Oberseminar "Mathematik des Maschinellen Lernens und Angewandte Analysis" -Amaury Bélières-Frendo
Neural shape optimization of the Dirichlet energy
Datum: | 11.12.2024, 14:15 - 15:15 Uhr |
Kategorie: | Veranstaltung |
Ort: | Hubland Nord, Geb. 40, 01.003 |
Veranstalter: | Institut für Mathematik |
Vortragende: | Amaury Bélières-Frendo, University of Strasbourg | UNISTRA · Institut de Recherche Mathématique Avancée |
Shape optimization is a central field in applied mathematics and engineering, with applications ranging from aerodynamics to material design. The objective is to find the optimal shape of a domain that minimizes a given criterion, such as energy or resistance, while satisfying geometric constraints like fixed volume, surface area, or minimal height.Classically, solving these optimization problems requires numerical methods that rely on shape derivatives and adjoint calculations, which are computationally expensive and difficult to adapt to complex geometries. To overcome these challenges and the inherent limitations in parallelization found in classical approaches, we leverage specific properties of neural networks. This requires suitable representations for both the solution of the state equation and the shape of the domain in which it is defined. For this purpose, we introduce the DeepRitz method to approximate solutions to the state equation and symplectic neural networks to model the domain shape effectively. We illustrate this approach through an example: minimizing the Dirichlet energy of a domain under a volume constraint.