Physics-based machine learning for computational failure mechanics

27. 02. 2026 | 10.00 Uhr - 11.00 Uhr

Invitation to the presentation

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Prof. Dr.-Ing. habil. Fadi Aldakheel, Leibniz Universität Hannover,
Institut für Baumechanik und Numerische Mechanik (IBNM)

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This presentation introduces a physics-based machine learning framework for modeling brittle and ductile fracture, as well as cyclic damage and fatigue. Physical principles, such as governing equations and fundamental constraints, are embedded directly into the neural network architecture. As a result, the proposed framework overcomes key limitations of classical data-driven models, which depend heavily on large datasets and provide no guarantees of physical consistency.


Kontakt

Philipp Zilk

Infos & Anmeldung

No registration is required for university members. Externals can register by email to philipp.zilk@unibw.de.

Veranstalter:
Thomas Apel, Michael Brünig, Josef Kiendl, Alexander Popp
Ort:
Building 35, Room 1004
Kosten:
-
Zielgruppe:
Hochschulöffentlich
Art der Veranstaltung:
Öffentliche Veranstaltung
Termin übernehmen: