Learning-Based Adaptive Control for Stochastic Linear Systems with Input
Constraints
IEEE Control Systems Letters (L-CSS), 2022
Main:5 Pages
2 Figures
Bibliography:1 Pages
Appendix:10 Pages
Abstract
We propose a certainty-equivalence scheme for adaptive control of scalar linear systems subject to additive, i.i.d. Gaussian disturbances and bounded control input constraints, without requiring prior knowledge of the bounds of the system parameters, nor the control direction. Assuming that the system is at-worst marginally stable, mean square boundedness of the closed-loop system states is proven. Lastly, numerical examples are presented to illustrate our results.
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