we make the hypothesis that damping is proportional to stiffness. This remarkably allows a postural-fitted model to also capture dynamic performance such as curvature and hysteresis of task-space trajectories during wrist pointing tasks, confirming and extending previous findings in literature.
机器人技术和计算神经科学中的一个主要挑战与存在运动冗余时的姿势/运动问题相关。我们最近使用一种有原则的方法解决了这个问题,该方法与非线性逆优化相结合,能够捕捉诸如东德斯定律之类的姿势策略。在这项工作中,在介绍了这个将其指定为被动运动范式扩展的通用模型之后,我们展示了一旦该模型被拟合以捕捉实验姿势策略,它实际上还能够预测运动。更具体地说,被动运动范式包含两个主要的内在组成部分:关节阻尼和关节刚度。在之前的工作中我们表明关节刚度负责静态姿势,从这个意义上说,其参数被回归以拟合实验姿势策略。在这里,我们展示了关节阻尼,特别是其各向异性,如何直接影响任务空间运动。我们不是使用阻尼参数来拟合任务空间运动,而是假设阻尼与刚度成正比。这显著地使一个经过姿势拟合的模型也能够捕捉诸如手腕指向任务期间任务空间轨迹的曲率和滞后等动态性能,证实并扩展了文献中先前的发现。