Cosmic Velocity Field Reconstruction Using AI

Abstract

We develop a deep learning technique to infer the non-linear velocity field from the dark matter density field. The deep learning architecture we use is an "U-net" style convolutional neural network, which consists of 15 convolution layers and 2 deconvolution layers. This setup maps the 3-dimensional density field of 323-voxels to the 3-dimensional velocity or momentum fields of 203-voxels. Through the analysis of the dark matter simulation with a resolution of 2 h-1 Mpc, we find that the network can predict the the non-linearity, complexity and vorticity of the velocity and momentum fields, as well as the power spectra of their value, divergence and vorticity and its prediction accuracy reaches the range of k1.4 h Mpc-1 with a relative error ranging from 1% to 10%. A simple comparison shows that neural networks may have an overwhelming advantage over perturbation theory in the reconstruction of velocity or momentum fields.

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