International audienceIn this follow-up article, we investigate the use of convolutional neural network for deriving stellar parameters from observed spectra. Using hyperparameters determined previously, we have constructed a Neural Network architecture suitable for the derivation of Teff, log g, [M/H] vesin i. The network was constrained by applying it to databases of AFGK synthetic spectra at different resolutions. Then, parameters of A stars from Polarbase, SOPHIE, and ELODIE databases are derived, as well as those of FGK stars from the spectroscopic survey of stars in the solar neighbourhood. The network model's average accuracy on the stellar parameters is found to be as low as 80 K for Teff, 0.06 dex for log g, 0.08 dex for [M/H], and...
© ESO 2020. Context Data-driven methods play an increasingly important role in the field of astrophy...
<p>The J-PLUS narrow-band filter system provides a unique opportunity for the determination of stell...
© ESO 2020. Context Data-driven methods play an increasingly important role in the field of astrophy...
International audienceIn this follow-up article, we investigate the use of convolutional neural netw...
International audienceIn order to estimate fundamental parameters (effective temperature, surface gr...
In the light of more and more new instrumentation to get a deeper insight into the universe, tons of...
We are applying various ML/DL techniques for the purpose of stellar spectroscopy. Having already ran...
New generation large-aperture telescopes, multi-object spectrographs, and large format detectors are...
Existing and upcoming instrumentation is collecting large amounts of astrophysical data, which requi...
We construct an individual convolutional neural network architecture for each of the four stellar pa...
Large scale, deep survey missions such as GAIA will collect enormous amountsof data on a significant...
New generation large-aperture telescopes, multi-object spectrographs, and large format detectors are...
We present a technique which employs artificial neural networks to produce physical parameters for s...
Aims. We present an innovative artificial neural network (ANN) architecture, called Generative ANN (...
© ESO 2020. Context Data-driven methods play an increasingly important role in the field of astrophy...
© ESO 2020. Context Data-driven methods play an increasingly important role in the field of astrophy...
<p>The J-PLUS narrow-band filter system provides a unique opportunity for the determination of stell...
© ESO 2020. Context Data-driven methods play an increasingly important role in the field of astrophy...
International audienceIn this follow-up article, we investigate the use of convolutional neural netw...
International audienceIn order to estimate fundamental parameters (effective temperature, surface gr...
In the light of more and more new instrumentation to get a deeper insight into the universe, tons of...
We are applying various ML/DL techniques for the purpose of stellar spectroscopy. Having already ran...
New generation large-aperture telescopes, multi-object spectrographs, and large format detectors are...
Existing and upcoming instrumentation is collecting large amounts of astrophysical data, which requi...
We construct an individual convolutional neural network architecture for each of the four stellar pa...
Large scale, deep survey missions such as GAIA will collect enormous amountsof data on a significant...
New generation large-aperture telescopes, multi-object spectrographs, and large format detectors are...
We present a technique which employs artificial neural networks to produce physical parameters for s...
Aims. We present an innovative artificial neural network (ANN) architecture, called Generative ANN (...
© ESO 2020. Context Data-driven methods play an increasingly important role in the field of astrophy...
© ESO 2020. Context Data-driven methods play an increasingly important role in the field of astrophy...
<p>The J-PLUS narrow-band filter system provides a unique opportunity for the determination of stell...
© ESO 2020. Context Data-driven methods play an increasingly important role in the field of astrophy...