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inria-00079668, version 6

The Multi-Dimensional Refinement Indicators Algorithm for Optimal Parameterization

Hend Ben Ameur () 1, François Clément () a2, Pierre Weis () a3, Guy Chavent () a2

Journal of Inverse and Ill-posed Problems 16, 2 (2008) 107-126

Abstract: The estimation of distributed parameters in partial differential equations (PDE) from measures of the solution of the PDE may lead to under-determination problems. The choice of a parameterization is a usual way of adding a-priori information by reducing the number of unknowns according to the physics of the problem. The refinement indicators algorithm provides a fruitful adaptive parameterization technique that parsimoniously opens the degrees of freedom in an iterative way. We present a new general form of the refinement indicators algorithm that is applicable to the estimation of multi-dimensional parameters in any PDE. In the linear case, we state the relationship between the refinement indicator and the decrease of the usual least-squares data misfit objective function. We give numerical results in the simple case of the identity model, and this application reveals the refinement indicators algorithm as an image segmentation technique.

  • a –  INRIA
  • 1:  Laboratoire de Modélisation Mathématique et Numérique dans les Sciences de l'Ingénieur (LAMSIN)
  • ENIT
  • 2:  ESTIME (INRIA Paris-Rocquencourt)
  • INRIA
  • 3:  CRISTAL (INRIA Rocquencourt)
  • INRIA
 
  • inria-00079668, version 6
  • oai:hal.inria.fr:inria-00079668
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  • Submitted on: Wednesday, 16 January 2008 13:39:56
  • Updated on: Wednesday, 16 May 2012 12:39:35