Open Access
Mathematical and Computational Applications, volume 26, issue 2, pages 32
ROM-Based Inexact Subdivision Methods for PDE-Constrained Multiobjective Optimization
Stefan Banholzer
1
,
Bennet Gebken
2
,
Lena Reichle
1
,
S. Volkwein
1
Publication type: Journal Article
Publication date: 2021-04-15
SJR: —
CiteScore: —
Impact factor: 1.9
ISSN: 22978747, 1300686X
General Engineering
Computational Mathematics
Applied Mathematics
Abstract
The goal in multiobjective optimization is to determine the so-called Pareto set. Our optimization problem is governed by a parameter-dependent semi-linear elliptic partial differential equation (PDE). To solve it, we use a gradient-based set-oriented numerical method. The numerical solution of the PDE by standard discretization methods usually leads to high computational effort. To overcome this difficulty, reduced-order modeling (ROM) is developed utilizing the reduced basis method. These model simplifications cause inexactness in the gradients. For that reason, an additional descent condition is proposed. Applying a modified subdivision algorithm, numerical experiments illustrate the efficiency of our solution approach.
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