Not hydro: using neural networks to estimate galaxy properties on a dark-matter-only simulation

Author:

Hernández Cristian A1,González Roberto E2,Padilla Nelson D3ORCID

Affiliation:

1. Instituto de Astrofísica, Pontificia Universidad Católica de Chile , Vicuña Mackenna 4860, Macul, Santiago 8970117, Chile

2. Centro i + d EY MetricArts , Presidente Riesco 5435, 4° Floor, Las Condes, Santiago 7550000, Chile

3. Instituto de Astronomía Teórica y Experimental (IATE) , CONICET-UNC, Laprida 854, Córdoba X5000BGR, Argentina

Abstract

ABSTRACT Using data from TNG300-2, we train a neural network (NN) to recreate the stellar mass (M*) and star formation rate (SFR) of central Galaxies in a dark-matter-only simulation. We conider 12 input properties from the halo and sub-halo hosting the galaxy and the near environment. M* predictions are robust, but the machine does not fully reproduce its scatter. The same happens for SFR, but the predictions are not as good as for M*. We chained NNs, improving the predictions on SFR to some extent. For SFR, we time-averaged this value between z = 0 and z = 0.1, which improved results for z = 0. Predictions of both variables have trouble reproducing values at lower and higher ends. We also study the impact of each input variable in the performance of the predictions using a leave-one-covariate-out approach, which led to insights about the physical and statistical relation between input variables. In terms of metrics, our machine outperforms similar studies, but the main discoveries in this work are not linked with the quality of the predictions themselves, but to how the predictions relate to the input variables. We find that previously studied relations between physical variables are meaningful to the machine. We also find that some merger tree properties strongly impact the performance of the machine. We conclude that machine learning models are useful tools to understand the significance of physical different properties and their impact on target characteristics, as well as strong candidates for potential simulation methods.

Funder

FONDECYT

ANID

Publisher

Oxford University Press (OUP)

Subject

Space and Planetary Science,Astronomy and Astrophysics

Cited by 1 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Galaxy stellar and total mass estimation using machine learning;Monthly Notices of the Royal Astronomical Society;2024-02-07

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