2022A&A...659A.199R


Query : 2022A&A...659A.199R

2022A&A...659A.199R - Astronomy and Astrophysics, volume 659A, 199-199 (2022/3-1)

SUPPNet: Neural network for stellar spectrum normalisation.

ROZANSKI T., NIEMCZURA E., LEMIESZ J., POSILEK N. and ROZANSKI P.

Abstract (from CDS):

Context. Precise continuum normalisation of merged echelle spectra is a demanding task that is necessary for various detailed spectroscopic analyses. Automatic methods have limited effectiveness due to the variety of features present in the spectra of stars. This complexity often leads to the necessity for manual normalisation which is highly time-consuming. Aims. The aim of this work is to develop a fully automated normalisation tool that works with order-merged spectra and offers flexible manual fine-tuning, if necessary. Methods. The core of the proposed method uses the novel, fully convolutional deep neural network (SUPP Network) that was trained to predict a pseudo-continuum. The post-processing step uses smoothing splines that give access to regressed knots, which are useful for optional manual corrections. The active learning technique was applied to deal with possible biases that may arise from training with synthetic spectra and to extend the applicability of the proposed method to features absent in this kind of spectra. Results. The developed normalisation method was tested with high-resolution spectra of stars with spectral types from O to G, and gives a root mean squared (RMS) error over the set of test stars equal to 0.0128 in the spectral range from 3900 Å to 7000 Å and 0.0081 in the range from 4200 Å to 7000 Å. Experiments with synthetic spectra give a RMS of the order of 0.0050. Conclusions. The proposed method leads to results that are comparable to careful manual normalisation. Additionally, this approach is general and can be used in other fields of astronomy where background modelling or trend removal is a part of data processing.

Abstract Copyright: © ESO 2022

Journal keyword(s): techniques: spectroscopic - methods: numerical - stars: general - line: profiles

Simbad objects: 9

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Number of rows : 9
N Identifier Otype ICRS (J2000)
RA
ICRS (J2000)
DEC
Mag U Mag B Mag V Mag R Mag I Sp type #ref
1850 - 2024
#notes
1 HD 25069 RG* 03 58 52.3939149216 -05 28 11.811149040   6.848 5.833     K0/1III 74 0
2 HD 27411 PM* 04 18 37.4916446424 -22 58 10.995306132   6.372 6.060     A3mA5-F2 56 0
3 * nu.02 Col PM* 05 37 44.6176295592 -28 41 22.884909396   5.77 5.31     F5V 100 0
4 HD 59967 PM* 07 30 42.5117581608 -37 20 21.706958688 7.386 7.274 6.635 6.28 5.945 G3V 162 0
5 IC 2391 OpC 08 41 10.1 -52 59 28           ~ 822 0
6 * del Sex PM* 10 29 28.7028852361 -02 44 20.672813052   5.130 5.180     B9V 80 0
7 HD 148937 SB* 16 33 52.3869185520 -48 06 40.476418740 6.49 7.12 6.71 7.61   O6f?p 391 1
8 HD 155806 Be* 17 15 19.2478670712 -33 32 54.299379012 4.61 5.52 5.53     O7.5V((f))z(e) 229 0
9 NGC 6475 OpC 17 53 47.3 -34 50 28           ~ 384 0

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