Differentiable MPC for End-to-end Planning and Control
Amos, Brandon, Rodriguez, Ivan Dario Jimenez, Sacks, Jacob, Boots, Byron, Kolter, J. Zico
–arXiv.org Artificial Intelligence
This provides one way of leveraging and combining the advantages of model-free and model-based approaches. Specifically, we differentiate through MPC by using the KKT conditions of the convex approximation at a fixed point of the controller. Using this strategy, we are able to learn the cost and dynamics of a controller via end-to-end learning. Our experiments focus on imitation learning in the pendulum and cartpole domains, where we learn the cost and dynamics terms of an MPC policy class. We show that our MPC policies are significantly more data-efficient than a generic neural network and that our method is superior to traditional system identification in a setting where the expert is unrealizable.
arXiv.org Artificial Intelligence
Oct-31-2018
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- Research Report (0.64)
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