基于强化学习的平行线驱动单足机器人RAMIEL连续跳跃

Kento Kawaharazuka, Temma Suzuki, K. Okada, M. Inaba
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引用次数: 0

摘要

我们开发了一种平行线驱动的单肢机器人RAMIEL,由于平行线机构和较长的加速距离,它既具有速度又具有功率。RAMIEL能够连续跳高,因此在旅行中具有很高的性能。另一方面,没有关节编码器的最小并联线驱动机器人的缺点之一是,从线长度估计的当前关节速度由于线的伸长而振荡,使值不可靠。因此,尽管其性能很高,但机器人的控制是不稳定的,在16次跳跃中有10次,机器人最多只能连续跳跃两次。在本研究中,我们提出了一种在仿真中通过强化学习实现连续跳跃运动的方法,并将其应用于实际机器人中。由于关节速度随导线的伸长而振荡,因此不直接使用它们,而是从关节角度的时间序列中推断出来。同时,加入模仿电线伸长引起的振动的噪音,传递给实际的机器人。结果表明,该系统既可以应用于实际机器人RAMIEL,也可以应用于仿真中稳定的连续跳跃运动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Continuous Jumping of a Parallel Wire-Driven Monopedal Robot RAMIEL Using Reinforcement Learning
We have developed a parallel wire-driven monope-dal robot, RAMIEL, which has both speed and power due to the parallel wire mechanism and a long acceleration distance. RAMIEL is capable of jumping high and continuously, and so has high performance in traveling. On the other hand, one of the drawbacks of a minimal parallel wire-driven robot without joint encoders is that the current joint velocities estimated from the wire lengths oscillate due to the elongation of the wires, making the values unreliable. Therefore, despite its high performance, the control of the robot is unstable, and in 10 out of 16 jumps, the robot could only jump up to two times continuously. In this study, we propose a method to realize a continuous jumping motion by reinforcement learning in simulation, and its application to the actual robot. Because the joint velocities oscillate with the elongation of the wires, they are not used directly, but instead are inferred from the time series of joint angles. At the same time, noise that imitates the vibration caused by the elongation of the wires is added for transfer to the actual robot. The results show that the system can be applied to the actual robot RAMIEL as well as to the stable continuous jumping motion in simulation.
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