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Hamilton-Jacobi-Bellman Equations for Q-Learning in Continuous Time (1912.10697v2)

Published 23 Dec 2019 in math.OC, cs.LG, cs.SY, and eess.SY

Abstract: In this paper, we introduce Hamilton-Jacobi-BeLLMan (HJB) equations for Q-functions in continuous time optimal control problems with Lipschitz continuous controls. The standard Q-function used in reinforcement learning is shown to be the unique viscosity solution of the HJB equation. A necessary and sufficient condition for optimality is provided using the viscosity solution framework. By using the HJB equation, we develop a Q-learning method for continuous-time dynamical systems. A DQN-like algorithm is also proposed for high-dimensional state and control spaces. The performance of the proposed Q-learning algorithm is demonstrated using 1-, 10- and 20-dimensional dynamical systems.

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