Adaptive Reduced-Basis Trust-Region Methods for Defect Identification in Elastic MaterialsOpen Access

Klein, Benedikt; Ohlberger, Mario; Schuster, Thomas

Forschungsartikel in Online-Sammlung | Preprint

Zusammenfassung

Monitoring the integrity of elastic structures using ultrasonic waves requires the efficient identification of material parameters from measured surface displacements. The displacement field is governed by Cauchy's equation of motion, i.e., an elastic wave equation. Consequently, defect localization leads to a high-dimensional spatial parameter identification problem for a hyperbolic system with given initial and boundary conditions. Stable parameter reconstructions typically rely on regularization techniques such as the iteratively regularized Gauss--Newton method (IRGNM). However, its practical application is computationally demanding due to the high-dimensional nature of the problem. To address this bottleneck, we propose a reduced-order modeling approach that simultaneously reduces the state and parameter spaces using adaptively constructed reduced-basis spaces. This yields online-efficient surrogate models for both the forward and adjoint evaluations required in derivative-based optimization. To ensure reliability, the IRGNM iteration is embedded into an adaptive, trust-region framework that provides accuracy of the reduced-order approximations. The approach extends our recent contributions, which focus on elliptic and parabolic problems, to the hyperbolic setting. We demonstrate the reliability and effectiveness of the method for defect detection through numerical experiments.

Details zur Publikation

Name des RepositoriumsarXiv
Artikelnummer2605.19896
Statuseingereicht / in Begutachtung
Veröffentlichungsjahr2026 (19.05.2026)
Sprache, in der die Publikation verfasst istEnglisch
Stichwörterparameter identification, model reduction, inverse problems, hyperbolic PDEs, Gauss-Newton methods

Autor*innen der Universität Münster

Klein, Benedikt Simon
Ohlberger, Mario

Projekte, aus denen die Publikation entstanden ist

Laufzeit: 01.01.2026 - 31.12.2032 | 2. Förderperiode
Gefördert durch: DFG - Exzellenzcluster
Art des Projekts: DFG-Hauptprojekt koordiniert an der Universität Münster
Laufzeit: 01.01.2026 - 31.12.2032 | 1. Förderperiode
Gefördert durch: DFG - Exzellenzcluster
Art des Projekts: Teilprojekt in DFG-Verbund koordiniert an der Universität Münster