Nonlinear Least Squares for Inverse Problems Nonlinear Least Squares for Inverse Problems
Scientific Computation

Nonlinear Least Squares for Inverse Problems

Theoretical Foundations and Step-by-Step Guide for Applications

    • $119.99
    • $119.99

Publisher Description

This book provides an introduction into the least squares resolution of nonlinear inverse problems. The first goal is to develop a geometrical theory to analyze nonlinear least square (NLS) problems with respect to their quadratic wellposedness, i.e. both wellposedness and optimizability. Using the results, the applicability of various regularization techniques can be checked. The second objective of the book is to present frequent practical issues when solving NLS problems. Application oriented readers will find a detailed analysis of problems on the reduction to finite dimensions, the algebraic determination of derivatives (sensitivity functions versus adjoint method), the determination of the number of retrievable parameters, the choice of parametrization (multiscale, adaptive) and the optimization step, and the general organization of the inversion code. Special attention is paid to parasitic local minima, which can stop the optimizer far from the global minimum: multiscale parametrization is shown to be an efficient remedy in many cases, and a new condition is given to check both wellposedness and the absence of parasitic local minima.

For readers that are interested in projection on non-convex sets, Part II of this book presents the geometric theory of quasi-convex and strictly quasi-convex (s.q.c.) sets. S.q.c. sets can be recognized by their finite curvature and limited deflection and possess a neighborhood where the projection is well-behaved.

Throughout the book, each chapter starts with an overview of the presented concepts and results.

GENRE
Science & Nature
RELEASED
2010
March 14
LANGUAGE
EN
English
LENGTH
374
Pages
PUBLISHER
Springer Netherlands
SELLER
Springer Nature B.V.
SIZE
5.7
MB
Inverse Problems Inverse Problems
2016
A Posteriori Error Estimation Techniques for Finite Element Methods A Posteriori Error Estimation Techniques for Finite Element Methods
2013
Optimization for Data Analysis Optimization for Data Analysis
2022
Spectral Methods Spectral Methods
2011
Numerical Models for Differential Problems Numerical Models for Differential Problems
2010
A Posteriori Error Analysis Via Duality Theory A Posteriori Error Analysis Via Duality Theory
2006
Parallelism in Matrix Computations Parallelism in Matrix Computations
2015
Stochastic Optimization Stochastic Optimization
2007
Intelligent Analysis of Optical Images Intelligent Analysis of Optical Images
2025
Computer Simulations in Molecular Biology Computer Simulations in Molecular Biology
2023
The Material Point Method The Material Point Method
2023
Advanced Electromagnetic Models for Materials Characterization and Nondestructive Evaluation Advanced Electromagnetic Models for Materials Characterization and Nondestructive Evaluation
2021