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TGPT-PINN: Nonlinear model reduction with transformed GPT-PINNs
Journal article   Peer reviewed

TGPT-PINN: Nonlinear model reduction with transformed GPT-PINNs

Yanlai Chen, Yajie Ji, Akil Narayan and Zhenli Xu
Computer methods in applied mechanics and engineering, Vol.430, p.117198
10/01/2024

Abstract

Meta-learning Nonlinear model order reduction Parametric systems Physics-informed neural networks Reduced basis method
We introduce the Transformed Generative Pre-Trained Physics-Informed Neural Networks (TGPT-PINN) for accomplishing nonlinear model order reduction (MOR) of transport-dominated partial differential equations in an MOR-integrating PINNs framework. Building on the recent development of the GPT-PINN that is a network-of-networks design achieving snapshot-based model reduction, we design and test a novel paradigm for nonlinear model reduction that can effectively tackle problems with parameter-dependent discontinuities. Through incorporation of a shock-capturing loss function component as well as a parameter-dependent transform layer, the TGPT-PINN overcomes the limitations of linear model reduction in the transport-dominated regime. We demonstrate this new capability for nonlinear model reduction in the PINNs framework by several nontrivial parametric partial differential equations.

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