Data-Driven Model Reduction for Stochastic Burgers Equationations

We present a class of efficient parametric closure models for 1D stochastic Burgers equations. Casting it as statistical learning of the flow map, we derive the parametric form by representing the unresolved high wavenumber Fourier modes as functionals of the resolved variable’s trajectory. The redu...

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Main Author: Fei Lu
Format: Article
Language:English
Published: MDPI AG 2020-11-01
Series:Entropy
Subjects:
Online Access:https://www.mdpi.com/1099-4300/22/12/1360
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spelling doaj-461b6058e0cd45af8aa4ba7f7fb287a22020-12-01T00:04:30ZengMDPI AGEntropy1099-43002020-11-01221360136010.3390/e22121360Data-Driven Model Reduction for Stochastic Burgers EquationationsFei Lu0Department of Mathematics, Johns Hopkins University; 3400 N. Charles Street, Baltimore, MD 21218, USAWe present a class of efficient parametric closure models for 1D stochastic Burgers equations. Casting it as statistical learning of the flow map, we derive the parametric form by representing the unresolved high wavenumber Fourier modes as functionals of the resolved variable’s trajectory. The reduced models are nonlinear autoregression (NAR) time series models, with coefficients estimated from data by least squares. The NAR models can accurately reproduce the energy spectrum, the invariant densities, and the autocorrelations. Taking advantage of the simplicity of the NAR models, we investigate maximal space-time reduction. Reduction in space dimension is unlimited, and NAR models with two Fourier modes can perform well. The NAR model’s stability limits time reduction, with a maximal time step smaller than that of the K-mode Galerkin system. We report a potential criterion for optimal space-time reduction: the NAR models achieve minimal relative error in the energy spectrum at the time step, where the K-mode Galerkin system’s mean Courant–Friedrichs–Lewy (CFL) number agrees with that of the full model.https://www.mdpi.com/1099-4300/22/12/1360data-driven modelingstochastic Burgers equationclosure modelCFL number
collection DOAJ
language English
format Article
sources DOAJ
author Fei Lu
spellingShingle Fei Lu
Data-Driven Model Reduction for Stochastic Burgers Equationations
Entropy
data-driven modeling
stochastic Burgers equation
closure model
CFL number
author_facet Fei Lu
author_sort Fei Lu
title Data-Driven Model Reduction for Stochastic Burgers Equationations
title_short Data-Driven Model Reduction for Stochastic Burgers Equationations
title_full Data-Driven Model Reduction for Stochastic Burgers Equationations
title_fullStr Data-Driven Model Reduction for Stochastic Burgers Equationations
title_full_unstemmed Data-Driven Model Reduction for Stochastic Burgers Equationations
title_sort data-driven model reduction for stochastic burgers equationations
publisher MDPI AG
series Entropy
issn 1099-4300
publishDate 2020-11-01
description We present a class of efficient parametric closure models for 1D stochastic Burgers equations. Casting it as statistical learning of the flow map, we derive the parametric form by representing the unresolved high wavenumber Fourier modes as functionals of the resolved variable’s trajectory. The reduced models are nonlinear autoregression (NAR) time series models, with coefficients estimated from data by least squares. The NAR models can accurately reproduce the energy spectrum, the invariant densities, and the autocorrelations. Taking advantage of the simplicity of the NAR models, we investigate maximal space-time reduction. Reduction in space dimension is unlimited, and NAR models with two Fourier modes can perform well. The NAR model’s stability limits time reduction, with a maximal time step smaller than that of the K-mode Galerkin system. We report a potential criterion for optimal space-time reduction: the NAR models achieve minimal relative error in the energy spectrum at the time step, where the K-mode Galerkin system’s mean Courant–Friedrichs–Lewy (CFL) number agrees with that of the full model.
topic data-driven modeling
stochastic Burgers equation
closure model
CFL number
url https://www.mdpi.com/1099-4300/22/12/1360
work_keys_str_mv AT feilu datadrivenmodelreductionforstochasticburgersequationations
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