Dampening parameter distributional shifts under robust control and gain scheduling
Mohammad Ramadan, Mihai Anitescu

TL;DR
This paper introduces a method to reduce distributional shifts in parameter space for nonlinear systems under robust control, ensuring stability across different operating regions by formulating a convex optimization problem.
Contribution
It proposes a novel approach to dampen parameter distributional shifts in nonlinear systems, integrating gain scheduling with robust control through convex semi-definite programming.
Findings
Effective in controlling distributional shifts in nonlinear systems
Ensures robustness across different state-input regions
Solves a gain-scheduling problem via convex optimization
Abstract
Many traditional robust control approaches assume linearity of the system and independence between the system state-input and the parameters of its approximant (possibly lower-order) model. This assumption implies that the application of robust control design to the underlying system introduces no distributional shifts in the parameters of its approximant model. This is generally not true when the underlying system is nonlinear, which may require different approximant models with different parameter distributions when operated at different regions of the state-input space. Therefore, a robust controller has to be robust under the approximant model with parameter distribution that will be experienced in the future data, after applying this control, not the parameter distribution seen in the learning data or assumed in the design. In this paper, we seek a solution to this problem by…
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Taxonomy
TopicsRefrigeration and Air Conditioning Technologies
