Virtual reference feedback tuning with robustness constraints: A swarm intelligence solution
L. V. Fiorio, C. L. Remes, P. Wheeler, Y. R. de Novaes

TL;DR
This paper enhances the VRFT data-driven control design method by integrating robustness constraints using swarm intelligence algorithms, ensuring improved robustness in real-world inspired control problems.
Contribution
It introduces a novel approach combining $ ext{H}_ ext{ extinfty}$ robustness constraints with VRFT using swarm intelligence, maintaining one-shot data efficiency.
Findings
Achieved robustness criteria in real-world inspired problems.
Compared four swarm algorithms with satisfactory results.
Maintained VRFT's one-shot characteristic with robustness constraints.
Abstract
The simplified modeling of a complex system allied with a low-order controller structure can lead to poor closed-loop performance and robustness. A feasible solution is to avoid the necessity of a model by using data for the controller design. The Virtual Reference Feedback Tuning (VRFT) is a data-driven design method that only requires a single batch of data and solves a reference tracking problem, although with no guarantee of robustness. In this work, the inclusion of an robustness constraint to the VRFT cost function is addressed. The estimation of the norm of the sensitivity transfer function is extended to maintain the one-shot characteristic of the VRFT. Swarm intelligence algorithms are used to solve the non-convex cost function. The proposed method is applied in two real-world inspired problems with four different swarm intelligence…
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Taxonomy
TopicsControl Systems and Identification · Advanced Control Systems Design · Advanced Control Systems Optimization
