Learning in Networked Control Systems

Abstract

We design adaptive controller (learning rule) for a networked control system (NCS) in which data packets containing control information are transmitted across a lossy wireless channel. We propose Upper Confidence Bounds for Networked Control Systems (UCB-NCS), a learning rule that maintains confidence intervals for the estimates of plant parameters (A(),B()), and channel reliability p(), and utilizes the principle of optimism in the face of uncertainty while making control decisions. We provide non-asymptotic performance guarantees for UCB-NCS by analyzing its "regret", i.e., performance gap from the scenario when (A(),B(),p()) are known to the controller. We show that with a high probability the regret can be upper-bounded as O(CT)Here O hides logarithmic factors., where T is the operating time horizon of the system, and C is a problem dependent constant.

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