Robustness and Consistency in Linear Quadratic Control with Untrusted Predictions
Feb 1, 2022·,,,
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Tongxin Li
Ruixiao Yang
Guannan Qu
Guanya Shi

Chenkai Yu
Adam Wierman
Steven Low
Abstract
We study the problem of learning-augmented predictive linear quadratic control. Our goal is to design a controller that balances consistency, which measures the competitive ratio when predictions are accurate, and robustness, which bounds the competitive ratio when predictions are inaccurate.
Type
Publication
Proc. ACM Meas. Anal. Comput. Syst.