Computational Methods for Data Evaluation and Assimilation

Regular price €76.99
A01=Dan Gabriel Cacuci
A01=Ionel Michael Navon
A01=Mihaela Ionescu-Bujor
adjoint
Adjoint Code
Adjoint Model
advanced data assimilation for weather models
Analysis Error Covariance Matrix
Assimilation Window
Augmented Lagrangian Methods
Author_Dan Gabriel Cacuci
Author_Ionel Michael Navon
Author_Mihaela Ionescu-Bujor
Background Error Covariance
Background Error Covariance Matrix
banach
Category=PBKS
Cost Functional
Data Assimilation
eq_isMigrated=1
eq_isMigrated=2
eq_nobargain
equation
Error Covariance
experimental uncertainty analysis
geophysical modeling techniques
hilbert
large-scale optimization algorithms
linear
LMQN Method
Maximum Entropy Principle
model
Nudging Method
NWP
Observation Error
operator
penalty
probability theory applications
Random Variable
Relative Standard Deviation
SA Algorithm
scientific data integration
space
SQP Method
statistical inference methods
tangent
Tangent Linear Model
Truncated Newton Method
Trust Region Methods
Unrecognized Errors
Var Procedure
Variational Data Assimilation

Product details

  • ISBN 9780367379612
  • Weight: 453g
  • Dimensions: 156 x 234mm
  • Publication Date: 19 Sep 2019
  • Publisher: Taylor & Francis Ltd
  • Publication City/Country: GB
  • Product Form: Paperback
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Data evaluation and data combination require the use of a wide range of probability theory concepts and tools, from deductive statistics mainly concerning frequencies and sample tallies to inductive inference for assimilating non-frequency data and a priori knowledge. Computational Methods for Data Evaluation and Assimilation presents interdisciplinary methods for integrating experimental and computational information. This self-contained book shows how the methods can be applied in many scientific and engineering areas.

After presenting the fundamentals underlying the evaluation of experimental data, the book explains how to estimate covariances and confidence intervals from experimental data. It then describes algorithms for both unconstrained and constrained minimization of large-scale systems, such as time-dependent variational data assimilation in weather prediction and similar applications in the geophysical sciences. The book also discusses several basic principles of four-dimensional variational assimilation (4D VAR) and highlights specific difficulties in applying 4D VAR to large-scale operational numerical weather prediction models.

Cacuci, Dan Gabriel; Navon, Ionel Michael; Ionescu-Bujor, Mihaela