Aims. We introduce a new deep-learning tool that estimates stellar parameters (e.g. effective temperature, surface gravity, and extinction) of young low-mass stars by coupling the Phoenix stellar atmosphere model with a conditional invertible neural network (cINN). Our networks allow us to infer the posterior distribution of each stellar parameter from the optical spectrum. Methods. We discuss cINNs trained on three different Phoenix grids: Settl, NextGen, and Dusty. We evaluate the performance of these cINNs on unlearned Phoenix synthetic spectra and on the spectra of 36 class III template stars with well-characterised stellar parameters. Results. We confirm that the cINNs estimate the considered stellar parameters almost perfectly when te...
Context. As part of a project aimed at deriving extinction-distances for thirty-five planetary nebul...
Context. As part of a project aimed at deriving extinction-distances for thirty-five planetary nebul...
International audienceIn order to estimate fundamental parameters (effective temperature, surface gr...
Aims. We introduce a new deep-learning tool that estimates stellar parameters (e.g. effective temper...
In the light of more and more new instrumentation to get a deeper insight into the universe, tons of...
Modern machine learning techniques have become indispensable in many fields of astronomy and astroph...
Modern machine learning techniques have become indispensable in many fields of astronomy and astroph...
Context. We present a new methodology for the estimation of stellar atmospheric parameters from narr...
New generation large-aperture telescopes, multi-object spectrographs, and large format detectors are...
Star formation is one of the most fundamental subjects in astronomy where astronomers have been seek...
Context. We present a new methodology for the estimation of stellar atmospheric parameters from narr...
We construct an individual convolutional neural network architecture for each of the four stellar pa...
Aims. We present an innovative artificial neural network (ANN) architecture, called Generative ANN (...
Context. As part of a project aimed at deriving extinction-distances for thirty-five planetary nebul...
Context. As part of a project aimed at deriving extinction-distances for thirty-five planetary nebul...
Context. As part of a project aimed at deriving extinction-distances for thirty-five planetary nebul...
Context. As part of a project aimed at deriving extinction-distances for thirty-five planetary nebul...
International audienceIn order to estimate fundamental parameters (effective temperature, surface gr...
Aims. We introduce a new deep-learning tool that estimates stellar parameters (e.g. effective temper...
In the light of more and more new instrumentation to get a deeper insight into the universe, tons of...
Modern machine learning techniques have become indispensable in many fields of astronomy and astroph...
Modern machine learning techniques have become indispensable in many fields of astronomy and astroph...
Context. We present a new methodology for the estimation of stellar atmospheric parameters from narr...
New generation large-aperture telescopes, multi-object spectrographs, and large format detectors are...
Star formation is one of the most fundamental subjects in astronomy where astronomers have been seek...
Context. We present a new methodology for the estimation of stellar atmospheric parameters from narr...
We construct an individual convolutional neural network architecture for each of the four stellar pa...
Aims. We present an innovative artificial neural network (ANN) architecture, called Generative ANN (...
Context. As part of a project aimed at deriving extinction-distances for thirty-five planetary nebul...
Context. As part of a project aimed at deriving extinction-distances for thirty-five planetary nebul...
Context. As part of a project aimed at deriving extinction-distances for thirty-five planetary nebul...
Context. As part of a project aimed at deriving extinction-distances for thirty-five planetary nebul...
International audienceIn order to estimate fundamental parameters (effective temperature, surface gr...