Distributionally Robust LQG with Kullback-Leibler Ambiguity Sets (2505.08370v1)
Abstract: The Linear Quadratic Gaussian (LQG) controller is known to be inherently fragile to model misspecifications often occurring in real-world situations. We consider discretetime partially observable stochastic linear systems and provide a robustification of the standard LQG against distributional uncertainties on the process and measurement noise. Our distributionally robust formulation specifies the admissible perturbations by defining a relative entropy based ambiguity set individually for each time step along a finite-horizon trajectory, and minimizes the worst-case cost across all admissible distributions. Notably, we prove that the optimal control policy is still linear, as in standard LQG, and we derive a computational scheme grounded on iterative best response that provably converges to the set of saddle points. Finally, we consider the case of endogenous uncertainty captured via decision-dependent ambiguity sets and we propose an approximation scheme based on dynamic programming.
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