English

Regula falsi based automatic regularization method for PDE constrained optimization

Numerical Analysis 2018-09-06 v2 Optimization and Control

Abstract

Many inverse problems can be described by a PDE model with unknown parameters that need to be calibrated based on measurements related to its solution. This can be seen as a constrained minimization problem where one wishes to minimize the mismatch between the observed data and the model predictions, including an extra regularization term, and use the PDE as a constraint. Often, a suitable regularization parameter is determined by solving the problem for a whole range of parameters -- e.g. using the L-curve -- which is computationally very expensive. In this paper we derive two methods that simultaneously solve the inverse problem and determine a suitable value for the regularization parameter. The first one is a direct generalization of the Generalized Arnoldi Tikhonov method for linear inverse problems. The second method is a novel method based on similar ideas, but with a number of advantages for nonlinear problems.

Keywords

Cite

@article{arxiv.1804.04542,
  title  = {Regula falsi based automatic regularization method for PDE constrained optimization},
  author = {Nick Schenkels and Wim Vanroose},
  journal= {arXiv preprint arXiv:1804.04542},
  year   = {2018}
}