Nonlinear Data Assimilation

Nonlinear Data Assimilation
Author: Peter Jan Van Leeuwen
Publisher:
Total Pages:
Release: 2015
Genre:
ISBN: 9783319183480

This book contains two review articles on nonlinear data assimilation that deal with closely related topics but were written and can be read independently. Both contributions focus on so-called particle filters. The first contribution by Jan van Leeuwen focuses on the potential of proposal densities. It discusses the issues with present-day particle filters and explorers new ideas for proposal densities to solve them, converging to particle filters that work well in systems of any dimension, closing the contribution with a high-dimensional example. The second contribution by Cheng and Reich discusses a unified framework for ensemble-transform particle filters. This allows one to bridge successful ensemble Kalman filters with fully nonlinear particle filters, and allows a proper introduction of localization in particle filters, which has been lacking up to now.

Nonlinear Data Assimilation

Nonlinear Data Assimilation
Author: Peter Jan Van Leeuwen
Publisher: Springer
Total Pages: 130
Release: 2015-07-22
Genre: Mathematics
ISBN: 3319183478

This book contains two review articles on nonlinear data assimilation that deal with closely related topics but were written and can be read independently. Both contributions focus on so-called particle filters. The first contribution by Jan van Leeuwen focuses on the potential of proposal densities. It discusses the issues with present-day particle filters and explorers new ideas for proposal densities to solve them, converging to particle filters that work well in systems of any dimension, closing the contribution with a high-dimensional example. The second contribution by Cheng and Reich discusses a unified framework for ensemble-transform particle filters. This allows one to bridge successful ensemble Kalman filters with fully nonlinear particle filters, and allows a proper introduction of localization in particle filters, which has been lacking up to now.

Particle Filters and Data Assimilation

Particle Filters and Data Assimilation
Author: Paul Fearnhead
Publisher:
Total Pages: 0
Release: 2018
Genre:
ISBN:

State-space models can be used to incorporate subject knowledge on the underlying dynamics of a time series by the introduction of a latent Markov state process. A user can specify the dynamics of this process together with how the state relates to partial and noisy observations that have been made. Inference and prediction then involve solving a challenging inverse problem: calculating the conditional distribution of quantities of interest given the observations. This article reviews Monte Carlo algorithms for solving this inverse problem, covering methods based on the particle filter and the ensemble Kalman filter. We discuss the challenges posed by models with high-dimensional states, joint estimation of parameters and the state, and inference for the history of the state process. We also point out some potential new developments that will be important for tackling cutting-edge filtering applications.

Data Assimilation for Atmospheric, Oceanic and Hydrologic Applications (Vol. IV)

Data Assimilation for Atmospheric, Oceanic and Hydrologic Applications (Vol. IV)
Author: Seon Ki Park
Publisher: Springer Nature
Total Pages: 707
Release: 2021-11-09
Genre: Science
ISBN: 3030777227

This book contains the most recent progress in data assimilation in meteorology, oceanography and hydrology including land surface. It spans both theoretical and applicative aspects with various methodologies such as variational, Kalman filter, ensemble, Monte Carlo and artificial intelligence methods. Besides data assimilation, other important topics are also covered including adaptive observations, sensitivity analysis, parameter estimation and AI applications. The book is useful to individual researchers as well as graduate students for a reference in the field of data assimilation.

Methods for Data Assimilation in Chaotic Systems

Methods for Data Assimilation in Chaotic Systems
Author: William G. Whartenby
Publisher:
Total Pages: 92
Release: 2012
Genre:
ISBN: 9781267412324

Data assimilation has wide ranging applications, including neuroscience, oceanography and climate science. In this dissertation we will examine data assimilation as a tool for systems of partial differential equations on a discretized spacial grid, using simple geophysical models as a twin for our study. We will use the 1 layer shallow water equations (SWE), and describe how to extend the method to a 2 layer SWE. Although we only used the SWE for this dissertation, we examine how we would use the barotropic vorticity equations (BVE) as the twin in the same study. We will examine two different methods for performing data assimilation on chaotic systems. The first method relies on the measurements to smooth the synchronization manifold, allowing a nonlinear optimizer to correctly determine the most likely path, or the path which minimizes the cost function. The second method we call Metropolis-Hastings Monte Carlo (MHMC) integration scheme. MHMC also allows retention of a group of path samples whose statistics reflect the probability of each path, allowing histograms of state vector values for analysis or inputs to particle filter methods for prediction. The study uses MHMC with the SWE as twin. in this chapter we will examine a data set used for the study. We then describe he various numbers of state vectors needed as data, and the increase in the quality of the fit. We determine the number of state vectors needed as measurements to accurately predict the unmeasured ones.

Data Assimilation Fundamentals

Data Assimilation Fundamentals
Author: Geir Evensen
Publisher: Springer Nature
Total Pages: 251
Release: 2022-04-22
Genre: Science
ISBN: 3030967093

This open-access textbook's significant contribution is the unified derivation of data-assimilation techniques from a common fundamental and optimal starting point, namely Bayes' theorem. Unique for this book is the "top-down" derivation of the assimilation methods. It starts from Bayes theorem and gradually introduces the assumptions and approximations needed to arrive at today's popular data-assimilation methods. This strategy is the opposite of most textbooks and reviews on data assimilation that typically take a bottom-up approach to derive a particular assimilation method. E.g., the derivation of the Kalman Filter from control theory and the derivation of the ensemble Kalman Filter as a low-rank approximation of the standard Kalman Filter. The bottom-up approach derives the assimilation methods from different mathematical principles, making it difficult to compare them. Thus, it is unclear which assumptions are made to derive an assimilation method and sometimes even which problem it aspires to solve. The book's top-down approach allows categorizing data-assimilation methods based on the approximations used. This approach enables the user to choose the most suitable method for a particular problem or application. Have you ever wondered about the difference between the ensemble 4DVar and the "ensemble randomized likelihood" (EnRML) methods? Do you know the differences between the ensemble smoother and the ensemble-Kalman smoother? Would you like to understand how a particle flow is related to a particle filter? In this book, we will provide clear answers to several such questions. The book provides the basis for an advanced course in data assimilation. It focuses on the unified derivation of the methods and illustrates their properties on multiple examples. It is suitable for graduate students, post-docs, scientists, and practitioners working in data assimilation.