<p><P>Data Assimilation comprehensively covers data assimilation and inverse methods, including both traditional state estimation and parameter estimation. This text and reference focuses on various popular data assimilation methods, such as weak and strong constraint variational methods and ensembl
Data Assimilation: The Ensemble Kalman Filter
โ Scribed by Geir Evensen (auth.)
- Publisher
- Springer Berlin Heidelberg
- Year
- 2007
- Tongue
- English
- Leaves
- 284
- Category
- Library
No coin nor oath required. For personal study only.
โฆ Synopsis
Data Assimilation comprehensively covers data assimilation and inverse methods, including both traditional state estimation and parameter estimation. This text and reference focuses on various popular data assimilation methods, such as weak and strong constraint variational methods and ensemble filters and smoothers. It is demonstrated how the different methods can be derived from a common theoretical basis, as well as how they differ and/or are related to each other, and which properties characterize them, using several examples.
It presents the mathematical framework and derivations in a way which is common for any discipline where dynamics is merged with measurements. The mathematics level is modest, although it requires knowledge of basic spatial statistics, Bayesian statistics, and calculus of variations. Readers will also appreciate the introduction to the mathematical methods used and detailed derivations, which should be easy to follow, are given throughout the book. The codes used in several of the data assimilation experiments are available on a web page.
The focus on ensemble methods, such as the ensemble Kalman filter and smoother, also makes it a solid reference to the derivation, implementation and application of such techniques. Much new material, in particular related to the formulation and solution of combined parameter and state estimation problems and the general properties of the ensemble algorithms, is available here for the first time.
โฆ Table of Contents
Front Matter....Pages i-xxi
Introduction....Pages 1-4
Statistical definitions....Pages 5-12
Analysis scheme....Pages 13-25
Sequential data assimilation....Pages 27-45
Variational inverse problems....Pages 47-69
Nonlinear variational inverse problems....Pages 71-93
Probabilistic formulation....Pages 95-101
Generalized Inverse....Pages 103-117
Ensemble methods....Pages 119-137
Statistical optimization....Pages 139-155
Sampling strategies for the EnKF....Pages 157-174
Model errors....Pages 175-194
Square Root Analysis schemes....Pages 195-205
Rank issues....Pages 207-229
An ocean prediction system....Pages 231-237
Estimation in an oil reservoir simulator....Pages 239-248
Back Matter....Pages 249-279
โฆ Subjects
Math. Applications in Geosciences;Computer Applications in Geosciences;Probability Theory and Stochastic Processes;Mathematical and Computational Physics;Mathematical Modeling and Industrial Mathematics;Appl.Mathematics/Computationa
๐ SIMILAR VOLUMES
<p><P>Data Assimilation comprehensively covers data assimilation and inverse methods, including both traditional state estimation and parameter estimation. This text and reference focuses on various popular data assimilation methods, such as weak and strong constraint variational methods and ensembl
Machine generated contents note: 1. Introduction -- 2. Statistical definitions -- 3. Analysis scheme -- 4. Sequential data assimilation -- 5. Variational inverse problems -- 6. Nonlinear variational inverse problems -- 7. Probabilistic formulation -- 8. Generalized inverse -- 9. Ensemble methods -
Data Assimilation comprehensively covers data assimilation and inverse methods, including both traditional state estimation and parameter estimation. This text and reference focuses on various popular data assimilation methods, such as weak and strong constraint variational methods and ensemble filt
Data Assimilation comprehensively covers data assimilation and inverse methods, including both traditional state estimation and parameter estimation. This text and reference focuses on various popular data assimilation methods, such as weak and strong constraint variational methods and ensemble filt