On combining model reduction and Gauss–Newton algorithms for inverse partial differential equation problems
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[1] P. M. Berg,et al. The diagonalized contrast source approach: an inversion method beyond the Born approximation , 2005 .
[2] R.B. Lenin,et al. Adaptive multivariate rational data fitting with applications in electromagnetics , 2006, IEEE Transactions on Microwave Theory and Techniques.
[3] Liliana Borcea,et al. Electrical impedance tomography , 2002 .
[4] Anne Greenbaum,et al. Iterative methods for solving linear systems , 1997, Frontiers in applied mathematics.
[5] Jacob K. White,et al. A multiparameter moment-matching model-reduction approach for generating geometrically parameterized interconnect performance models , 2004, IEEE Transactions on Computer-Aided Design of Integrated Circuits and Systems.
[6] R. Freund. Model reduction methods based on Krylov subspaces , 2003, Acta Numerica.
[7] C. Kelley. Solving Nonlinear Equations with Newton's Method , 1987 .
[8] Kyle A. Gallivan,et al. A method for generating rational interpolant reduced order models of two-parameter linear systems , 1999 .
[9] R. Kohn,et al. Relaxation of a variational method for impedance computed tomography , 1987 .
[10] Misha Elena Kilmer,et al. Recycling Subspace Information for Diffuse Optical Tomography , 2005, SIAM J. Sci. Comput..
[12] Z. Bai. Krylov subspace techniques for reduced-order modeling of large-scale dynamical systems , 2002 .