Literature DB >> 33853944

Learning effective physical laws for generating cosmological hydrodynamics with Lagrangian deep learning.

Biwei Dai1,2, Uroš Seljak3,2,4,5.   

Abstract

The goal of generative models is to learn the intricate relations between the data to create new simulated data, but current approaches fail in very high dimensions. When the true data-generating process is based on physical processes, these impose symmetries and constraints, and the generative model can be created by learning an effective description of the underlying physics, which enables scaling of the generative model to very high dimensions. In this work, we propose Lagrangian deep learning (LDL) for this purpose, applying it to learn outputs of cosmological hydrodynamical simulations. The model uses layers of Lagrangian displacements of particles describing the observables to learn the effective physical laws. The displacements are modeled as the gradient of an effective potential, which explicitly satisfies the translational and rotational invariance. The total number of learned parameters is only of order 10, and they can be viewed as effective theory parameters. We combine N-body solver fast particle mesh (FastPM) with LDL and apply it to a wide range of cosmological outputs, from the dark matter to the stellar maps, gas density, and temperature. The computational cost of LDL is nearly four orders of magnitude lower than that of the full hydrodynamical simulations, yet it outperforms them at the same resolution. We achieve this with only of order 10 layers from the initial conditions to the final output, in contrast to typical cosmological simulations with thousands of time steps. This opens up the possibility of analyzing cosmological observations entirely within this framework, without the need for large dark-matter simulations.

Entities:  

Keywords:  Lagrangian approach; cosmological hydrodynamical simulation; deep learning

Year:  2021        PMID: 33853944      PMCID: PMC8072396          DOI: 10.1073/pnas.2020324118

Source DB:  PubMed          Journal:  Proc Natl Acad Sci U S A        ISSN: 0027-8424            Impact factor:   12.779


  2 in total

1.  Simulations of the formation, evolution and clustering of galaxies and quasars.

Authors:  Volker Springel; Simon D M White; Adrian Jenkins; Carlos S Frenk; Naoki Yoshida; Liang Gao; Julio Navarro; Robert Thacker; Darren Croton; John Helly; John A Peacock; Shaun Cole; Peter Thomas; Hugh Couchman; August Evrard; Jörg Colberg; Frazer Pearce
Journal:  Nature       Date:  2005-06-02       Impact factor: 49.962

2.  Learning to predict the cosmological structure formation.

Authors:  Siyu He; Yin Li; Yu Feng; Shirley Ho; Siamak Ravanbakhsh; Wei Chen; Barnabás Póczos
Journal:  Proc Natl Acad Sci U S A       Date:  2019-06-24       Impact factor: 11.205

  2 in total
  1 in total

1.  AI-assisted superresolution cosmological simulations.

Authors:  Yin Li; Yueying Ni; Rupert A C Croft; Tiziana Di Matteo; Simeon Bird; Yu Feng
Journal:  Proc Natl Acad Sci U S A       Date:  2021-05-11       Impact factor: 11.205

  1 in total

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