SOTAVerified

Fast, high-fidelity Lyman α forests with convolutional neural networks

2021-06-23Code Available1· sign in to hype

Peter Harrington, Mustafa Mustafa, Max Dornfest, Benjamin Horowitz, Zarija Lukić

Code Available — Be the first to reproduce this paper.

Reproduce

Code

Abstract

Full-physics cosmological simulations are powerful tools for studying the formation and evolution of structure in the universe but require extreme computational resources. Here, we train a convolutional neural network to use a cheaper N-body-only simulation to reconstruct the baryon hydrodynamic variables (density, temperature, and velocity) on scales relevant to the Lyman- (Ly) forest, using data from Nyx simulations. We show that our method enables rapid estimation of these fields at a resolution of 20kpc, and captures the statistics of the Ly forest with much greater accuracy than existing approximations. Because our model is fully-convolutional, we can train on smaller simulation boxes and deploy on much larger ones, enabling substantial computational savings. Furthermore, as our method produces an approximation for the hydrodynamic fields instead of Ly flux directly, it is not limited to a particular choice of ionizing background or mean transmitted flux.

Tasks

Reproductions