Fast cosmic web simulations with generative adversarial networks
Andres C. Rodriguez, Tomasz Kacprzak, Aurelien Lucchi, Adam Amara,, Raphael Sgier, Janis Fluri, Thomas Hofmann, Alexandre R\'efr\'egier

TL;DR
This paper demonstrates that Generative Adversarial Networks can efficiently produce realistic cosmic web simulations, significantly reducing computational time compared to traditional N-body methods, thus aiding large-scale cosmological surveys.
Contribution
The authors introduce a GAN-based approach to generate physically realistic cosmic web structures from small training samples, offering a fast alternative to traditional simulations.
Findings
GAN-generated samples closely match original simulations.
Power spectrum agreement within 1-2% for key scales.
Generation time per sample is a fraction of a second.
Abstract
Dark matter in the universe evolves through gravity to form a complex network of halos, filaments, sheets and voids, that is known as the cosmic web. Computational models of the underlying physical processes, such as classical N-body simulations, are extremely resource intensive, as they track the action of gravity in an expanding universe using billions of particles as tracers of the cosmic matter distribution. Therefore, upcoming cosmology experiments will face a computational bottleneck that may limit the exploitation of their full scientific potential. To address this challenge, we demonstrate the application of a machine learning technique called Generative Adversarial Networks (GAN) to learn models that can efficiently generate new, physically realistic realizations of the cosmic web. Our training set is a small, representative sample of 2D image snapshots from N-body simulations…
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Taxonomy
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