Bibcode
Dafonte, C.; Fustes, D.; Manteiga, M.; Garabato, D.; Álvarez, M. A.; Ulla, A.; Allende Prieto, C.
Referencia bibliográfica
Astronomy and Astrophysics, Volume 594, id.A68, 10 pp.
Fecha de publicación:
10
2016
Revista
Número de citas
17
Número de citas referidas
15
Descripción
Aims: We present an innovative artificial neural network (ANN)
architecture, called Generative ANN (GANN), that computes the forward
model, that is it learns the function that relates the unknown outputs
(stellar atmospheric parameters, in this case) to the given inputs
(spectra). Such a model can be integrated in a Bayesian framework to
estimate the posterior distribution of the outputs. Methods: The
architecture of the GANN follows the same scheme as a normal ANN, but
with the inputs and outputs inverted. We train the network with the set
of atmospheric parameters (Teff, log g, [Fe/H] and [α/
Fe]), obtaining the stellar spectra for such inputs. The residuals
between the spectra in the grid and the estimated spectra are minimized
using a validation dataset to keep solutions as general as possible. Results: The performance of both conventional ANNs and GANNs to
estimate the stellar parameters as a function of the star brightness is
presented and compared for different Galactic populations. GANNs provide
significantly improved parameterizations for early and intermediate
spectral types with rich and intermediate metallicities. The behaviour
of both algorithms is very similar for our sample of late-type stars,
obtaining residuals in the derivation of [Fe/H] and [α/ Fe] below
0.1 dex for stars with Gaia magnitude Grvs < 12, which
accounts for a number in the order of four million stars to be observed
by the Radial Velocity Spectrograph of the Gaia satellite.
Conclusions: Uncertainty estimation of computed astrophysical parameters
is crucial for the validation of the parameterization itself and for the
subsequent exploitation by the astronomical community. GANNs produce not
only the parameters for a given spectrum, but a goodness-of-fit between
the observed spectrum and the predicted one for a given set of
parameters. Moreover, they allow us to obtain the full posterior
distribution over the astrophysical parameters space once a noise model
is assumed. This can be used for novelty detection and quality
assessment.