Localized Reduced Basis Methods for PDE-constrained Parameter Optimization (LRB-Opt)

Basic data for this project

Type of projectIndividual project
Duration at the University of Münster01/01/2019 - 30/06/2023

Description

This projects is concerned with model reduction for parameter optimization of nonlinear elliptic partial differential equations (PDEs). The goal is to develop a new paradigm for PDE-constrained optimization based on adaptive online enrichment. The essential idea is to design a localized version of the reduced basis (RB) method which is called Localized Reduced Basis Method (LRBM). This allows us to tighten the quality of the reduced order approximation online within each iteration of the applied optimization algorithms.A localized a posteriori error analysis ensures convergence of the reduced basis solution to the solution of the underlying infinite dimensional parameter optimization problem.In the case of a locally inaccurate approximation quality the RB discretization is improved only locally in a very efficient way. The approach is designed for numerical multiscale methods, trust region based optimization methods and for iteratively regularized Gauß-Newton algorithms.

KeywordsNumerical mathematics; model reduction; optimization; inverse problems; partial differential equations; a-posteriori error analysis
DFG-Gepris-IDhttps://gepris.dfg.de/gepris/projekt/415818537
Funding identifierOH 98/11-1; SCHI 1493/1-1 | DFG project number: 415818537
Funder / funding scheme
  • DFG - Individual Grants Programme

Project management at the University of Münster

Ohlberger, Mario
Schindler, Felix Tobias

Applicants from the University of Münster

Ohlberger, Mario
Schindler, Felix Tobias

Research associates from the University of Münster

Keil, Tim

Project partners outside the University of Münster

  • University of KonstanzGermany

Publications of the University of Münster resulting from the project

Keil T, Mechelli L, Ohlberger M, Schindler F, Volkwein S (2021)
In: ESAIM: Mathematical Modelling and Numerical Analysis55. doi:10.1051/m2an/2021019
Research article (journal) | Peer reviewed | Published
Keil Tim, Ohlberger Mario (2022)
In: Lirkov Ivan, Margenov Svetozar (eds.), Large-Scale Scientific Computing16-28ChamSpringer International Publishing. doi:10.1007/978-3-030-97549-4_2
Research article (book contribution) | Peer reviewed | Published
Banholzer S, Keil T, Mechelli L, Ohlberger M, Schindler F, Volkwein S (2022)
In: Pure and Applied Functional Analysis7(5)1561-1596.
Research article (journal) | Peer reviewed | Published
Keil Tim, Ohlberger Mario (2024)
In: ESAIM: Mathematical Modelling and Numerical Analysis5879-105. doi:10.1051/m2an/2023089
Research article (journal) | Peer reviewed | Published
Ohlberger, M.; Banholzer, S.; Haasdonk, B.; Keil, T., Kleikamp, H.; Mechelli, L.; Oguntola, M;, Schindler,F.; Volkwein, S.; Wenzel, T. (2023)
In: Oberwolfach Reports13/2023. doi:10.4171/OWR/2023/13
Abstract in journal (conference) | Peer reviewed | Published
Show all publications (6)

Doctorates resulting from the project

Adaptive Reduced Basis Methods for Multiscale Problems and Large-scale PDE-constrained Optimization
Candidate: Keil, Tim | Supervisors: Ohlberger, Mario | Reviewers: Ohlberger, Mario; Volkwein, Stefan
Period of time: 01/03/2018 - 22/06/2022
Doctoral examination procedure finished at: Doctoral examination procedure at University of Münster