Performing highly agile dynamic motions, such as jumping or running on uneven stepping stones has remained a challenging problem in legged robot locomotion. This paper presents a framework that combines trajectory optimization and model predictive control to perform robust and consecutive jumping on stepping stones. In our approach, we first utilize trajectory optimization based on full-nonlinear dynamics of the robot to generate periodic jumping trajectories for various jumping distances. A jumping controller based on a model predictive control is then designed for realizing smooth jumping transitions, enabling the robot to achieve continuous jumps on stepping stones. Thanks to the incorporation of MPC as a real-time feedback controller, the proposed framework is also validated to be robust to uneven platforms with unknown height perturbations and model uncertainty on the robot dynamics.
翻译:执行高度灵活的动态动作,例如跳跃或运行在不均匀的踏脚石上,这仍然是脚踏脚踏脚的机器人运动中一个具有挑战性的问题。 本文提供了一个框架,将轨迹优化和模型预测控制结合起来,以实施稳健和连续跳跃踏脚石。 在我们的方法中,我们首先利用基于机器人完全非线性动态的轨迹优化,以产生各种跳跃距离的周期性跳跃轨迹。 以模型预测控制为基础的跳跃控制器,然后设计成实现平稳跳跃过渡,使机器人能够实现跳跃跳跳连续跳动。 由于将MPC整合为实时反馈控制器,拟议框架也得到验证,以强大到不均匀的平台上,机器人运动高度不为奇高,模型不确定。