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A&A 378, 316-326 (2001)
DOI: 10.1051/0004-6361:20011167
The inversion of Stokes profiles with artificial neural networks
T. A. Carroll and J. StaudeAstrophysikalisches Institut Potsdam, Telegrafenberg, Sonnenobservatorium Einsteinturm, 14473 Potsdam, Germany
(Received 2 July 2001 / Accepted 10 August 2001 )
Abstract
We investigate the application of artificial neural networks (ANNs) for the
interpretation of Stokes profiles. We have employed ANNs to approximate the
nonlinear inverse mapping between the Stokes profiles and some of the underlying
atmospheric parameters. This approximate model is used in the following
to carry out a fast non-iterative inversion of synthetic Stokes profiles. We have used
synthetic Stokes profiles of the photospheric infrared line Fe I
15648 to
demonstrate that the ANNs are capable to yield accurate single valued estimates of the
complete magnetic field vector, line-of-sight (LOS) velocity, microturbulence,
macroturbulence and the filling factor with exceptional speed. For a stratified atmosphere
we also demonstrate that these single valued parameters do represent very good averaged
values of the input stratification.
To retrieve some of the temperature information encoded in the Stokes profiles
we modeled a neural network classifier on the basis of several
semi-empirical model atmospheres (i.e. temperature and pressure stratification).
With this classifier we are able to determine the probability that a given
Stokes profile has its origin from a particular temperature stratification of a
semi-empirical model.
Key words: line: formation -- line: profiles -- Sun: photosphere -- Sun: magnetic fields -- method: data analysis
Offprint request: T. A. Carroll, tcarroll@aip.de
© ESO 2001
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