Discovering PDEs from Multiple Experiments

09/24/2021
by   Georges Tod, et al.
3

Automated model discovery of partial differential equations (PDEs) usually considers a single experiment or dataset to infer the underlying governing equations. In practice, experiments have inherent natural variability in parameters, initial and boundary conditions that cannot be simply averaged out. We introduce a randomised adaptive group Lasso sparsity estimator to promote grouped sparsity and implement it in a deep learning based PDE discovery framework. It allows to create a learning bias that implies the a priori assumption that all experiments can be explained by the same underlying PDE terms with potentially different coefficients. Our experimental results show more generalizable PDEs can be found from multiple highly noisy datasets, by this grouped sparsity promotion rather than simply performing independent model discoveries.

READ FULL TEXT

page 4

page 8

research
12/09/2022

PDE-LEARN: Using Deep Learning to Discover Partial Differential Equations from Noisy, Limited Data

In this paper, we introduce PDE-LEARN, a novel PDE discovery algorithm t...
research
06/22/2021

Sparsistent Model Discovery

Discovering the partial differential equations underlying a spatio-tempo...
research
06/02/2021

KO-PDE: Kernel Optimized Discovery of Partial Differential Equations with Varying Coefficients

Partial differential equations (PDEs) fitting scientific data can repres...
research
06/08/2023

A Bayesian Framework for learning governing Partial Differential Equation from Data

The discovery of partial differential equations (PDEs) is a challenging ...
research
09/13/2023

Efficient Learning of PDEs via Taylor Expansion and Sparse Decomposition into Value and Fourier Domains

Accelerating the learning of Partial Differential Equations (PDEs) from ...
research
09/14/2023

Physics-constrained robust learning of open-form PDEs from limited and noisy data

Unveiling the underlying governing equations of nonlinear dynamic system...
research
11/09/2020

Sparsely constrained neural networks for model discovery of PDEs

Sparse regression on a library of candidate features has developed as th...

Please sign up or login with your details

Forgot password? Click here to reset