English

Cosmological parameter estimation from large-scale structure deep learning

Cosmology and Nongalactic Astrophysics 2020-06-11 v5 General Relativity and Quantum Cosmology

Abstract

We propose a light-weight deep convolutional neural network (CNN) to estimate the cosmological parameters from simulated 3-dimensional dark matter distributions with high accuracy. The training set is based on 465 realizations of a cubic box with a side length of 256 h1 Mpc256\ h^{-1}\ \rm Mpc, sampled with 1283128^3 particles interpolated over a cubic grid of 1283128^3 voxels. These volumes have cosmological parameters varying within the flat Λ\LambdaCDM parameter space of 0.16Ωm0.460.16 \leq \Omega_m \leq 0.46 and 2.0109As2.32.0 \leq 10^9 A_s \leq 2.3. The neural network takes as an input cubes with 32332^3 voxels and has three convolution layers, three dense layers, together with some batch normalization and pooling layers. In the final predictions from the network we find a 2.5%2.5\% bias on the primordial amplitude σ8\sigma_8 that can not easily be resolved by continued training. We correct this bias to obtain unprecedented accuracy in the cosmological parameter estimation with statistical uncertainties of δΩm\delta \Omega_m=0.0015 and δσ8\delta \sigma_8=0.0029, which are several times better than the results of previous CNN works. Compared with a 2-point analysis method using clustering region of 0-130 and 10-130 h1h^{-1} Mpc, the CNN constraints are several times and an order of magnitude more precise, respectively. Finally, we conduct preliminary checks of the error-tolerance abilities of the neural network, and find that it exhibits robustness against smoothing, masking, random noise, global variation, rotation, reflection, and simulation resolution. Those effects are well understood in typical clustering analysis, but had not been tested before for the CNN approach. Our work shows that CNN can be more promising than people expected in deriving tight cosmological constraints from the cosmic large scale structure.

Keywords

Cite

@article{arxiv.1908.10590,
  title  = {Cosmological parameter estimation from large-scale structure deep learning},
  author = {Shuyang Pan and Miaoxin Liu and Jaime Forero-Romero and Cristiano G. Sabiu and Zhigang Li and Haitao Miao and Xiao-Dong Li},
  journal= {arXiv preprint arXiv:1908.10590},
  year   = {2020}
}

Comments

17 pages, 10 figures, 1 table

R2 v1 2026-06-23T10:58:45.076Z