On The Implementation of Regularization Methods for Nonlinear Ill-Posed Operator Equations
Date
2016
Authors
V. S, Shubha
Journal Title
Journal ISSN
Volume Title
Publisher
National Institute of Technology Karnataka, Surathkal
Abstract
In this thesis we consider nonlinear ill-posed operator equations of the form
F(x) = y; where F : X ! Y is a nonlinear operator between Hilbert spaces
X and Y: Many problems from computational sciences and other disciplines
can be brought to the form F(x) = y: In practical applications, usually
noisy data yδ are available instead of y: The problem of recovery of the exact
solution x^ from noisy equation F(x) = yδ is ill posed, in the sense that
a small perturbation in the data can cause large deviation in the solution
and the solutions of these equations are usually unknown in the closed form.
Thus the computation of a stable approximation for x^ from the solution of
F(x) = yδ; becomes an important issue in the ill-posed problems, and most
methods for solving these equations are iterative.
We consider iterative regularization methods and their finite dimensional
realization, for obtaining an approximation for x^ in the Hilbert space. The
choice of regularization parameter plays an important role in the convergence
of regularization methods. We use the adaptive scheme of Pereverzev and
Schock (2005), for choosing the regularization parameter. The error bounds
obtained are of optimal order with respect to a general source condition.
Description
Keywords
Department of Mathematical and Computational Sciences, Ill-posed nonlinear equations, Regularization methods, Monotone operator, Lavrentive regularization, Tikhonov regularization, Projection methods, Adaptive method