TL;DR
NeuralSim enhances differentiable physics simulators with neural networks to learn complex dynamics, improving modeling accuracy and control speed, demonstrated through real-robot experiments and automatic augmentation discovery.
Contribution
This work introduces a hybrid differentiable simulator augmented with neural networks, enabling learning of nonlinear effects and accelerating model-based control.
Findings
Successfully learned complex frictional dynamics from real data.
Achieved a ten-fold speed-up in model-predictive control for quadruped robots.
Demonstrated improved control delays and real-hardware performance.
Abstract
Differentiable simulators provide an avenue for closing the sim-to-real gap by enabling the use of efficient, gradient-based optimization algorithms to find the simulation parameters that best fit the observed sensor readings. Nonetheless, these analytical models can only predict the dynamical behavior of systems for which they have been designed. In this work, we study the augmentation of a novel differentiable rigid-body physics engine via neural networks that is able to learn nonlinear relationships between dynamic quantities and can thus learn effects not accounted for in traditional simulators.Such augmentations require less data to train and generalize better compared to entirely data-driven models. Through extensive experiments, we demonstrate the ability of our hybrid simulator to learn complex dynamics involving frictional contacts from real data, as well as match known models…
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