Litcius/Paper detail

CPG-RL: Learning Central Pattern Generators for Quadruped Locomotion

Guillaume Bellegarda, Auke Jan Ijspeert

2022IEEE Robotics and Automation Letters104 citationsDOIOpen Access PDF

Abstract

In this letter, we present a method for integrating central pattern generators (CPGs), i.e. systems of coupled oscillators, into the deep reinforcement learning (DRL) framework to produce robust and omnidirectional quadruped locomotion. The agent learns to directly modulate the intrinsic oscillator setpoints (amplitude and frequency) and coordinate rhythmic behavior among different oscillators. This approach also allows the use of DRL to explore questions related to neuroscience, namely the role of descending pathways, interoscillator couplings, and sensory feedback in gait generation. We train our policies in simulation and perform a sim-to-real transfer to the Unitree A1 quadruped, where we observe robust behavior to disturbances unseen during training, most notably to a dynamically added 13.75 kg load representing 115% of the nominal quadruped mass. We test several different observation spaces based on proprioceptive sensing and show that our framework is deployable with no domain randomization and very little feedback, where along with the oscillator states, it is possible to provide only contact booleans in the observation space.

Topics & Concepts

Central pattern generatorReinforcement learningComputer scienceGaitControl theory (sociology)RhythmArtificial intelligencePhysicsBiologyAcousticsPhysiologyControl (management)Robotic Locomotion and ControlBiomimetic flight and propulsion mechanismsReinforcement Learning in Robotics