NeurIPS2022

Global Convergence of Direct Policy Search for State-Feedback H\mathcal{H}_\infty Robust Control: A Revisit of Nonsmooth Synthesis with Goldstein Subdifferential

Xingang Guo, Bin Hu

16 citations

Abstract

Direct policy search has been widely applied in modern reinforcement learning and continuous control. However, the theoretical properties of direct policy search on nonsmooth robust control synthesis have not been fully understood. The optimal H\mathcal{H}_\infty control framework aims at designing a policy to minimize the closed-loop H\mathcal{H}_\infty norm, and is arguably the most fundamental robust control paradigm. In this work, we show that direct policy search is guaranteed to find the global solution of the robust H\mathcal{H}_\infty state-feedback control design problem. Notice that policy search for optimal H\mathcal{H}_\infty control leads to a constrained nonconvex nonsmooth optimization problem, where the nonconvex feasible set consists of all the policies stabilizing the closed-loop dynamics. We show that for this nonsmooth optimization problem, all Clarke stationary points are global minimum. Next, we identify the coerciveness of the closed-loop H\mathcal{H}_\infty objective function, and prove that all the sublevel sets of the resultant policy search problem are compact. Based on these properties, we show that Goldstein's subgradient method and its implementable variants can be guaranteed to stay in the nonconvex feasible set and eventually find the global optimal solution of the H\mathcal{H}_\infty state-feedback synthesis problem. Our work builds a new connection between nonconvex nonsmooth optimization theory and robust control, leading to an interesting global convergence result for direct policy search on optimal H\mathcal{H}_\infty synthesis.