Be greedy and learn: efficient and certified algorithms for parametrized optimal control problems

Kleikamp, Hendrik; Lazar, Martin; Molinari, Cesare

Research article (journal) | Peer reviewed

Abstract

We consider parametrized linear-quadratic optimal control problems and provide their online-efficient solutions by combining greedy reduced basis methods and machine learning algorithms. To this end, we first extend the greedy control algorithm, which builds a reduced basis for the manifold of optimal final time adjoint states, to the setting where the objective functional consists of a penalty term measuring the deviation from a desired state and a term describing the control energy. Afterwards, we apply machine learning surrogates to accelerate the online evaluation of the reduced model. The error estimates proven for the greedy procedure are further transferred to the machine learning models and thus allow for efficient a posteriori error certification. We discuss the computational costs of all considered methods in detail and show by means of two numerical examples the tremendous potential of the proposed methodology.

Details about the publication

JournalESAIM: Mathematical Modelling and Numerical Analysis
Volume59
Issue1
Page range291-330
StatusPublished
Release year2025 (08/01/2025)
Language in which the publication is writtenEnglish
DOI10.1051/m2an/2024074
KeywordsParametrized optimal control; Greedy algorithm; Machine learning; Deep neural networks; Kernel methods; Error estimation

Authors from the University of Münster

Kleikamp, Hendrik
Professorship of Applied Mathematics, especially Numerics (Prof. Ohlberger)