<p>Nonlinear inverse problems appear in many applications, and typically they lead to mathematical models that are ill-posed, i.e., they are unstable under data perturbations. Those problems require a regularization, i.e., a specialΒ numerical treatment. This book presents regularization schemes whi
Regularization of Ill-Posed Problems by Iteration Methods
β Scribed by S. F. Gilyazov, N. L. Golβdman (auth.)
- Publisher
- Springer Netherlands
- Year
- 2000
- Tongue
- English
- Leaves
- 347
- Series
- Mathematics and Its Applications 499
- Edition
- 1
- Category
- Library
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β¦ Synopsis
Iteration regularization, i.e., utilization of iteration methods of any form for the stable approximate solution of ill-posed problems, is one of the most important but still insufficiently developed topics of the new theory of ill-posed problems. In this monograph, a general approach to the justification of iteration regulariΒ zation algorithms is developed, which allows us to consider linear and nonlinear methods from unified positions. Regularization algorithms are the 'classical' iterative methods (steepest descent methods, conjugate direction methods, gradient projection methods, etc.) complemented by the stopping rule depending on level of errors in input data. They are investigated for solving linear and nonlinear operator equations in Hilbert spaces. Great attention is given to the choice of iteration index as the regularization parameter and to estimates of errors of approximate solutions. Stabilizing properties such as smoothness and shape constraints imposed on the solution are used. On the basis of these investigations, we propose and establish efficient regularization algorithms for stable numerical solution of a wide class of ill-posed problems. In particular, descriptive regularization algorithms, utilizing a priori information about the qualitative behavior of the sought solution and ensuring a substantial saving in computational costs, are considered for model and applied problems in nonlinear thermophysics. The results of calculations for important applications in various technical fields (a continuous casting, the treatment of materials and perfection of heat-protective systems using laser and composite technologies) are given.
β¦ Table of Contents
Front Matter....Pages i-ix
Introduction....Pages 1-6
Regularizing Algorithms for Linear Ill-Posed Problems: Unified Approach....Pages 7-40
Iteration Steepest Descent Methods for Linear Operator Equations....Pages 41-95
Iteration Conjugate Direction Methods for Linear Operator Equations....Pages 97-139
Iteration Steepest Descent Methods for Nonlinear Operator Equations....Pages 141-170
Iteration Methods for Ill-Posed Constrained Minimization Problems....Pages 171-200
Descriptive Regularization Algorithms on the basis of the Conjugate Gradient Projection method....Pages 201-324
Back Matter....Pages 325-342
β¦ Subjects
Computational Mathematics and Numerical Analysis; Operator Theory; Partial Differential Equations; Integral Equations; Automotive Engineering
π SIMILAR VOLUMES
"Regularization Methods for Ill-Posed Problems" presents current theories and methods for obtaining approximate solutions of basic classes of incorrectly posed problems. The book provides simple conditions of optimality and the optimality of the order of regular methods for solving a wide class of u
Machine generated contents note: 1. The regularity condition. Newton's method -- 1.1. Preliminary results -- 1.2. Linearization procedure -- 1.3. Error analysis -- Problems -- 2. The Gauss -- Newton method -- 2.1. Motivation -- 2.2. Convergence rates -- Problems -- 3. The gradient method -- 3.1. Th