气动人工肌肉驱动肌肉骨骼机器人的直接教学方法

Shuhei Ikemoto, Yoichi Nishigori, K. Hosoda
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引用次数: 13

摘要

提出了一种气动人工肌肉驱动肌肉骨骼机器人的直接教学方法。为了重现人类直接教导的动作,有必要重现pam的长度,因为它们在几何上决定了机器人的姿态。然而,由于安装长度传感器非常占用空间,因此很难测量pam的长度。此外,估计长度也很困难,因为它需要知道pam的内在参数,而这些参数对于每块肌肉来说都是非常难以测量的。为了克服上述问题,本文提出的方法在特定约束下计算PAM的期望内压力或期望轴向张力,从而迫使PAM在再现阶段的长度与教学阶段的长度相似。这样,就可以通过控制内部压力或轴向张力而不是长度来再现运动。通过一个真实的肌肉骨骼机械臂实验,验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Direct teaching method for musculoskeletal robots driven by pneumatic artificial muscles
This paper presents a direct teaching method for musculoskeletal robots driven by pneumatic artificial muscles (PAMs). In order to reproduce motions which are directly taught by a human, it is necessary to reproduce the lengths of PAMs because they geometrically determine the posture assumed by the robot. However, it is difficult to measure the lengths of PAMs because mounting length sensors is space-consuming. Additionally, estimating lengths is also difficult because it is required to know the intrinsic parameters of PAMs which are extremely difficult to measure for each muscle. In order to overcome the above problems, the proposed method calculates the desired internal pressures or the desired axial tensions of the PAMs under a specific constraint, which forces PAM's lengths in the reproducing phase to be similar to the lengths during the teaching phase. In this way, it is possible to reproduce the motion by controlling the internal pressures or the axial tensions instead of the lengths. The validity was confirmed through an experiment using a real musculoskeletal robot arm.
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