Meta-Auto-Decoder: A Meta-Learning Based Reduced Order Model for Solving Parametric Partial Differential Equations

02/16/2023
by   Zhanhong Ye, et al.
0

Many important problems in science and engineering require solving the so-called parametric partial differential equations (PDEs), i.e., PDEs with different physical parameters, boundary conditions, shapes of computational domains, etc. Typical reduced order modeling techniques accelarate solution of the parametric PDEs by projecting them onto a linear trial manifold constructed in the offline stage. These methods often need a predefined mesh as well as a series of precomputed solution snapshots, andmay struggle to balance between efficiency and accuracy due to the limitation of the linear ansatz. Utilizing the nonlinear representation of neural networks, we propose Meta-Auto-Decoder (MAD) to construct a nonlinear trial manifold, whose best possible performance is measured theoretically by the decoder width. Based on the meta-learning concept, the trial manifold can be learned in a mesh-free and unsupervised way during the pre-training stage. Fast adaptation to new (possibly heterogeneous) PDE parameters is enabled by searching on this trial manifold, and optionally fine-tuning the trial manifold at the same time. Extensive numerical experiments show that the MAD method exhibits faster convergence speed without losing accuracy than other deep learning-based methods.

READ FULL TEXT

page 24

page 25

page 28

page 29

page 31

page 33

research
06/26/2023

Analysis of the Decoder Width for Parametric Partial Differential Equations

Recently, Meta-Auto-Decoder (MAD) was proposed as a novel reduced order ...
research
11/03/2022

Meta-PDE: Learning to Solve PDEs Quickly Without a Mesh

Partial differential equations (PDEs) are often computationally challeng...
research
09/29/2021

Model reduction of convection-dominated partial differential equations via optimization-based implicit feature tracking

This work introduces a new approach to reduce the computational cost of ...
research
06/18/2023

Meta-Learning for Airflow Simulations with Graph Neural Networks

The field of numerical simulation is of significant importance for the d...
research
10/27/2020

Meta-MgNet: Meta Multigrid Networks for Solving Parameterized Partial Differential Equations

This paper studies numerical solutions for parameterized partial differe...
research
03/27/2023

GPT-PINN: Generative Pre-Trained Physics-Informed Neural Networks toward non-intrusive Meta-learning of parametric PDEs

Physics-Informed Neural Network (PINN) has proven itself a powerful tool...
research
01/27/2023

TransNet: Transferable Neural Networks for Partial Differential Equations

Transfer learning for partial differential equations (PDEs) is to develo...

Please sign up or login with your details

Forgot password? Click here to reset