Imitating and Finetuning Model Predictive Control for Robust and Symmetric Quadrupedal Locomotion
Control of legged robots is a challenging problem that has been investigated by different approaches, such as model-based control and learning algorithms. This work proposes a novel Imitating and Finetuning Model Predictive Control (IFM) framework to take the strengths of both approaches. Our framew...
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Zusammenfassung: | Control of legged robots is a challenging problem that has been investigated
by different approaches, such as model-based control and learning algorithms.
This work proposes a novel Imitating and Finetuning Model Predictive Control
(IFM) framework to take the strengths of both approaches. Our framework first
develops a conventional model predictive controller (MPC) using Differential
Dynamic Programming and Raibert heuristic, which serves as an expert policy.
Then we train a clone of the MPC using imitation learning to make the
controller learnable. Finally, we leverage deep reinforcement learning with
limited exploration for further finetuning the policy on more challenging
terrains. By conducting comprehensive simulation and hardware experiments, we
demonstrate that the proposed IFM framework can significantly improve the
performance of the given MPC controller on rough, slippery, and conveyor
terrains that require careful coordination of footsteps. We also showcase that
IFM can efficiently produce more symmetric, periodic, and energy-efficient
gaits compared to Vanilla RL with a minimal burden of reward shaping. |
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DOI: | 10.48550/arxiv.2311.02304 |