Bibcode
Asensio Ramos, A.; Martínez González, M. J.; Rubiño-Martín, J. A.
Bibliographical reference
Astronomy and Astrophysics, Volume 476, Issue 2, December III 2007, pp.959-970
Advertised on:
12
2007
Journal
Citations
45
Refereed citations
38
Description
Context: Inversion techniques are the most powerful methods to obtain
information about the thermodynamical and magnetic properties of solar
and stellar atmospheres. In the recent years, we have witnessed the
development of highly sophisticated inversion codes that are now widely
applied to spectro-polarimetric observations. The majority of these
inversion codes are based on the optimization of a complicated
non-linear merit function. The experience gained has facilitated the
recovery of the model that best fits a given observation. However, and
except for the recently developed inversion codes based on database
search algorithms together with the application of Principal Component
Analysis, no reliable and statistically well-defined confidence
intervals can be obtained for the parameters inferred from the
inversions. Aims: A correct estimation of the confidence
intervals for all the parameters that describe the model is mandatory.
Additionally, it is fundamental to apply efficient techniques to assess
the ability of models to reproduce the observations and to determine to
what extent the models have to be refined or can be simplified. Methods: Bayesian techniques are applied to analyze the performance of
the model to fit a given observed Stokes vector. The posterior
distribution, that takes into account both the information about the
priors and the likelihood, is efficiently sampled using a Markov chain
Monte Carlo method. For simplicity, we focus on the Milne-Eddington
approximate solution of the radiative transfer equation and we only take
into account the generation of polarization through the Zeeman effect.
However, the method is extremely general and other more complex forward
models can be applied, even allowing for the presence of atomic
polarization. Results: We illustrate the method with different
problems, from academic to more realistic examples. We show that the
information provided by the posterior distribution is fundamental to
understand and determine the amount of information available in the
Stokes profiles in these particular cases.
Appendix A and B are only available in electronic form at
http://www.aanda.org.