4.7 Article

Grounded action transformation for sim-to-real reinforcement learning

期刊

MACHINE LEARNING
卷 110, 期 9, 页码 2469-2499

出版社

SPRINGER
DOI: 10.1007/s10994-021-05982-z

关键词

Reinforcement learning; Robotics; Sim-to-real; Bipedal locomotion

资金

  1. National Science Foundation [CPS-1739964, IIS-1724157, NRI-1925082]
  2. Office of Naval Research [N00014-18-2243]
  3. Future of Life Institute [RFP2-000]
  4. Army Research Office [W911NF-19-2-0333]
  5. DARPA
  6. Lockheed Martin
  7. General Motors
  8. Bosch

向作者/读者索取更多资源

Grounded simulation learning is a promising framework that alters simulators to better match the real world, enabling successful transfer of policies learned in simulation to the physical world. The new GAT algorithm demonstrated superior control policy learning capabilities in controlled experiments compared to traditional hand-coded methods.
Reinforcement learning in simulation is a promising alternative to the prohibitive sample cost of reinforcement learning in the physical world. Unfortunately, policies learned in simulation often perform worse than hand-coded policies when applied on the target, physical system. Grounded simulation learning (gsl) is a general framework that promises to address this issue by altering the simulator to better match the real world (Farchy et al. 2013 in Proceedings of the 12th international conference on autonomous agents and multiagent systems (AAMAS)). This article introduces a new algorithm for gsl-Grounded Action Transformation (GAT)-and applies it to learning control policies for a humanoid robot. We evaluate our algorithm in controlled experiments where we show it to allow policies learned in simulation to transfer to the real world. We then apply our algorithm to learning a fast bipedal walk on a humanoid robot and demonstrate a 43.27% improvement in forward walk velocity compared to a state-of-the art hand-coded walk. This striking empirical success notwithstanding, further empirical analysis shows that gat may struggle when the real world has stochastic state transitions. To address this limitation we generalize gat to the stochasticgat (sgat) algorithm and empirically show that sgat leads to successful real world transfer in situations where gat may fail to find a good policy. Our results contribute to a deeper understanding of grounded simulation learning and demonstrate its effectiveness for applying reinforcement learning to learn robot control policies entirely in simulation.

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