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Main Authors: Wu, Sirui, Napolitano, Nicola R., Tortora, Crescenzo, von Marttens, Rodrigo, Casarini, Luciano, Li, Rui, Lin, Weipeng
Format: Preprint
Published: 2023
Subjects:
Online Access:https://arxiv.org/abs/2310.02816
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author Wu, Sirui
Napolitano, Nicola R.
Tortora, Crescenzo
von Marttens, Rodrigo
Casarini, Luciano
Li, Rui
Lin, Weipeng
author_facet Wu, Sirui
Napolitano, Nicola R.
Tortora, Crescenzo
von Marttens, Rodrigo
Casarini, Luciano
Li, Rui
Lin, Weipeng
contents The galaxy total mass inside the effective radius encode important information on the dark matter and galaxy evolution model. Total "central" masses can be inferred via galaxy dynamics or with gravitational lensing, but these methods have limitations. We propose a novel approach, based on Random Forest, to make predictions on the total and dark matter content of galaxies using simple observables from imaging and spectroscopic surveys. We use catalogs of multi-band photometry, sizes, stellar mass, kinematic "measurements" (features) and dark matter (targets) of simulated galaxies, from Illustris-TNG100 hydrodynamical simulation, to train a Mass Estimate machine Learning Algorithm (Mela). We separate the simulated sample in passive early-type galaxies (ETGs), both "normal" and "dwarf", and active late-type galaxies (LTGs) and show that the mass estimator can accurately predict the galaxy dark masses inside the effective radius in all samples. We finally test the mass estimator against the central mass estimates of a series of low redshift (z$\leq$0.1) datasets, including SPIDER, MaNGA/DynPop and SAMI dwarf galaxies, derived with standard dynamical methods based on Jeans equations. Dynamical masses are reproduced within 0.30 dex ($\sim2σ$), with a limited fraction of outliers and almost no bias. This is independent of the sophistication of the kinematical data collected (fiber vs. 3D spectroscopy) and the dynamical analysis adopted (radial vs. axisymmetric Jeans equations, virial theorem). This makes Mela a powerful alternative to predict the mass of galaxies of massive stage-IV surveys' datasets.
format Preprint
id arxiv_https___arxiv_org_abs_2310_02816
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Total and dark mass from observations of galaxy centers with Machine Learning
Wu, Sirui
Napolitano, Nicola R.
Tortora, Crescenzo
von Marttens, Rodrigo
Casarini, Luciano
Li, Rui
Lin, Weipeng
Astrophysics of Galaxies
The galaxy total mass inside the effective radius encode important information on the dark matter and galaxy evolution model. Total "central" masses can be inferred via galaxy dynamics or with gravitational lensing, but these methods have limitations. We propose a novel approach, based on Random Forest, to make predictions on the total and dark matter content of galaxies using simple observables from imaging and spectroscopic surveys. We use catalogs of multi-band photometry, sizes, stellar mass, kinematic "measurements" (features) and dark matter (targets) of simulated galaxies, from Illustris-TNG100 hydrodynamical simulation, to train a Mass Estimate machine Learning Algorithm (Mela). We separate the simulated sample in passive early-type galaxies (ETGs), both "normal" and "dwarf", and active late-type galaxies (LTGs) and show that the mass estimator can accurately predict the galaxy dark masses inside the effective radius in all samples. We finally test the mass estimator against the central mass estimates of a series of low redshift (z$\leq$0.1) datasets, including SPIDER, MaNGA/DynPop and SAMI dwarf galaxies, derived with standard dynamical methods based on Jeans equations. Dynamical masses are reproduced within 0.30 dex ($\sim2σ$), with a limited fraction of outliers and almost no bias. This is independent of the sophistication of the kinematical data collected (fiber vs. 3D spectroscopy) and the dynamical analysis adopted (radial vs. axisymmetric Jeans equations, virial theorem). This makes Mela a powerful alternative to predict the mass of galaxies of massive stage-IV surveys' datasets.
title Total and dark mass from observations of galaxy centers with Machine Learning
topic Astrophysics of Galaxies
url https://arxiv.org/abs/2310.02816