Bibcode
DOI
Socas-Navarro, H.
Referencia bibliográfica
The Astrophysical Journal, Volume 621, Issue 1, pp. 545-553.
Fecha de publicación:
3
2005
Revista
Número de citas
34
Número de citas referidas
29
Descripción
This paper explores three different strategies for the inversion of
spectral lines (and their Stokes profiles) using artificial neural
networks. It is shown that a straightforward approach in which the
network is trained with synthetic spectra from a simplified model leads
to considerable errors in the inversion of real observations. This
problem can be overcome in at least two different ways that are studied
here in detail. The first method makes use of an additional
preprocessing autoassociative neural network to project the observed
profile into the theoretical model subspace. The second method considers
a suitable regularization of the neural network used for the inversion.
These new techniques are shown to be robust and reliable when applied to
the inversion of both synthetic and observed data.