使用学习动作余量的连续全能跳跃

Yuxiang Yang, Xiang Meng, Wenhao Yu, Tingnan Zhang, Jie Tan, Byron Boots
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引用次数: 4

摘要

跳跃是有腿机器人穿越复杂地形的必要条件。在这项工作中,我们提出了一个结合最优控制和强化学习的分层框架来学习四足机器人的连续跳跃运动。该框架的核心是姿态控制器,它结合了手动设计的加速度控制器和学习到的残差策略。作为有效训练的加速度控制器热启动策略,训练后的策略克服了加速度控制器的局限性,提高了跳跃的稳定性。此外,低级全身控制器将身体姿势命令从姿态控制器转换为运动命令。经过模拟训练,我们的框架可以直接部署到真实的机器人上,并执行多功能的连续跳跃动作,包括高达50cm的全方位跳跃,向前60cm的跳跃,以及高达90度的跳跃转弯。更多结果请访问我们的网站:https://sites.google.com/view/learning-to-jump。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Continuous Versatile Jumping Using Learned Action Residuals
Jumping is essential for legged robots to traverse through difficult terrains. In this work, we propose a hierarchical framework that combines optimal control and reinforcement learning to learn continuous jumping motions for quadrupedal robots. The core of our framework is a stance controller, which combines a manually designed acceleration controller with a learned residual policy. As the acceleration controller warm starts policy for efficient training, the trained policy overcomes the limitation of the acceleration controller and improves the jumping stability. In addition, a low-level whole-body controller converts the body pose command from the stance controller to motor commands. After training in simulation, our framework can be deployed directly to the real robot, and perform versatile, continuous jumping motions, including omni-directional jumps at up to 50cm high, 60cm forward, and jump-turning at up to 90 degrees. Please visit our website for more results: https://sites.google.com/view/learning-to-jump.
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