Safely Learning to Control the Constrained Linear Quadratic Regulator

2019 American Control Conference (ACC)(2019)

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摘要
We study the constrained linear quadratic regulator with unknown dynamics, addressing the tension between safety and exploration in data-driven control techniques. We present a framework which allows for system identification through persistent excitation, while maintaining safety by guaranteeing the satisfaction of state and input constraints. This framework involves a novel method for synthesizing robust constraint-satisfying feedback controllers, leveraging newly developed tools from system level synthesis. We connect statistical results with cost sub-optimality bounds to give non-asymptotic guarantees on both estimation and controller performance.
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关键词
constrained linear quadratic regulator,unknown dynamics,data-driven control techniques,system identification,robust constraint-satisfying feedback controllers,safely learning,state input constraints,cost sub-optimality bounds,system level synthesis
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