Learning Agile Paths from Optimal ControlDownload PDF

Anonymous

07 Nov 2022 (modified: 05 May 2023)CoRL Agility Workshop 2022Readers: Everyone
Keywords: Legged Robots, Imitation Learning, Optimal Control
TL;DR: Employing self-supervised learning from optimal control to learn agile optimal paths for a quadruped robot controlled via MPC.
Abstract: Efficient motion planning algorithms are of central importance for deploying robots in the real world. Unfortunately, these algorithms often drastically reduce the dimensionality of the problem for the sake of feasibility, thereby foregoing optimal solutions. This limitation is most readily observed in agile robots, where the solution space can have multiple additional dimensions. Optimal control approaches partially solve this problem by finding optimal solutions without sacrificing the complexity of the environment, but do not meet the efficiency demands of real-world applications. This work proposes an approach to resolve these issues simultaneously by training a machine learning model on the outputs of an optimal control approach.
0 Replies

Loading