Dynamics Randomization Revisited: A Case Study for Quadrupedal Locomotion

2021 IEEE INTERNATIONAL CONFERENCE ON ROBOTICS AND AUTOMATION (ICRA 2021)(2021)

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摘要
Understanding the gap between simulation and reality is critical for reinforcement learning with legged robots, which are largely trained in simulation. However, recent work has resulted in sometimes conflicting conclusions with regard to which factors are important for success, including the role of dynamics randomization. In this paper, we aim to provide clarity and understanding on the role of dynamics randomization in learning robust locomotion policies for the Laikago quadruped robot. Surprisingly, in contrast to prior work with the same robot model, we find that direct simto-real transfer is possible without dynamics randomization or on-robot adaptation schemes. We conduct extensive ablation studies in a sim-to-sim setting to understand the key issues underlying successful policy transfer, including other design decisions that can impact policy robustness. We further ground our conclusions via sim-to-real experiments with various gaits, speeds, and stepping frequencies. Additional Details: pair.toronto.edu/understanding-dr/
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关键词
dynamics randomization,quadrupedal locomotion,reinforcement learning,legged robots,robust locomotion policies,robot model,sim-to-real transfer,on-robot adaptation schemes,ablation,sim-to-sim setting,policy transfer,policy robustness,Laikago quadruped robot
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