Robust Feedback Optimization with Model Uncertainty: A Regularization Approach
Abstract
Feedback optimization optimizes the steady state of a dynamical system by implementing optimization iterations in closed loop with the plant. It relies on online measurements and limited model information, namely, the input-output sensitivity. In practice, various issues including inaccurate modeling, lack of observation, or changing conditions can lead to sensitivity mismatches, causing closed-loop sub-optimality or even instability. To handle such uncertainties, we pursue robust feedback optimization, where we optimize the closed-loop performance against all possible sensitivities lying in specific uncertainty sets. We provide tractable reformulations for the corresponding min-max problems via regularizations and characterize the online closed-loop performance through the tracking error in case of time-varying optimal solutions. Simulations on a distribution grid illustrate the effectiveness of our robust feedback optimization controller in addressing sensitivity mismatches in a non-stationary environment.
Cite
@article{arxiv.2503.24151,
title = {Robust Feedback Optimization with Model Uncertainty: A Regularization Approach},
author = {Winnie Chan and Zhiyu He and Keith Moffat and Saverio Bolognani and Michael Muehlebach and Florian Dörfler},
journal= {arXiv preprint arXiv:2503.24151},
year = {2025}
}
Comments
Proc. 64th IEEE Conference on Decision and Control