DiffSim2Real: Deploying Quadrupedal Locomotion Policies Purely Trained in Differentiable Simulation
Resumen
.. Differentiable simulators provide analytic gradients,
enabling more sample-efficient learning algorithms and
paving the way for data intensive learning tasks such as learning
from images. In this work, we demonstrate that locomotion
policies trained with analytic gradients from a differentiable
simulator can be successfully transferred to the real world.
Typically, simulators that offer informative gradients lack the
physical accuracy needed for sim-to-real transfer, and viceversa.
A key factor in our success is a smooth contact model
that combines informative gradients with physical accuracy,
ensuring effective transfer of learned behaviors. To the best of
our knowledge, this is the first time a real quadrupedal robot
is able to locomote after training exclusively in a differentiable
simulation.
DiffSim2Real: Deploying Quadrupedal Locomotion Policies Purely Trained in Differentiable Simulation
Palabras Clave
.Differentiable simulators Analytic gradients Locomotion policies Sim-to-real transfer Quadrupedal robot