English

Deep learning for intensity mapping observations: Component extraction

Astrophysics of Galaxies 2020-06-03 v2

Abstract

Line intensity mapping (LIM) is an emerging observational method to study the large-scale structure of the Universe and its evolution. LIM does not resolve individual sources but probes the fluctuations of integrated line emissions. A serious limitation with LIM is that contributions of different emission lines from sources at different redshifts are all confused at an observed wavelength. We propose a deep learning application to solve this problem. We use conditional generative adversarial networks to extract designated information from LIM. We consider a simple case with two populations of emission line galaxies; Hα\rm\alpha emitting galaxies at z=1.3z = 1.3 are confused with [OIII] emitters at z=2.0z = 2.0 in a single observed waveband at 1.5 μ\rm\mum. Our networks trained with 30,000 mock observation maps are able to extract the total intensity and the spatial distribution of Hα\rm\alpha emitting galaxies at z=1.3z = 1.3. The intensity peaks are successfully located with 74% precision. The precision increases to 91% when we combine the results of 5 networks. The mean intensity and the power spectrum are reconstructed with an accuracy of \sim10%. The extracted galaxy distributions at a wider range of redshift can be used for studies on cosmology and on galaxy formation and evolution.

Keywords

Cite

@article{arxiv.2002.07991,
  title  = {Deep learning for intensity mapping observations: Component extraction},
  author = {Kana Moriwaki and Nina Filippova and Masato Shirasaki and Naoki Yoshida},
  journal= {arXiv preprint arXiv:2002.07991},
  year   = {2020}
}

Comments

6 pages, 3 figures, accepted for publication in MNRAS Letter