Data-assisted reduced-order modeling of extreme events in complex dynamical systems.

The prediction of extreme events, from avalanches and droughts to tsunamis and epidemics, depends on the formulation and analysis of relevant, complex dynamical systems. Such dynamical systems are characterized by high intrinsic dimensionality with extreme events having the form of rare transitions...

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Main Authors: Zhong Yi Wan, Pantelis Vlachas, Petros Koumoutsakos, Themistoklis Sapsis
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2018-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC5967742?pdf=render
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spelling doaj-07244da6ee684449a7ccc107be91852c2020-11-25T02:47:05ZengPublic Library of Science (PLoS)PLoS ONE1932-62032018-01-01135e019770410.1371/journal.pone.0197704Data-assisted reduced-order modeling of extreme events in complex dynamical systems.Zhong Yi WanPantelis VlachasPetros KoumoutsakosThemistoklis SapsisThe prediction of extreme events, from avalanches and droughts to tsunamis and epidemics, depends on the formulation and analysis of relevant, complex dynamical systems. Such dynamical systems are characterized by high intrinsic dimensionality with extreme events having the form of rare transitions that are several standard deviations away from the mean. Such systems are not amenable to classical order-reduction methods through projection of the governing equations due to the large intrinsic dimensionality of the underlying attractor as well as the complexity of the transient events. Alternatively, data-driven techniques aim to quantify the dynamics of specific, critical modes by utilizing data-streams and by expanding the dimensionality of the reduced-order model using delayed coordinates. In turn, these methods have major limitations in regions of the phase space with sparse data, which is the case for extreme events. In this work, we develop a novel hybrid framework that complements an imperfect reduced order model, with data-streams that are integrated though a recurrent neural network (RNN) architecture. The reduced order model has the form of projected equations into a low-dimensional subspace that still contains important dynamical information about the system and it is expanded by a long short-term memory (LSTM) regularization. The LSTM-RNN is trained by analyzing the mismatch between the imperfect model and the data-streams, projected to the reduced-order space. The data-driven model assists the imperfect model in regions where data is available, while for locations where data is sparse the imperfect model still provides a baseline for the prediction of the system state. We assess the developed framework on two challenging prototype systems exhibiting extreme events. We show that the blended approach has improved performance compared with methods that use either data streams or the imperfect model alone. Notably the improvement is more significant in regions associated with extreme events, where data is sparse.http://europepmc.org/articles/PMC5967742?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Zhong Yi Wan
Pantelis Vlachas
Petros Koumoutsakos
Themistoklis Sapsis
spellingShingle Zhong Yi Wan
Pantelis Vlachas
Petros Koumoutsakos
Themistoklis Sapsis
Data-assisted reduced-order modeling of extreme events in complex dynamical systems.
PLoS ONE
author_facet Zhong Yi Wan
Pantelis Vlachas
Petros Koumoutsakos
Themistoklis Sapsis
author_sort Zhong Yi Wan
title Data-assisted reduced-order modeling of extreme events in complex dynamical systems.
title_short Data-assisted reduced-order modeling of extreme events in complex dynamical systems.
title_full Data-assisted reduced-order modeling of extreme events in complex dynamical systems.
title_fullStr Data-assisted reduced-order modeling of extreme events in complex dynamical systems.
title_full_unstemmed Data-assisted reduced-order modeling of extreme events in complex dynamical systems.
title_sort data-assisted reduced-order modeling of extreme events in complex dynamical systems.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2018-01-01
description The prediction of extreme events, from avalanches and droughts to tsunamis and epidemics, depends on the formulation and analysis of relevant, complex dynamical systems. Such dynamical systems are characterized by high intrinsic dimensionality with extreme events having the form of rare transitions that are several standard deviations away from the mean. Such systems are not amenable to classical order-reduction methods through projection of the governing equations due to the large intrinsic dimensionality of the underlying attractor as well as the complexity of the transient events. Alternatively, data-driven techniques aim to quantify the dynamics of specific, critical modes by utilizing data-streams and by expanding the dimensionality of the reduced-order model using delayed coordinates. In turn, these methods have major limitations in regions of the phase space with sparse data, which is the case for extreme events. In this work, we develop a novel hybrid framework that complements an imperfect reduced order model, with data-streams that are integrated though a recurrent neural network (RNN) architecture. The reduced order model has the form of projected equations into a low-dimensional subspace that still contains important dynamical information about the system and it is expanded by a long short-term memory (LSTM) regularization. The LSTM-RNN is trained by analyzing the mismatch between the imperfect model and the data-streams, projected to the reduced-order space. The data-driven model assists the imperfect model in regions where data is available, while for locations where data is sparse the imperfect model still provides a baseline for the prediction of the system state. We assess the developed framework on two challenging prototype systems exhibiting extreme events. We show that the blended approach has improved performance compared with methods that use either data streams or the imperfect model alone. Notably the improvement is more significant in regions associated with extreme events, where data is sparse.
url http://europepmc.org/articles/PMC5967742?pdf=render
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AT pantelisvlachas dataassistedreducedordermodelingofextremeeventsincomplexdynamicalsystems
AT petroskoumoutsakos dataassistedreducedordermodelingofextremeeventsincomplexdynamicalsystems
AT themistoklissapsis dataassistedreducedordermodelingofextremeeventsincomplexdynamicalsystems
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