Robot Control Laboratory, Department of Mechanical Engineering, KAIST, Daejeon 305-701, South Korea.
J Neurosci Methods. 2010 May 30;189(1):97-112. doi: 10.1016/j.jneumeth.2010.02.021. Epub 2010 Mar 16.
The basic assumption of stochastic human arm impedance estimation methods is that the human arm and robot behave linearly for small perturbations. In the present work, we have identified the degree of influence of nonlinear friction in robot joints to the stochastic human arm impedance estimation. Internal model based impedance control (IMBIC) is then proposed as a means to make the estimation accurate by compensating for the nonlinear friction. From simulations with a nonlinear Lugre friction model, it is observed that the reliability and accuracy of the estimation are severely degraded with nonlinear friction: below 2 Hz, multiple and partial coherence functions are far less than unity; estimated magnitudes and phases are severely deviated from that of a real human arm throughout the frequency range of interest; and the accuracy is not enhanced with an increase of magnitude of the force perturbations. In contrast, the combined use of stochastic estimation and IMBIC provides with accurate estimation results even with large friction: the multiple coherence functions are larger than 0.9 throughout the frequency range of interest and the estimated magnitudes and phases are well matched with that of a real human arm. Furthermore, the performance of suggested method is independent of human arm and robot posture, and human arm impedance. Therefore, the IMBIC will be useful in measuring human arm impedance with conventional robot, as well as in designing a spatial impedance measuring robot, which requires gearing.
随机人体手臂阻抗估计方法的基本假设是,在小干扰下,人体手臂和机器人的行为呈线性。在本工作中,我们已经确定了机器人关节中的非线性摩擦对随机人体手臂阻抗估计的影响程度。然后提出了基于内部模型的阻抗控制(IMBIC)作为一种通过补偿非线性摩擦来使估计更准确的方法。通过对非线性 Lugre 摩擦模型的仿真,观察到存在非线性摩擦时,估计的可靠性和准确性会严重降低:在 2Hz 以下,多个和部分相干函数远小于 1;在感兴趣的整个频率范围内,估计的幅度和相位与真实人体手臂严重偏离;并且随着力扰动幅度的增加,精度不会提高。相比之下,随机估计和 IMBIC 的结合即使在存在较大摩擦的情况下也能提供准确的估计结果:在感兴趣的整个频率范围内,多个相干函数大于 0.9,并且估计的幅度和相位与真实人体手臂非常匹配。此外,所提出方法的性能不依赖于人体手臂和机器人姿势以及人体手臂阻抗。因此,IMBIC 将有助于使用常规机器人测量人体手臂阻抗,以及设计需要齿轮的空间阻抗测量机器人。