We present a novel method of inferring the dark matter (DM) content and spatial distribution within galaxies, using convolutional neural networks (CNNs) trained within state-of-the-art hydrodynamical simulations (Illustris-TNG100). Within the controlled environment of the simulation, the framework we have developed is capable of inferring the DM mass distribution within galaxies of mass ∼1011- from the gravitationally baryon-dominated internal regions to the DM-rich, baryon-depleted outskirts of the galaxies, with a mean absolute error always below ≈0.25 when using photometrical and spectroscopic information. With respect to traditional methods, the one presented here also possesses the advantages of not relying on a pre-assigned shape for the DM distribution, to be applicable to galaxies not necessarily in isolation, and to perform very well even in the absence of spectroscopic observations.

Determining the dark matter distribution in simulated galaxies with deep learning / de , Martín; Rios, los ; Petač, Mihael; Zaldivar, Bryan; Bonaventura, Nina; Calore, Francesca; Iocco, Fabio. - In: MONTHLY NOTICES OF THE ROYAL ASTRONOMICAL SOCIETY. - ISSN 0035-8711. - 525:4(2023), pp. 6015-6035. [10.1093/mnras/stad2614]

Determining the dark matter distribution in simulated galaxies with deep learning

Fabio Iocco
2023

Abstract

We present a novel method of inferring the dark matter (DM) content and spatial distribution within galaxies, using convolutional neural networks (CNNs) trained within state-of-the-art hydrodynamical simulations (Illustris-TNG100). Within the controlled environment of the simulation, the framework we have developed is capable of inferring the DM mass distribution within galaxies of mass ∼1011- from the gravitationally baryon-dominated internal regions to the DM-rich, baryon-depleted outskirts of the galaxies, with a mean absolute error always below ≈0.25 when using photometrical and spectroscopic information. With respect to traditional methods, the one presented here also possesses the advantages of not relying on a pre-assigned shape for the DM distribution, to be applicable to galaxies not necessarily in isolation, and to perform very well even in the absence of spectroscopic observations.
2023
Determining the dark matter distribution in simulated galaxies with deep learning / de , Martín; Rios, los ; Petač, Mihael; Zaldivar, Bryan; Bonaventura, Nina; Calore, Francesca; Iocco, Fabio. - In: MONTHLY NOTICES OF THE ROYAL ASTRONOMICAL SOCIETY. - ISSN 0035-8711. - 525:4(2023), pp. 6015-6035. [10.1093/mnras/stad2614]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11588/1002978
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