Home /Research /RLOC: Terrain-Aware Legged Locomotion Using Reinforcement Learning and Optimal Control
LOCOMOTION

RLOC: Terrain-Aware Legged Locomotion Using Reinforcement Learning and Optimal Control

Siddhant Gangapurwala, Mathieu Geisert, Romeo Orsolino, Maurice Fallon, Ioannis Havoutis

Year
2022
Citations
122

Abstract

We present a unified model-based and data-driven approach for quadrupedal planning and control to achieve dynamic locomotion over uneven terrain. We utilize on-board proprioceptive and exteroceptive feedback to map sensory information and desired base velocity commands into footstep plans using a reinforcement learning (RL) policy. This RL policy is trained in simulation over a wide range of procedurally generated terrains. When run online, the system tracks the generated footstep plans using a model-based motion controller. We evaluate the robustness of our method over a wide variety of complex terrains. It exhibits behaviors that prioritize stability over aggressive locomotion. Additionally, we introduce two ancillary RL policies for corrective whole-body motion tracking and recovery control. These policies account for changes in physical parameters and external perturbations. We train and evaluate our framework on a complex quadrupedal system, ANYmal version B, and demonstrate transferability to a larger and heavier robot, ANYmal C, without requiring retraining.

Keywords

Reinforcement learningTerrainRobustness (evolution)Computer scienceQuadrupedalismRobotMotion controlController (irrigation)Motion planningArtificial intelligence

Related papers

Browse all LOCOMOTION papers