基于运动失效检测和重复试验的拟人机器人操纵快速力波动的重物

Keitaro Murakami, Yuta Kojio, Kunio Kojima, Youhei Kakiuchi, K. Okada, M. Inaba
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引用次数: 0

摘要

人形机器人可以利用自己的体重来操纵重物。然而,在操纵轮椅、高货架和手推车等重物时,机器人本身或物体很容易摔倒。因此,需要对物体的快速运动进行适当的CoG控制和操纵力。为了进行这样的操作,必须解决以下问题。人形机器人非常容易受到快速力变化的影响,如果不正确地移动CoG,就很容易摔倒。此外,如果物体的精确物理和几何参数未知,则很难预先估计复杂的操纵力轨迹。在本文中,我们提出了一种通过重复物体操作来逐步获得合适的力轨迹的方法。本文提出的方法解决了上述问题。机器人在执行运动时,根据机器人的稳定性和被操纵物体的状态估计,提前检测运动故障,从而避免摔倒。它根据试验中测得的力预测出正确的力轨迹。它根据测得的反作用力在线微调预测轨迹。我们将这些方法应用到控制系统中,并通过在实际机器人上的实验验证了其有效性,以轮椅前轮的上推运动为例,通过反复试验实现了轮椅前轮的上推运动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Manipulation of Heavy Object with Rapid Force Fluctuation by Humanoids Based on Motion Failure Detection and Repeated Trials
Humanoid robots can manipulate heavy objects by using their body weight. However, in manipulating heavy objects such as wheelchairs, tall shelves, and carts, the robot itself or the object easily falls over. Thus, proper control of the CoG and the manipulation force against the object's rapid movement is required. The following issues must be addressed in order for such manipulation. A humanoid is highly vulnerable to rapid force change and easily falls over if it improperly shifts the CoG. Further, it is difficult to estimate the complex manipulation force trajectory in advance if the object's precise physical and geometric parameters are unknown. In this paper, we propose a method to progressively acquire an appropriate force trajectory by repeating object manipulations. The proposed method solves the abovementioned problems as follows. The robot avoids falling over by detecting the motion failure in advance according to the robot's stability and the state estimation of the manipulated object while executing the motion. It predicts the correct force trajectory based on the force measured in this trial. It finetunes the predicted trajectory online with the measured reaction force. We implemented these methods into a control system and verified their effectiveness by experiments on an actual robot, realizing the pushing-up motion of the front wheels of a wheelchair by repeated trials, as an example.
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