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Forecast Error Correction using Dynamic Data Assimilation
Title statement Forecast Error Correction using Dynamic Data Assimilation [electronic resource] / by Sivaramakrishnan Lakshmivarahan, John M. Lewis, Rafal Jabrzemski. Publication Cham : Springer International Publishing : Imprint: Springer, 2017. Phys.des. XVI, 270 p. 125 illus., 104 illus. in color. online resource. ISBN 9783319399973 Edition Springer Atmospheric Sciences, ISSN 2194-5217 Contents Part I Theory -- Introduction -- Dynamics of evolution of first- and second-order forward sensitivity: discrete time and continuous time -- Estimation of control errors using forward sensitivities: FSM with single and multiple observations -- Relation to adjoint sensitivity and impact of observation -- Estimation of model errors using Pontryagin’s Maximum Principle- its relation to 4-D VAR and hence FSM -- FSM and predictability - Lyapunov index -- Part II Applications -- Mixed-layer model - the Gulf of Mexico problem -- Lagrangian data assimilation -- Conclusions -- Appendix -- Index. . Notes to Availability Přístup pouze pro oprávněné uživatele Another responsib. Lewis, John M. Jabrzemski, Rafal. Another responsib. SpringerLink (Online service) Subj. Headings Computer science. * Geology - Statistical methods. * Atmospheric sciences. * Computers. * Data mining. * Computer simulation. Form, Genre elektronické knihy electronic books Country Německo Language angličtina Document kind Electronic books URL Plný text pro studenty a zaměstnance UPOL book
This book introduces the reader to a new method of data assimilation with deterministic constraints (exact satisfaction of dynamic constraints)—an optimal assimilation strategy called Forecast Sensitivity Method (FSM), as an alternative to the well-known four-dimensional variational (4D-Var) data assimilation method. 4D-Var works with a forward in time prediction model and a backward in time tangent linear model (TLM). The equivalence of data assimilation via 4D-Var and FSM is proven and problems using low-order dynamics clarify the process of data assimilation by the two methods. The problem of return flow over the Gulf of Mexico that includes upper-air observations and realistic dynamical constraints gives the reader a good idea of how the FSM can be implemented in a real-world situation. .
Part I Theory -- Introduction -- Dynamics of evolution of first- and second-order forward sensitivity: discrete time and continuous time -- Estimation of control errors using forward sensitivities: FSM with single and multiple observations -- Relation to adjoint sensitivity and impact of observation -- Estimation of model errors using Pontryagin’s Maximum Principle- its relation to 4-D VAR and hence FSM -- FSM and predictability - Lyapunov index -- Part II Applications -- Mixed-layer model - the Gulf of Mexico problem -- Lagrangian data assimilation -- Conclusions -- Appendix -- Index. .
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