ADD: Analytically Differentiable Dynamics for Multi-Body Systems with
Frictional Contact
- URL: http://arxiv.org/abs/2007.00987v1
- Date: Thu, 2 Jul 2020 09:51:36 GMT
- Title: ADD: Analytically Differentiable Dynamics for Multi-Body Systems with
Frictional Contact
- Authors: Moritz Geilinger, David Hahn, Jonas Zehnder, Moritz B\"acher, Bernhard
Thomaszewski, Stelian Coros
- Abstract summary: We present a differentiable dynamics solver that is able to handle frictional contact for rigid and deformable objects.
Through a principled mollification of normal and tangential contact forces, our method circumvents the main difficulties inherent to the non-smooth nature of frictional contact.
- Score: 26.408218913234872
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We present a differentiable dynamics solver that is able to handle frictional
contact for rigid and deformable objects within a unified framework. Through a
principled mollification of normal and tangential contact forces, our method
circumvents the main difficulties inherent to the non-smooth nature of
frictional contact. We combine this new contact model with fully-implicit time
integration to obtain a robust and efficient dynamics solver that is
analytically differentiable. In conjunction with adjoint sensitivity analysis,
our formulation enables gradient-based optimization with adaptive trade-offs
between simulation accuracy and smoothness of objective function landscapes. We
thoroughly analyse our approach on a set of simulation examples involving rigid
bodies, visco-elastic materials, and coupled multi-body systems. We furthermore
showcase applications of our differentiable simulator to parameter estimation
for deformable objects, motion planning for robotic manipulation, trajectory
optimization for compliant walking robots, as well as efficient self-supervised
learning of control policies.
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