Newton Type Methods for Lavrentiev Regularization of Nonlinear Ill-Posed Operator Equations
Date
2013
Authors
Pareth, Suresan
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) =
f; that arise from the study of nonlinear inverse problems, where F : X ! X is a
nonlinear monotone operator defined on a real Hilbert space X: In applications, instead
of f; usually only noisy data fδ are available. Then the problem of recovery of the
exact solution ^ x from noisy equation F(x) = fδ is ill-posed, in the sense that a small
perturbation in the data can cause large deviation in the solution. Thus the computation
of a stable approximation for ^ x from the solution of F(x) = fδ; becomes an important
issue in ill-posed problems, and the regularization techniques have to be taken into
account. Approximation methods are an attractive choice since they are straightforward
to implement, for getting the numerical solution of nonlinear ill-posed problems. Thus in
the last few years more emphasis was put on the investigation of iterative regularization
methods.
We consider Newton type iterative regularization methods and their finite dimensional realizations, for obtaining approximation for ^ x in the Hilbert space and Hilbert
scales settings. We use the adaptive scheme of Pereverzyev and Schock (2005), for
choosing the regularization parameter.
Description
Keywords
Department of Mathematical and Computational Sciences, Ill-posed nonlinear equations, Regularization, Hilbert scales, Monotone operator, Newton-Lavrentiev method, Adaptive parameter choice