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Learning PDE to Model Self-Organization of Matter

A self-organization hydrodynamic process has recently been proposed to partially explain the formation of femtosecond laser-induced nanopatterns on Nickel, which have important applications in optics, microbiology, medicine, etc. Exploring laser pattern space is difficult, however, which simultaneou...

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Autores principales: Brandao, Eduardo, Colombier, Jean-Philippe, Duffner, Stefan, Emonet, Rémi, Garrelie, Florence, Habrard, Amaury, Jacquenet, François, Nakhoul, Anthony, Sebban, Marc
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9407468/
https://www.ncbi.nlm.nih.gov/pubmed/36010759
http://dx.doi.org/10.3390/e24081096
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author Brandao, Eduardo
Colombier, Jean-Philippe
Duffner, Stefan
Emonet, Rémi
Garrelie, Florence
Habrard, Amaury
Jacquenet, François
Nakhoul, Anthony
Sebban, Marc
author_facet Brandao, Eduardo
Colombier, Jean-Philippe
Duffner, Stefan
Emonet, Rémi
Garrelie, Florence
Habrard, Amaury
Jacquenet, François
Nakhoul, Anthony
Sebban, Marc
author_sort Brandao, Eduardo
collection PubMed
description A self-organization hydrodynamic process has recently been proposed to partially explain the formation of femtosecond laser-induced nanopatterns on Nickel, which have important applications in optics, microbiology, medicine, etc. Exploring laser pattern space is difficult, however, which simultaneously (i) motivates using machine learning (ML) to search for novel patterns and (ii) hinders it, because of the few data available from costly and time-consuming experiments. In this paper, we use ML to predict novel patterns by integrating partial physical knowledge in the form of the Swift-Hohenberg (SH) partial differential equation (PDE). To do so, we propose a framework to learn with few data, in the absence of initial conditions, by benefiting from background knowledge in the form of a PDE solver. We show that in the case of a self-organization process, a feature mapping exists in which initial conditions can safely be ignored and patterns can be described in terms of PDE parameters alone, which drastically simplifies the problem. In order to apply this framework, we develop a second-order pseudospectral solver of the SH equation which offers a good compromise between accuracy and speed. Our method allows us to predict new nanopatterns in good agreement with experimental data. Moreover, we show that pattern features are related, which imposes constraints on novel pattern design, and suggest an efficient procedure of acquiring experimental data iteratively to improve the generalization of the learned model. It also allows us to identify the limitations of the SH equation as a partial model and suggests an improvement to the physical model itself.
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spelling pubmed-94074682022-08-26 Learning PDE to Model Self-Organization of Matter Brandao, Eduardo Colombier, Jean-Philippe Duffner, Stefan Emonet, Rémi Garrelie, Florence Habrard, Amaury Jacquenet, François Nakhoul, Anthony Sebban, Marc Entropy (Basel) Article A self-organization hydrodynamic process has recently been proposed to partially explain the formation of femtosecond laser-induced nanopatterns on Nickel, which have important applications in optics, microbiology, medicine, etc. Exploring laser pattern space is difficult, however, which simultaneously (i) motivates using machine learning (ML) to search for novel patterns and (ii) hinders it, because of the few data available from costly and time-consuming experiments. In this paper, we use ML to predict novel patterns by integrating partial physical knowledge in the form of the Swift-Hohenberg (SH) partial differential equation (PDE). To do so, we propose a framework to learn with few data, in the absence of initial conditions, by benefiting from background knowledge in the form of a PDE solver. We show that in the case of a self-organization process, a feature mapping exists in which initial conditions can safely be ignored and patterns can be described in terms of PDE parameters alone, which drastically simplifies the problem. In order to apply this framework, we develop a second-order pseudospectral solver of the SH equation which offers a good compromise between accuracy and speed. Our method allows us to predict new nanopatterns in good agreement with experimental data. Moreover, we show that pattern features are related, which imposes constraints on novel pattern design, and suggest an efficient procedure of acquiring experimental data iteratively to improve the generalization of the learned model. It also allows us to identify the limitations of the SH equation as a partial model and suggests an improvement to the physical model itself. MDPI 2022-08-09 /pmc/articles/PMC9407468/ /pubmed/36010759 http://dx.doi.org/10.3390/e24081096 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Brandao, Eduardo
Colombier, Jean-Philippe
Duffner, Stefan
Emonet, Rémi
Garrelie, Florence
Habrard, Amaury
Jacquenet, François
Nakhoul, Anthony
Sebban, Marc
Learning PDE to Model Self-Organization of Matter
title Learning PDE to Model Self-Organization of Matter
title_full Learning PDE to Model Self-Organization of Matter
title_fullStr Learning PDE to Model Self-Organization of Matter
title_full_unstemmed Learning PDE to Model Self-Organization of Matter
title_short Learning PDE to Model Self-Organization of Matter
title_sort learning pde to model self-organization of matter
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9407468/
https://www.ncbi.nlm.nih.gov/pubmed/36010759
http://dx.doi.org/10.3390/e24081096
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