TL;DR
This paper develops a 3D deep convolutional neural network surrogate model to accurately predict localized primordial star formation regions in cosmological simulations, enabling fast and resolution-independent predictions without halo finding.
Contribution
The paper introduces the first deep learning model capable of predicting primordial star forming regions matching high-resolution simulations, bypassing halo identification.
Findings
High prediction skill with F1 > 0.995 for star formation volumes.
Localization of star formation within ~1.6 kpc^3 regions.
Effective predictions in low-resolution simulations matching detailed models.
Abstract
We investigate applying 3D deep convolutional neural networks as fast surrogate models of the formation and feedback effects of primordial stars in hydrodynamic cosmological simulations of the first galaxies. Here, we present the surrogate model to predict localized primordial star formation; the feedback model will be presented in a subsequent paper. The star formation prediction model consists of two sub-models: the first is a 3D volume classifier that predicts which (10 comoving kpc) volumes will host star formation, followed by a 3D Inception-based U-net voxel segmentation model that predicts which voxels will form primordial stars. We find that the combined model predicts primordial star forming volumes with high skill, with and true skill score . The star formation is localized within the volume to ~voxels (~comoving kpc) with…
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