16-19 déc. 2024 Paris (France)

Résumés > Chinesta Francisco

Spatio-temporal physics-informed neural networks to solve boundary value problems for classical and gradient-enhanced continua
Duc Vinh Nguyen  1@  , Mohamed Jebahi  1@  , Francisco Chinesta  2, 3@  
1 : Laboratoire d'Etude des Microstructures et de Mécanique des Matériaux  (LEM3)
Université de Lorraine, Centre National de la Recherche Scientifique, Arts et Métiers Sciences et Technologies
F-57070 Metz -  France
2 : Laboratoire Procédés et Ingénierie en Mécanique et Matériaux  (PIMM)
Conservatoire National des Arts et Métiers [CNAM], Centre National de la Recherche Scientifique : UMR8006, Arts et Métiers Sciences et Technologies, Centre National de la Recherche Scientifique
F-75013 Paris -  France
3 : CNRS@CREATE Ltd.

This study present a proof of concept exploring the use of PINNs as an alternative to finite element (FE) solvers in both classical and gradientenhanced solid mechanics. To this end, spatio-temporal PINNs are designed to represent continuous solutions of boundary value problems within spatio-temporal space. These PINNs directly incorporate the equilibrium and constitutive equations in their differential and rate forms, bypassing the requirement for incremental implementation. This simplifies application of PINNs to solve complex mechanical problems, particularly those involved in the context of gradient-enhanced continua. Moreover, traditional meshing is no longer required as it is replaced by a point cloud, making it possible to overcome meshing drawbacks. The results of this investigation prove the effectiveness of the proposed methodology, especially with regards to non-monotonic loading conditions and irreversible plastic deformation. Compared to classical FE approaches, the proposed spatio-temporal PINNs are more readily applied to complex problems, which are tackled in their raw form. This is especially true for gradient-enhanced continuum problems, where there is no need to introduce additional degrees of freedom as in classical FE approaches. However, PINNs training generally requires more computation time, a challenge that can be mitigated by employing the concept of transfer learning as shown in this work. The use of PINNs as mechanical solvers is shown to be highly promising in the forthcoming era, where advancements in GPU technology can further enhance their performance in terms of computation time.


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