Application of an adaptive model hierarchy to parametrized optimal control problems

Kleikamp, Hendrik

Research article in edited proceedings (conference) | Peer reviewed

Abstract

In this contribution we apply an adaptive model hierarchy, consisting of a full-order model, a reduced basis reduced order model, and a machine learning surrogate, to parametrized linear-quadratic optimal control problems. The involved reduced order models are constructed adaptively and are called in such a way that the model hierarchy returns an approximate solution of given accuracy for every parameter value. At the same time, the fastest model of the hierarchy is evaluated whenever possible and slower models are only queried if the faster ones are not sufficiently accurate. The performance of the model hierarchy is studied for a parametrized heat equation example with boundary value control.

Details about the publication

PublisherP. Frolkovič, K. Mikula and D. Ševčovič
Book titleProceedings of the Conference Algoritmy 2024 (Volume 2024)
Page range66-75
Publishing companySelbstverlag / Eigenverlag
Place of publicationBratislava
Edition1
StatusPublished
Release year2024 (19/02/2024)
Language in which the publication is writtenEnglish
ConferenceAlgoritmy, Podbanske, Slovakia
ISBN978-80-89829-33-0
Link to the full texthttp://www.iam.fmph.uniba.sk/amuc/ojs/index.php/algoritmy/article/view/2145
KeywordsParametrized optimal control problems, adaptive model hierarchy, reduced order models, ma- chine learning, a posteriori error estimation

Authors from the University of Münster

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