Learning-Enabled Robust Control with Noisy Measurements
Abstract
We present a constructive approach to bounded 2-gain adaptive control with noisy measurements for linear time-invariant scalar systems with uncertain parameters belonging to a finite set. The gain bound refers to the closed-loop system, including the learning procedure. The approach is based on forward dynamic programming to construct a finite-dimensional information state consisting of H∞-observers paired with a recursively computed performance metric. We do not assume prior knowledge of a stabilizing controller.
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