Understanding and Predicting Nonlinear Turbulent Dynamical Systems with Information Theory
Complex nonlinear turbulent dynamical systems are ubiquitous in many areas. Quantifying the model error and model uncertainty plays an important role in understanding and predicting complex dynamical systems. In the first part of this article, a simple information criterion is developed to assess th...
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doaj-6386511cce9b4cc78cc86f773cde90ba2020-11-25T02:07:04ZengMDPI AGAtmosphere2073-44332019-05-0110524810.3390/atmos10050248atmos10050248Understanding and Predicting Nonlinear Turbulent Dynamical Systems with Information TheoryNan Chen0Xiao Hou1Qin Li2Yingda Li3Department of Mathematics, University of Wisconsin-Madison, Madison, WI 53706, USADepartment of Mathematics, University of Wisconsin-Madison, Madison, WI 53706, USADepartment of Mathematics, University of Wisconsin-Madison, Madison, WI 53706, USADepartment of Mathematics, University of Wisconsin-Madison, Madison, WI 53706, USAComplex nonlinear turbulent dynamical systems are ubiquitous in many areas. Quantifying the model error and model uncertainty plays an important role in understanding and predicting complex dynamical systems. In the first part of this article, a simple information criterion is developed to assess the model error in imperfect models. This effective information criterion takes into account the information in both the equilibrium statistics and the temporal autocorrelation function, where the latter is written in the form of the spectrum density that permits the quantification via information theory. This information criterion facilitates the study of model reduction, stochastic parameterizations, and intermittent events. In the second part of this article, a new efficient method is developed to improve the computation of the linear response via the Fluctuation Dissipation Theorem (FDT). This new approach makes use of a Gaussian Mixture (GM) to describe the unperturbed probability density function in high dimensions and avoids utilizing Gaussian approximations in computing the statistical response, as is widely used in the quasi-Gaussian (qG) FDT. Testing examples show that this GM FDT outperforms qG FDT in various strong non-Gaussian regimes.https://www.mdpi.com/2073-4433/10/5/248information theoryequilibrium statisticsautocorrelationlinear responseGaussian mixture fluctuation dissipation theorem |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Nan Chen Xiao Hou Qin Li Yingda Li |
spellingShingle |
Nan Chen Xiao Hou Qin Li Yingda Li Understanding and Predicting Nonlinear Turbulent Dynamical Systems with Information Theory Atmosphere information theory equilibrium statistics autocorrelation linear response Gaussian mixture fluctuation dissipation theorem |
author_facet |
Nan Chen Xiao Hou Qin Li Yingda Li |
author_sort |
Nan Chen |
title |
Understanding and Predicting Nonlinear Turbulent Dynamical Systems with Information Theory |
title_short |
Understanding and Predicting Nonlinear Turbulent Dynamical Systems with Information Theory |
title_full |
Understanding and Predicting Nonlinear Turbulent Dynamical Systems with Information Theory |
title_fullStr |
Understanding and Predicting Nonlinear Turbulent Dynamical Systems with Information Theory |
title_full_unstemmed |
Understanding and Predicting Nonlinear Turbulent Dynamical Systems with Information Theory |
title_sort |
understanding and predicting nonlinear turbulent dynamical systems with information theory |
publisher |
MDPI AG |
series |
Atmosphere |
issn |
2073-4433 |
publishDate |
2019-05-01 |
description |
Complex nonlinear turbulent dynamical systems are ubiquitous in many areas. Quantifying the model error and model uncertainty plays an important role in understanding and predicting complex dynamical systems. In the first part of this article, a simple information criterion is developed to assess the model error in imperfect models. This effective information criterion takes into account the information in both the equilibrium statistics and the temporal autocorrelation function, where the latter is written in the form of the spectrum density that permits the quantification via information theory. This information criterion facilitates the study of model reduction, stochastic parameterizations, and intermittent events. In the second part of this article, a new efficient method is developed to improve the computation of the linear response via the Fluctuation Dissipation Theorem (FDT). This new approach makes use of a Gaussian Mixture (GM) to describe the unperturbed probability density function in high dimensions and avoids utilizing Gaussian approximations in computing the statistical response, as is widely used in the quasi-Gaussian (qG) FDT. Testing examples show that this GM FDT outperforms qG FDT in various strong non-Gaussian regimes. |
topic |
information theory equilibrium statistics autocorrelation linear response Gaussian mixture fluctuation dissipation theorem |
url |
https://www.mdpi.com/2073-4433/10/5/248 |
work_keys_str_mv |
AT nanchen understandingandpredictingnonlinearturbulentdynamicalsystemswithinformationtheory AT xiaohou understandingandpredictingnonlinearturbulentdynamicalsystemswithinformationtheory AT qinli understandingandpredictingnonlinearturbulentdynamicalsystemswithinformationtheory AT yingdali understandingandpredictingnonlinearturbulentdynamicalsystemswithinformationtheory |
_version_ |
1724931366593757184 |