Conditional Gaussian Systems for Multiscale Nonlinear Stochastic Systems: Prediction, State Estimation and Uncertainty Quantification
Abstract
:Contents
1. Introduction
2. Overview: Data vs. Model, Data-Driven Modeling Framework, and Efficient Data Assimilation and Prediction Strategies with Solvable Conditional Statistics
3. A Summary of the General Mathematical Structure of Nonlinear Conditional Gaussian Systems
3.1. Conditional Gaussian Nonlinear Dynamical Systems
3.2. Kalman–Bucy Filter: The Simplest and Special Data Assimilation Example within Conditional Gaussian Framework
3.3. Physics-Constrained Nonlinear Models with Conditional Gaussian Statistics
3.4. Multiscale Conditional Gaussian with MTV Stochastic Modeling Strategy
- The equations of motion for the unresolved fast modes are modified by representing the nonlinear self-interactions terms between unresolved modes by stochastic terms.
- The equations of motion for the unresolved fast modes are eliminated using the standard projection technique for stochastic differential equations.
4. A Gallery of Examples of Conditional Gaussian Systems
4.1. Physics-Constrained Nonlinear Low-Order Stochastic Models
4.1.1. The Noisy Versions of Lorenz Models
4.1.2. Nonlinear Stochastic Models for Predicting Intermittent MJO and Monsoon Indices
4.1.3. A Simple Stochastic Model with Key Features of Atmospheric Low-Frequency Variability
4.1.4. A Nonlinear Triad Model with Multiscale Features
4.1.5. Conceptual Models for Turbulent Dynamical Systems
4.1.6. A Conceptual Model of the Coupled Atmosphere and Ocean
4.1.7. A Low-Order Model of Charney–DeVore Flows
4.1.8. A Paradigm Model for Topographic Mean Flow Interaction
4.2. Stochastically Coupled Reaction–Diffusion Models in Neuroscience and Ecology
4.2.1. Stochastically Coupled FitzHugh–Nagumo (FHN) Models
4.2.2. The Predator–Prey Models
4.2.3. A Stochastically Coupled SIR Epidemic Model
4.2.4. A Nutrient-Limited Model for Avascular Cancer Growth
4.3. Large-Scale Dynamical Models in Turbulence, Fluids and Geophysical Flows
4.3.1. The MJO Stochastic Skeleton Model
4.3.2. A Coupled El Niño Model Capturing Observed El Niño Diversity
- Atmosphere
- Ocean
- SST
- Coupling:
4.3.3. The Boussinesq Equation
4.3.4. Darcy–Brinkman–Oberbeck–Boussinesq System—Convection Phenomena in Porous Media
4.3.5. The Rotating Shallow Water Equations
- Geostrophically balanced (GB) modes: ; incompressible.
- Gravity modes: ; compressible.
4.4. Coupled Observation-Filtering Systems for Filtering Turbulent Ocean Flows Using Lagrangian Tracers
4.5. Other Low-Order Models for Filtering and Prediction
4.5.1. Stochastic Parameterized Extended Kalman Filter Model
4.5.2. An Idealized Surface Wind Model
5. Algorithms Which Beat the Curse of Dimension for Fokker–Planck Equation for Conditional Gaussian Systems: Application to Statistical Prediction
5.1. The Basic Algorithm with a Hybrid Strategy
5.2. Beating the Curse of Dimension with Block Decomposition
5.3. Statistical Symmetry
5.4. Quantifying the Model Error Using Information Theory
5.5. Applications to Statistical Prediction
5.5.1. Application to the Stochastically Coupled FHN Model with Multiplicative Noise Using Statistical Symmetry
5.5.2. Application to the Two-Layer L-96 Model with Inhomogeneous Spatial Structures
6. Multiscale Data Assimilation, Particle Filters, Conditional Gaussian Systems and Information Theory for Model Errors
6.1. Parameter Estimation
6.1.1. Direct Parameter Estimation Algorithm
6.1.2. Parameter Estimation Using Stochastic Parameterized Equations
6.1.3. Estimating Parameters in the Unresolved Processes
6.2. Data Assimilation with Physics-Constrained Forecast Models and Information Theory for Quantifying Model Errors
6.2.1. An Information Theoretical Framework for Data Assimilation and Prediction
- The root-mean-square error (RMSE):
- The pattern correlation (PC):
- The Shannon entropy residual,
- The mutual information,
- The relative entropy,
6.2.2. Important Roles of Physics-Constrained Forecast Models in Data Assimilation
6.3. Multiscale Data Assimilation with Particles Interacting with Conditional Gaussian Statistics
6.3.1. A General Description
6.3.2. Particle Filters with Superparameterization
6.3.3. Clustered Particle Filters and Mutiscale Data Assimilation
6.3.4. Blended Particle Methods with Adaptive Subspaces for Filtering Turbulent Dynamical Systems
6.3.5. Extremely Efficient Multi-Scale Filtering Algorithms: SPEKF and Dynamic Stochastic Superresolution (DSS)
7. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Chen, N.; Majda, A.J. Conditional Gaussian Systems for Multiscale Nonlinear Stochastic Systems: Prediction, State Estimation and Uncertainty Quantification. Entropy 2018, 20, 509. https://doi.org/10.3390/e20070509
Chen N, Majda AJ. Conditional Gaussian Systems for Multiscale Nonlinear Stochastic Systems: Prediction, State Estimation and Uncertainty Quantification. Entropy. 2018; 20(7):509. https://doi.org/10.3390/e20070509
Chicago/Turabian StyleChen, Nan, and Andrew J. Majda. 2018. "Conditional Gaussian Systems for Multiscale Nonlinear Stochastic Systems: Prediction, State Estimation and Uncertainty Quantification" Entropy 20, no. 7: 509. https://doi.org/10.3390/e20070509