Content area

Abstract

The data-driven discovery of partial differential equations (PDEs) consistent with spatiotemporal data is experiencing a rebirth in machine learning research. Training deep neural networks to learn such data-driven partial differential operators requires extensive spatiotemporal data. For learning coarse-scale PDEs from computational fine-scale simulation data, the training data collection process can be prohibitively expensive. We propose to transformatively facilitate this training data collection process by linking machine learning (here, neural networks) with modern multiscale scientific computation (here, equation-free numerics). These equation-free techniques operate over sparse collections of small, appropriately coupled, space-time subdomains ("patches"), parsimoniously producing the required macro-scale training data. Our illustrative example involves the discovery of effective homogenized equations in one and two dimensions, for problems with fine-scale material property variations. The approach holds promise towards making the discovery of accurate, macro-scale effective materials PDE models possible by efficiently summarizing the physics embodied in "the best" fine-scale simulation models available.

Details

Title
Linking Machine Learning with Multiscale Numerics: Data-Driven Discovery of Homogenized Equations
Author
Arbabi, Hassan 1 ; Bunder, Judith E 2 ; Samaey, Giovanni 3 ; Roberts, Anthony J 2 ; Kevrekidis, Ioannis G 4 

 Department of Mechanical Engineering, Massachusetts Institute of Technology, Cambridge, USA 
 School of Mathematical Sciences, University of Adelaide, Adelaide, Australia 
 NUMA, Department of Computer Science, University of Leuven (KU Leuven), Leuven, Belgium 
 Departments of Chemical and Biomolecular Engineering and Applied Mathematics and Statistics, Johns Hopkins University, Baltimore, USA 
Pages
4444-4457
Section
AUGMENTING PHYSICS-BASED MODELS IN ICME WITH MACHINE LEARNING AND UNCERTAINTY QUANTIFICATION
Publication year
2020
Publication date
Dec 2020
Publisher
Springer Nature B.V.
ISSN
10474838
Source type
Scholarly Journal
Language of publication
English
ProQuest document ID
2490287047
Copyright
Copyright Springer Nature B.V. Dec 2020