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Article

A Parsimonious Separated Representation Empowering PINN–PGD-Based Solutions for Parametrized Partial Differential Equations

by
Chady Ghnatios
1,* and
Francisco Chinesta
1,2
1
PIMM Research Laboratory, UMR 8006 CNRS-ENSAM-CNAM, Arts et Metiers Institute of Technology, 151 Boulevard de l’Hôpital, 75013 Paris, France
2
CNRS@CREATE Ltd., 1 Create Way, #08-01 CREATE Tower, Singapore 138602, Singapore
*
Author to whom correspondence should be addressed.
Mathematics 2024, 12(15), 2365; https://doi.org/10.3390/math12152365
Submission received: 3 July 2024 / Revised: 23 July 2024 / Accepted: 26 July 2024 / Published: 29 July 2024

Abstract

The efficient solution (fast and accurate) of parametric partial differential equations (pPDE) is of major interest in many domains of science and engineering, enabling evaluations of the quantities of interest, optimization, control, and uncertainty propagation—all them under stringent real-time constraints. Different methodologies have been proposed in the past within the model order reduction (MOR) community, based on the use of reduced bases (RB) or the separated representation at the heart of the so-called proper generalized decompositions (PGD). In PGD, an alternate-direction strategy is employed to circumvent the integration issues of operating in multi-dimensional domains. Recently, physics informed neural networks (PINNs), a particular collocation schema where the unknown field is approximated by a neural network (NN), have emerged in the domain of scientific machine learning. PNNs combine the versatility of NN-based approximation with the ease of collocating pPDE. The present paper proposes a combination of both procedures to find an efficient solution for pPDE, that can either be viewed as an efficient collocation procedure for PINN, or as a monolithic PGD that bypasses the use of the fixed-point alternated directions.
Keywords: proper generalized decomposition; physics informed neural network; machine learning; parsimonious learning; separated representation proper generalized decomposition; physics informed neural network; machine learning; parsimonious learning; separated representation

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MDPI and ACS Style

Ghnatios, C.; Chinesta, F. A Parsimonious Separated Representation Empowering PINN–PGD-Based Solutions for Parametrized Partial Differential Equations. Mathematics 2024, 12, 2365. https://doi.org/10.3390/math12152365

AMA Style

Ghnatios C, Chinesta F. A Parsimonious Separated Representation Empowering PINN–PGD-Based Solutions for Parametrized Partial Differential Equations. Mathematics. 2024; 12(15):2365. https://doi.org/10.3390/math12152365

Chicago/Turabian Style

Ghnatios, Chady, and Francisco Chinesta. 2024. "A Parsimonious Separated Representation Empowering PINN–PGD-Based Solutions for Parametrized Partial Differential Equations" Mathematics 12, no. 15: 2365. https://doi.org/10.3390/math12152365

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