2022
DOI: 10.1109/lcsys.2021.3094764
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Learning Q-Function Approximations for Hybrid Control Problems

Abstract: The main challenge in controlling hybrid systems arises from having to consider an exponential number of sequences of future modes to make good long-term decisions. Model predictive control (MPC) computes a control action through a finite-horizon optimisation problem. A key ingredient in this problem is a terminal cost, to account for the system's evolution beyond the chosen horizon. A good terminal cost can reduce the horizon length required for good control action and is often tuned empirically by observing … Show more

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