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Abstraction-based branch and bound approach to Q-learning for hybrid optimal control
Published 22 Nov 2020 in math.OC | (2011.11029v1)
Abstract: In this paper, we design a theoretical framework allowing to apply model predictive control on hybrid systems. For this, we develop a theory of approximate dynamic programming by leveraging the concept of alternating simulation. We show how to combine these notions in a branch and bound algorithm that can further refine the Q-functions using Lagrangian duality. We illustrate the approach on a numerical example.
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