Matter Density Distribution Reconstruction of Local Universe with Deep Learning

  • Hong, Sungwook E. (Natural Science Research Institute, University of Seoul) ;
  • Kim, Juhan (Center for Advanced Computation, Korea Institute for Advanced Study) ;
  • Jeong, Donghui (Department of Astronomy & Astrophysics, Penn State University) ;
  • Hwang, Ho Seong (Korea Astronomy and Space Science Institute)
  • Published : 2019.10.14

Abstract

We reconstruct the underlying dark matter (DM) density distribution of the local universe within 20Mpc/h cubic box by using the galaxy position and peculiar velocity. About 1,000 subboxes in the Illustris-TNG cosmological simulation are used to train the relation between DM density distribution and galaxy properties by using UNet-like convolutional neural network (CNN). The estimated DM density distributions have a good agreement with their truth values in terms of pixel-to-pixel correlation, the probability distribution of DM density, and matter power spectrum. We apply the trained CNN architecture to the galaxy properties from the Cosmicflows-3 catalogue to reconstruct the DM density distribution of the local universe. The reconstructed DM density distribution can be used to understand the evolution and fate of our local environment.

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