TY - JOUR
T1 - Stochastic Super-resolution of Cosmological Simulations with Denoising Diffusion Models
AU - Schanz, Andreas
AU - List, Florian
AU - Hahn, Oliver
N1 - The computational results presented have been achieved us-
ing the Vienna Scientific Cluster (VSC), specifically the VSC5.
PY - 2024/11/13
Y1 - 2024/11/13
N2 - In recent years, deep learning models have been successfully employed for augmenting low-resolution cosmological simulations with small-scale information, a task known as "super-resolution". So far, these cosmological super-resolution models have relied on generative adversarial networks (GANs), which can achieve highly realistic results, but suffer from various shortcomings (e.g. low sample diversity). We introduce denoising diffusion models as a powerful generative model for super-resolving cosmic large-scale structure predictions (as a first proof-of-concept in two dimensions). To obtain accurate results down to small scales, we develop a new "filter-boosted" training approach that redistributes the importance of different scales in the pixel-wise training objective. We demonstrate that our model not only produces convincing super-resolution images and power spectra consistent at the percent level, but is also able to reproduce the diversity of small-scale features consistent with a given low-resolution simulation. This enables uncertainty quantification for the generated small-scale features, which is critical for the usefulness of such super-resolution models as a viable surrogate model for cosmic structure formation.
AB - In recent years, deep learning models have been successfully employed for augmenting low-resolution cosmological simulations with small-scale information, a task known as "super-resolution". So far, these cosmological super-resolution models have relied on generative adversarial networks (GANs), which can achieve highly realistic results, but suffer from various shortcomings (e.g. low sample diversity). We introduce denoising diffusion models as a powerful generative model for super-resolving cosmic large-scale structure predictions (as a first proof-of-concept in two dimensions). To obtain accurate results down to small scales, we develop a new "filter-boosted" training approach that redistributes the importance of different scales in the pixel-wise training objective. We demonstrate that our model not only produces convincing super-resolution images and power spectra consistent at the percent level, but is also able to reproduce the diversity of small-scale features consistent with a given low-resolution simulation. This enables uncertainty quantification for the generated small-scale features, which is critical for the usefulness of such super-resolution models as a viable surrogate model for cosmic structure formation.
KW - Astrophysics - Cosmology and Nongalactic Astrophysics
KW - Astrophysics - Instrumentation and Methods for Astrophysics
KW - Computer Science - Machine Learning
U2 - 10.33232/001c.125902
DO - 10.33232/001c.125902
M3 - Article
SN - 2565-6120
VL - 7
JO - The Open Journal of Astrophysics
JF - The Open Journal of Astrophysics
ER -