Szkło powiększające
Search Loader

Geir Evensen 
Data Assimilation 
The Ensemble Kalman Filter

Wsparcie

This book reviews popular data-assimilation methods, such as weak and strong constraint variational methods, ensemble filters and smoothers. The author shows how different methods can be derived from a common theoretical basis, as well as how they differ or are related to each other, and which properties characterize them, using several examples. Readers will appreciate the included introductory material and detailed derivations in the text, and a supplemental web site.

€255.73
Metody Płatności

Spis treści

Statistical definitions.- Analysis scheme.- Sequential data assimilation.- Variational inverse problems.- Nonlinear variational inverse problems.- Probabilistic formulation.- Generalized Inverse.- Ensemble methods.- Statistical optimization.- Sampling strategies for the En KF.- Model errors.- Square Root Analysis schemes.- Rank issues.- Spurious correlations, localization, and inflation.- An ocean prediction system.- Estimation in an oil reservoir simulator.

O autorze

Geir Evensen obtained his Ph.D. in applied mathematics at the University in Bergen in 1992. Thereafter he has worked as a Research Director at the Nansen Environmental and Remote Sensing Center/Mohn-Sverdrup Center, as Prof. II at the Department of Mathematics at the University in Bergen, and as a Principal Engineer at the Hydro Research Center in Bergen. He is author or coauthor of more that 40 refereed publications related to modelling and data assimilation, and he has been the coordinator of international research projects on the development of data assimilation methodologies and systems.
Język Angielski ● Format PDF ● Strony 307 ● ISBN 9783642037115 ● Rozmiar pliku 18.3 MB ● Wydawca Springer Berlin ● Miasto Heidelberg ● Kraj DE ● Opublikowany 2009 ● Ydanie 2 ● Do pobrania 24 miesięcy ● Waluta EUR ● ID 2234660 ● Ochrona przed kopiowaniem Społeczny DRM

Więcej książek elektronicznych tego samego autora (ów) / Redaktor

30 311 Ebooki w tej kategorii