A deep learning approach to halo merger tree construction

Author:

Robles Sandra123ORCID,Gómez Jonathan S14ORCID,Ramírez Rivera Adín5,Padilla Nelson D6,Dujovne Diego7

Affiliation:

1. Departamento de Física Teórica, Universidad Autónoma de Madrid , E-28049 Cantoblanco, Madrid, Spain

2. Theoretical Particle Physics and Cosmology Group, Department of Physics, King’s College London , Strand, London WC2R 2LS, UK

3. ARC Centre of Excellence for Dark Matter Particle Physics, School of Physics, The University of Melbourne , Victoria 3010, Australia

4. Instituto de Astrofísica, Pontificia Universidad Católica de Chile , Avenida Vicuña Mackenna 4860, Santiago, Chile

5. Department of Informatics, University of Oslo , Gaustadalléen 23 B, N-0373, Oslo, Norway

6. Instituto de Astronomía Teórica y Experimental, UNC-CONICET , Córdoba X5000BGR, Argentina

7. Escuela de Informática y Telecomunicaciones, Universidad Diego Portales , Avenida Ejército 441, Santiago, Chile

Abstract

ABSTRACT A key ingredient for semi-analytic models of galaxy formation is the mass assembly history of haloes, encoded in a tree structure. The most commonly used method to construct halo merger histories is based on the outcomes of high-resolution, computationally intensive N-body simulations. We show that machine learning (ML) techniques, in particular Generative Adversarial Networks (GANs), are a promising new tool to tackle this problem with a modest computational cost and retaining the best features of merger trees from simulations. We train our GAN model with a limited sample of merger trees from the Evolution and Assembly of GaLaxies and their Environments (EAGLE) simulation suite, constructed using two halo finders–tree builder algorithms: SUBFIND – D-TREES and ROCKSTAR – ConsistentTrees. Our GAN model successfully learns to generate well-constructed merger tree structures with high temporal resolution, and to reproduce the statistical features of the sample of merger trees used for training, when considering up to three variables in the training process. These inputs, whose representations are also learned by our GAN model, are mass of the halo progenitors and the final descendant, progenitor type (main halo or satellite), and distance of a progenitor to that in the main branch. The inclusion of the latter two inputs greatly improves the final learned representation of the halo mass growth history, especially for SUBFIND-like ML trees. When comparing equally sized samples of ML merger trees with those of the EAGLE simulation, we find better agreement for SUBFIND-like ML trees. Finally, our GAN-based framework can be utilized to construct merger histories of low- and intermediate-mass haloes, the most abundant in cosmological simulations.

Funder

MINECO

FEDER

STFC

Australian Research Council

Horizon 2020

CONICYT

CNPq

CYTED

CORFO

Publisher

Oxford University Press (OUP)

Subject

Space and Planetary Science,Astronomy and Astrophysics

Cited by 4 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. FLORAH: a generative model for halo assembly histories;Monthly Notices of the Royal Astronomical Society;2024-08-23

2. Characterizing structure formation through instance segmentation;Astronomy & Astrophysics;2024-05

3. A multilevel segmentation method of asymmetric semantics based on deep learning;IET Cyber-Physical Systems: Theory & Applications;2023-09-15

4. VINTERGATAN-GM: The cosmological imprints of early mergers on Milky-Way-mass galaxies;Monthly Notices of the Royal Astronomical Society;2023-02-15

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