Article ID Journal Published Year Pages File Type
4645306 Applied Numerical Mathematics 2013 14 Pages PDF
Abstract

Least squares methods are effective for solving systems of partial differential equations. In the case of nonlinear systems the equations are usually linearized by a Newton iteration or successive substitution method, and then treated as a linear least squares problem. We show that it is often advantageous to form a sum of squared residuals first, and then compute a zero of the gradient with a Newton-like method. We present an effective method, based on Sobolev gradients, for treating the nonlinear least squares problem directly. The method is based on trust-region subproblems defined by a Sobolev norm and solved by a preconditioned conjugate gradient method with an effective preconditioner that arises naturally from the Sobolev space setting. The trust-region method is shown to be equivalent to a Levenberg–Marquardt method which blends a Newton or Gauss–Newton iteration with a gradient descent iteration, but uses a Sobolev gradient in place of the Euclidean gradient. We also provide an introduction to the Sobolev gradient method and discuss its relationship to operator preconditioning with equivalent operators.

Related Topics
Physical Sciences and Engineering Mathematics Computational Mathematics