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Adrian Doicu & Thomas Trautmann 
Numerical Regularization for Atmospheric Inverse Problems 

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The retrieval problems arising in atmospheric remote sensing belong to the class of the – called discrete ill-posed problems. These problems are unstable under data perturbations, and can be solved by numerical regularization methods, in which the solution is stabilized by taking additional information into account. The goal of this research monograph is to present and analyze numerical algorithms for atmospheric retrieval. The book is aimed at physicists and engineers with some ba- ground in numerical linear algebra and matrix computations. Although there are many practical details in this book, for a robust and ef?cient implementation of all numerical algorithms, the reader should consult the literature cited. The data model adopted in our analysis is semi-stochastic. From a practical point of view, there are no signi?cant differences between a semi-stochastic and a determin- tic framework; the differences are relevant from a theoretical point of view, e.g., in the convergence and convergence rates analysis. After an introductory chapter providing the state of the art in passive atmospheric remote sensing, Chapter 2 introduces the concept of ill-posedness for linear discrete eq- tions. To illustrate the dif?culties associated with the solution of discrete ill-posed pr- lems, we consider the temperature retrieval by nadir sounding and analyze the solvability of the discrete equation by using the singular value decomposition of the forward model matrix.
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Table of Content

Chapter 1. Atmospheric remote sensing


Chapter 2. Ill-posedness of linear problems


Chapter 3. Tikhonov regularization for linear problems


Chapter 4. Statistical inversion theory


Chapter 5. Iterative regularization methods for linear problems


Chapter 6. Tikhonov regularization for nonlinear problems


Chapter 7. Iterative regularization methods for nonlinear problems


Chapter 8. Total least squares


Chapter 9. Two direct regularization methods


Appendix A. Analysis of continuous ill-posed problems


Appendix B. A general direct regularization method for linear problems


Appendix C. A general iterative regularization method for linear problems


Appendix D. A general direct regularization method for nonlinear problems


Appendix E. A general iterative regularization method for nonlinear problems

Language English ● Format PDF ● Pages 426 ● ISBN 9783642054396 ● File size 4.6 MB ● Publisher Springer Berlin ● City Heidelberg ● Country DE ● Published 2010 ● Downloadable 24 months ● Currency EUR ● ID 2252107 ● Copy protection Social DRM

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