Quadratic Regularization of Data-Enabled Predictive Control: Theory and Application to Power Converter Experiments

Open access
Date
2021Type
- Conference Paper
Abstract
Data-driven control that circumvents the process of system identification by providing optimal control inputs directly from system data has attracted renewed attention in recent years. In this paper, we focus on understanding the effects of the regularization on the data-enabled predictive control (DeePC) algorithm. We provide theoretical motivation and interpretation for including a quadratic regularization term. Our analysis shows that the quadratic regularization term leads to robust and optimal solutions with regards to disturbances affecting the data. Moreover, when the input/output constraints are inactive, the quadratic regularization leads to a closed-form solution of the DeePC algorithm and thus enables fast calculations. On this basis, we propose a framework for data-driven synchronization and power regulations of power converters, which is tested by high-fidelity simulations and experiments. Show more
Permanent link
https://doi.org/10.3929/ethz-b-000508681Publication status
publishedExternal links
Editor
Book title
19th IFAC Symposium on System Identification, SYSID 2021Journal / series
IFAC-PapersOnLineVolume
Pages / Article No.
Publisher
ElsevierEvent
Subject
Data-driven control; predictive control; robust optimization; regularization; power convertersOrganisational unit
03751 - Lygeros, John / Lygeros, John
09478 - Dörfler, Florian / Dörfler, Florian
Funding
787845 - Optimal control at large (EC)
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