Statistically accurate low-order models for uncertainty quantification in turbulent dynamical systems
Open Access
- 5 August 2013
- journal article
- research article
- Published by Proceedings of the National Academy of Sciences in Proceedings of the National Academy of Sciences
- Vol. 110 (34) , 13705-13710
- https://doi.org/10.1073/pnas.1313065110
Abstract
A framework for low-order predictive statistical modeling and uncertainty quantification in turbulent dynamical systems is developed here. These reduced-order, modified quasilinear Gaussian (ROMQG) algorithms apply to turbulent dynamical systems in which there is significant linear instability or linear nonnormal dynamics in the unperturbed system and energy-conserving nonlinear interactions that transfer energy from the unstable modes to the stable modes where dissipation occurs, resulting in a statistical steady state; such turbulent dynamical systems are ubiquitous in geophysical and engineering turbulence. The ROMQG method involves constructing a low-order, nonlinear, dynamical system for the mean and covariance statistics in the reduced subspace that has the unperturbed statistics as a stable fixed point and optimally incorporates the indirect effect of non-Gaussian third-order statistics for the unperturbed system in a systematic calibration stage. This calibration procedure is achieved through information involving only the mean and covariance statistics for the unperturbed equilibrium. The performance of the ROMQG algorithm is assessed on two stringent test cases: the 40-mode Lorenz 96 model mimicking midlatitude atmospheric turbulence and two-layer baroclinic models for high-latitude ocean turbulence with over 125,000 degrees of freedom. In the Lorenz 96 model, the ROMQG algorithm with just a single mode captures the transient response to random or deterministic forcing. For the baroclinic ocean turbulence models, the inexpensive ROMQG algorithm with 252 modes, less than 0.2% of the total, captures the nonlinear response of the energy, the heat flux, and even the one-dimensional energy and heat flux spectra.Keywords
This publication has 24 references indexed in Scilit:
- Attractor local dimensionality, nonlinear energy transfers and finite-time instabilities in unstable dynamical systems with applications to two-dimensional fluid flowsProceedings of the Royal Society A: Mathematical, Physical and Engineering Sciences, 2013
- Fundamental limitations of polynomial chaos for uncertainty quantification in systems with intermittent instabilitiesCommunications in Mathematical Sciences, 2013
- Lessons in uncertainty quantification for turbulent dynamical systemsDiscrete & Continuous Dynamical Systems, 2012
- Dynamically orthogonal field equations for continuous stochastic dynamical systemsPhysica D: Nonlinear Phenomena, 2009
- Uncertainty Quantification and Polynomial Chaos Techniques in Computational Fluid DynamicsAnnual Review of Fluid Mechanics, 2009
- Wiener Chaos expansions and numerical solutions of randomly forced equations of fluid mechanicsJournal of Computational Physics, 2006
- Strategies for Model Reduction: Comparing Different Optimal BasesJournal of the Atmospheric Sciences, 2004
- A Stochastic Projection Method for Fluid FlowJournal of Computational Physics, 2001
- Turbulence, Coherent Structures, Dynamical Systems and SymmetryPublished by Cambridge University Press (CUP) ,1996
- Preserving Symmetries in the Proper Orthogonal DecompositionSIAM Journal on Scientific Computing, 1993