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Combining Physical Simulators and Object-Based Networks for Control

13 April 2019
Anurag Ajay
Maria Bauzá
Jiajun Wu
Nima Fazeli
J. Tenenbaum
Alberto Rodriguez
L. Kaelbling
    AI4CE
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Abstract

Physics engines play an important role in robot planning and control; however, many real-world control problems involve complex contact dynamics that cannot be characterized analytically. Most physics engines therefore employ . approximations that lead to a loss in precision. In this paper, we propose a hybrid dynamics model, simulator-augmented interaction networks (SAIN), combining a physics engine with an object-based neural network for dynamics modeling. Compared with existing models that are purely analytical or purely data-driven, our hybrid model captures the dynamics of interacting objects in a more accurate and data-efficient manner.Experiments both in simulation and on a real robot suggest that it also leads to better performance when used in complex control tasks. Finally, we show that our model generalizes to novel environments with varying object shapes and materials.

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