Data-Driven Finite Elements Methods: Machine Learning Acceleration of Goal-Oriented Computations

03/10/2020
by   Ignacio Brevis, et al.
0

We introduce the concept of data-driven finite element methods. These are finite-element discretizations of partial differential equations (PDEs) that resolve quantities of interest with striking accuracy, regardless of the underlying mesh size. The methods are obtained within a machine-learning framework during which the parameters defining the method are tuned against available training data. In particular, we use a stable parametric Petrov-Galerkin method that is equivalent to a minimal-residual formulation using a weighted norm. While the trial space is a standard finite element space, the test space has parameters that are tuned in an off-line stage. Finding the optimal test space therefore amounts to obtaining a goal-oriented discretization that is completely tailored towards the quantity of interest. As is natural in deep learning, we use an artificial neural network to define the parametric family of test spaces. Using numerical examples for the Laplacian and advection equation in one and two dimensions, we demonstrate that the data-driven finite element method has superior approximation of quantities of interest even on very coarse meshes

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/04/2020

An interpolated Galerkin finite element method for the Poisson equation

When solving the Poisson equation by the finite element method, we use o...
research
03/10/2023

Finite Element Approximation of Data-Driven Problems in Conductivity

This paper is concerned with the finite element discretization of the da...
research
04/04/2023

Learning quantities of interest from parametric PDEs: An efficient neural-weighted Minimal Residual approach

The efficient approximation of parametric PDEs is of tremendous importan...
research
07/22/2022

E2N: Error Estimation Networks for Goal-Oriented Mesh Adaptation

Given a partial differential equation (PDE), goal-oriented error estimat...
research
05/11/2020

Simplified ResNet approach for data driven prediction of microstructure-fatigue relationship

The heterogeneous microstructure in metallic components results in local...
research
04/15/2020

MeshingNet: A New Mesh Generation Method based on Deep Learning

We introduce a novel approach to automatic unstructured mesh generation ...

Please sign up or login with your details

Forgot password? Click here to reset