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Robust Regret Control with Uncertainty-Dependent Baseline

Published: October 24, 2025 | arXiv ID: 2510.21415v1

By: Jietian Liu, Peter Seiler

Potential Business Impact:

Helps machines learn better with unknown problems.

Business Areas:
Risk Management Professional Services

This paper proposes a robust regret control framework in which the performance baseline adapts to the realization of system uncertainty. The plant is modeled as a discrete-time, uncertain linear time-invariant system with real-parametric uncertainty. The performance baseline is the optimal non-causal controller constructed with full knowledge of the disturbance and the specific realization of the uncertain plant. We show that a controller achieves robust additive regret relative to this baseline if and only if it satisfies a related, robust $H_\infty$ performance condition on a modified plant. One technical issue is that the modified plant can, in general, have a complicated nonlinear dependence on the uncertainty. We use a linear approximation step so that the robust additive regret condition can be recast as a standard $\mu$-synthesis problem. A numerical example is used to demonstrate the proposed approach.

Country of Origin
🇺🇸 United States

Page Count
8 pages

Category
Mathematics:
Optimization and Control