Noniterative data-driven techniques are design methods that allow optimal feedback control laws to be derived from input-output (I/O) data only, without the need of a model of the process. A drawback of these methods is that, in their standard formulation, they are not statistically efficient. In this paper, it is shown that they can be reformulated as L2-regularized optimization problems, by keeping the same assumptions and features, such that their statistical performance can be enhanced using the same identification data set. A convex optimization method is also introduced to find the regularization matrix. The proposed strategy is finally tested on a benchmark example in digital control system design.
Volkan Cevher, Grigorios Chrysos, Fanghui Liu, Elias Abad Rocamora
Andreas Mortensen, David Hernandez Escobar, Léa Deillon, Alejandra Inés Slagter, Eva Luisa Vogt, Jonathan Aristya Setyadji