Dynamic Mirror Descent based Model Predictive Control for Accelerating Robot Learning
Recent works in Reinforcement Learning (RL) combine model-free (Mf)-RL algorithms with model-based (Mb)-RL approaches to get the best from both: asymptotic performance of Mf-RL and high sample-efficiency of Mb-RL. Inspired by these works, we propose a hierarchical framework that integrates online le...
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Zusammenfassung: | Recent works in Reinforcement Learning (RL) combine model-free (Mf)-RL
algorithms with model-based (Mb)-RL approaches to get the best from both:
asymptotic performance of Mf-RL and high sample-efficiency of Mb-RL. Inspired
by these works, we propose a hierarchical framework that integrates online
learning for the Mb-trajectory optimization with off-policy methods for the
Mf-RL. In particular, two loops are proposed, where the Dynamic Mirror Descent
based Model Predictive Control (DMD-MPC) is used as the inner loop Mb-RL to
obtain an optimal sequence of actions. These actions are in turn used to
significantly accelerate the outer loop Mf-RL. We show that our formulation is
generic for a broad class of MPC-based policies and objectives, and includes
some of the well-known Mb-Mf approaches. We finally introduce a new algorithm:
Mirror-Descent Model Predictive RL (M-DeMoRL), which uses Cross-Entropy Method
(CEM) with elite fractions for the inner loop. Our experiments show faster
convergence of the proposed hierarchical approach on benchmark MuJoCo tasks. We
also demonstrate hardware training for trajectory tracking in a 2R leg and
hardware transfer for robust walking in a quadruped. We show that the
inner-loop Mb-RL significantly decreases the number of training iterations
required in the real system, thereby validating the proposed approach. |
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DOI: | 10.48550/arxiv.2112.02999 |