The SAMI Galaxy Survey: a statistical approach to an optimal classification of stellar kinematics in galaxy surveys

ABSTRACT Large galaxy samples from multiobject integral field spectroscopic (IFS) surveys now allow for a statistical analysis of the z ∼ 0 galaxy population using resolved kinematic measurements. However, the improvement in number statistics comes at a cost, with multiobject IFS survey more severel...

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Published in:Monthly Notices of the Royal Astronomical Society
Main Authors: van de Sande, Jesse, Vaughan, Sam P, Cortese, Luca, Scott, Nicholas, Bland-Hawthorn, Joss, Croom, Scott M, Lagos, Claudia D P, Brough, Sarah, Bryant, Julia J, Devriendt, Julien, Dubois, Yohan, D’Eugenio, Francesco, Foster, Caroline, Fraser-McKelvie, Amelia, Harborne, Katherine E, Lawrence, Jon S, Oh, Sree, Owers, Matt S, Poci, Adriano, Remus, Rhea-Silvia, Richards, Samuel N, Schulze, Felix, Sweet, Sarah M, Varidel, Mathew R, Welker, Charlotte
Other Authors: Australian Astronomical Observatory, ARC, Australian Research Council
Format: Article in Journal/Newspaper
Language:English
Published: Oxford University Press (OUP) 2021
Subjects:
Online Access:http://dx.doi.org/10.1093/mnras/stab1490
http://academic.oup.com/mnras/advance-article-pdf/doi/10.1093/mnras/stab1490/38267467/stab1490.pdf
http://academic.oup.com/mnras/article-pdf/505/2/3078/38657957/stab1490.pdf
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spelling croxfordunivpr:10.1093/mnras/stab1490 2024-09-15T18:33:19+00:00 The SAMI Galaxy Survey: a statistical approach to an optimal classification of stellar kinematics in galaxy surveys van de Sande, Jesse Vaughan, Sam P Cortese, Luca Scott, Nicholas Bland-Hawthorn, Joss Croom, Scott M Lagos, Claudia D P Brough, Sarah Bryant, Julia J Devriendt, Julien Dubois, Yohan D’Eugenio, Francesco Foster, Caroline Fraser-McKelvie, Amelia Harborne, Katherine E Lawrence, Jon S Oh, Sree Owers, Matt S Poci, Adriano Remus, Rhea-Silvia Richards, Samuel N Schulze, Felix Sweet, Sarah M Varidel, Mathew R Welker, Charlotte Australian Astronomical Observatory ARC Australian Research Council 2021 http://dx.doi.org/10.1093/mnras/stab1490 http://academic.oup.com/mnras/advance-article-pdf/doi/10.1093/mnras/stab1490/38267467/stab1490.pdf http://academic.oup.com/mnras/article-pdf/505/2/3078/38657957/stab1490.pdf en eng Oxford University Press (OUP) https://academic.oup.com/journals/pages/open_access/funder_policies/chorus/standard_publication_model Monthly Notices of the Royal Astronomical Society volume 505, issue 2, page 3078-3106 ISSN 0035-8711 1365-2966 journal-article 2021 croxfordunivpr https://doi.org/10.1093/mnras/stab1490 2024-08-27T04:15:44Z ABSTRACT Large galaxy samples from multiobject integral field spectroscopic (IFS) surveys now allow for a statistical analysis of the z ∼ 0 galaxy population using resolved kinematic measurements. However, the improvement in number statistics comes at a cost, with multiobject IFS survey more severely impacted by the effect of seeing and lower signal-to-noise ratio. We present an analysis of ∼1800 galaxies from the SAMI Galaxy Survey taking into account these effects. We investigate the spread and overlap in the kinematic distributions of the spin parameter proxy $\lambda _{R_{\rm {e}}}$ as a function of stellar mass and ellipticity εe. For SAMI data, the distributions of galaxies identified as regular and non-regular rotators with kinemetry show considerable overlap in the $\lambda _{R_{\rm {e}}}$–εe diagram. In contrast, visually classified galaxies (obvious and non-obvious rotators) are better separated in $\lambda _{R_{\rm {e}}}$ space, with less overlap of both distributions. Then, we use a Bayesian mixture model to analyse the observed $\lambda _{R_{\rm {e}}}$–log (M⋆/M⊙) distribution. By allowing the mixture probability to vary as a function of mass, we investigate whether the data are best fit with a single kinematic distribution or with two. Below log (M⋆/M⊙) ∼ 10.5, a single beta distribution is sufficient to fit the complete $\lambda _{R_{\rm {e}}}$ distribution, whereas a second beta distribution is required above log (M⋆/M⊙) ∼ 10.5 to account for a population of low-$\lambda _{R_{\rm {e}}}$ galaxies. While the Bayesian mixture model presents the cleanest separation of the two kinematic populations, we find the unique information provided by visual classification of galaxy kinematic maps should not be disregarded in future studies. Applied to mock-observations from different cosmological simulations, the mixture model also predicts bimodal $\lambda _{R_{\rm {e}}}$ distributions, albeit with different positions of the $\lambda _{R_{\rm {e}}}$ peaks. Our analysis validates the conclusions from previous, ... Article in Journal/Newspaper sami Oxford University Press Monthly Notices of the Royal Astronomical Society 505 2 3078 3106
institution Open Polar
collection Oxford University Press
op_collection_id croxfordunivpr
language English
description ABSTRACT Large galaxy samples from multiobject integral field spectroscopic (IFS) surveys now allow for a statistical analysis of the z ∼ 0 galaxy population using resolved kinematic measurements. However, the improvement in number statistics comes at a cost, with multiobject IFS survey more severely impacted by the effect of seeing and lower signal-to-noise ratio. We present an analysis of ∼1800 galaxies from the SAMI Galaxy Survey taking into account these effects. We investigate the spread and overlap in the kinematic distributions of the spin parameter proxy $\lambda _{R_{\rm {e}}}$ as a function of stellar mass and ellipticity εe. For SAMI data, the distributions of galaxies identified as regular and non-regular rotators with kinemetry show considerable overlap in the $\lambda _{R_{\rm {e}}}$–εe diagram. In contrast, visually classified galaxies (obvious and non-obvious rotators) are better separated in $\lambda _{R_{\rm {e}}}$ space, with less overlap of both distributions. Then, we use a Bayesian mixture model to analyse the observed $\lambda _{R_{\rm {e}}}$–log (M⋆/M⊙) distribution. By allowing the mixture probability to vary as a function of mass, we investigate whether the data are best fit with a single kinematic distribution or with two. Below log (M⋆/M⊙) ∼ 10.5, a single beta distribution is sufficient to fit the complete $\lambda _{R_{\rm {e}}}$ distribution, whereas a second beta distribution is required above log (M⋆/M⊙) ∼ 10.5 to account for a population of low-$\lambda _{R_{\rm {e}}}$ galaxies. While the Bayesian mixture model presents the cleanest separation of the two kinematic populations, we find the unique information provided by visual classification of galaxy kinematic maps should not be disregarded in future studies. Applied to mock-observations from different cosmological simulations, the mixture model also predicts bimodal $\lambda _{R_{\rm {e}}}$ distributions, albeit with different positions of the $\lambda _{R_{\rm {e}}}$ peaks. Our analysis validates the conclusions from previous, ...
author2 Australian Astronomical Observatory
ARC
Australian Research Council
format Article in Journal/Newspaper
author van de Sande, Jesse
Vaughan, Sam P
Cortese, Luca
Scott, Nicholas
Bland-Hawthorn, Joss
Croom, Scott M
Lagos, Claudia D P
Brough, Sarah
Bryant, Julia J
Devriendt, Julien
Dubois, Yohan
D’Eugenio, Francesco
Foster, Caroline
Fraser-McKelvie, Amelia
Harborne, Katherine E
Lawrence, Jon S
Oh, Sree
Owers, Matt S
Poci, Adriano
Remus, Rhea-Silvia
Richards, Samuel N
Schulze, Felix
Sweet, Sarah M
Varidel, Mathew R
Welker, Charlotte
spellingShingle van de Sande, Jesse
Vaughan, Sam P
Cortese, Luca
Scott, Nicholas
Bland-Hawthorn, Joss
Croom, Scott M
Lagos, Claudia D P
Brough, Sarah
Bryant, Julia J
Devriendt, Julien
Dubois, Yohan
D’Eugenio, Francesco
Foster, Caroline
Fraser-McKelvie, Amelia
Harborne, Katherine E
Lawrence, Jon S
Oh, Sree
Owers, Matt S
Poci, Adriano
Remus, Rhea-Silvia
Richards, Samuel N
Schulze, Felix
Sweet, Sarah M
Varidel, Mathew R
Welker, Charlotte
The SAMI Galaxy Survey: a statistical approach to an optimal classification of stellar kinematics in galaxy surveys
author_facet van de Sande, Jesse
Vaughan, Sam P
Cortese, Luca
Scott, Nicholas
Bland-Hawthorn, Joss
Croom, Scott M
Lagos, Claudia D P
Brough, Sarah
Bryant, Julia J
Devriendt, Julien
Dubois, Yohan
D’Eugenio, Francesco
Foster, Caroline
Fraser-McKelvie, Amelia
Harborne, Katherine E
Lawrence, Jon S
Oh, Sree
Owers, Matt S
Poci, Adriano
Remus, Rhea-Silvia
Richards, Samuel N
Schulze, Felix
Sweet, Sarah M
Varidel, Mathew R
Welker, Charlotte
author_sort van de Sande, Jesse
title The SAMI Galaxy Survey: a statistical approach to an optimal classification of stellar kinematics in galaxy surveys
title_short The SAMI Galaxy Survey: a statistical approach to an optimal classification of stellar kinematics in galaxy surveys
title_full The SAMI Galaxy Survey: a statistical approach to an optimal classification of stellar kinematics in galaxy surveys
title_fullStr The SAMI Galaxy Survey: a statistical approach to an optimal classification of stellar kinematics in galaxy surveys
title_full_unstemmed The SAMI Galaxy Survey: a statistical approach to an optimal classification of stellar kinematics in galaxy surveys
title_sort sami galaxy survey: a statistical approach to an optimal classification of stellar kinematics in galaxy surveys
publisher Oxford University Press (OUP)
publishDate 2021
url http://dx.doi.org/10.1093/mnras/stab1490
http://academic.oup.com/mnras/advance-article-pdf/doi/10.1093/mnras/stab1490/38267467/stab1490.pdf
http://academic.oup.com/mnras/article-pdf/505/2/3078/38657957/stab1490.pdf
genre sami
genre_facet sami
op_source Monthly Notices of the Royal Astronomical Society
volume 505, issue 2, page 3078-3106
ISSN 0035-8711 1365-2966
op_rights https://academic.oup.com/journals/pages/open_access/funder_policies/chorus/standard_publication_model
op_doi https://doi.org/10.1093/mnras/stab1490
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