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Learning neutrino effects in Cosmology with Convolutional Neural Networks

9 October 2019
E. Giusarma
M. Reyes
F. Villaescusa-Navarro
Siyu He
S. Ho
C. Hahn
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Abstract

Measuring the sum of the three active neutrino masses, MνM_\nuMν​, is one of the most important challenges in modern cosmology. Massive neutrinos imprint characteristic signatures on several cosmological observables in particular on the large-scale structure of the Universe. In order to maximize the information that can be retrieved from galaxy surveys, accurate theoretical predictions in the non-linear regime are needed. Currently, one way to achieve those predictions is by running cosmological numerical simulations. Unfortunately, producing those simulations requires high computational resources -- several hundred to thousand core-hours for each neutrino mass case. In this work, we propose a new method, based on a deep learning network, to quickly generate simulations with massive neutrinos from standard Λ\LambdaΛCDM simulations without neutrinos. We computed multiple relevant statistical measures of deep-learning generated simulations, and conclude that our approach is an accurate alternative to the traditional N-body techniques. In particular the power spectrum is within ≃6%\simeq 6\%≃6% down to non-linear scales k=0.7k=0.7k=0.7~\rm h/Mpc. Finally, our method allows us to generate massive neutrino simulations 10,000 times faster than the traditional methods.

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