ERGO-ML: Comparing IllustrisTNG and HSC galaxy images via contrastive learning
Lukas Eisert, Connor Bottrell, Annalisa Pillepich, Rhythm Shimakawa,, Vicente Rodriguez-Gomez, Dylan Nelson, Eirini Angeloudi, Marc Huertas-Company

TL;DR
This paper employs contrastive learning to compare simulated and real galaxy images, providing a quantitative assessment of the realism of cosmological simulations against actual observations.
Contribution
It introduces a novel contrastive learning approach to directly compare simulated and observed galaxy images without relying on summary statistics.
Findings
Over 70% of TNG galaxies closely resemble real HSC galaxies in the learned representation space.
Identifies specific morphological features where simulated galaxies deviate from real observations.
Demonstrates the potential of learned representations to infer galaxy properties from real images.
Abstract
Modern cosmological hydrodynamical galaxy simulations provide tens of thousands of reasonably realistic synthetic galaxies across cosmic time. However, quantitatively assessing the level of realism of simulated universes in comparison to the real one is difficult. In this paper of the ERGO-ML series (Extracting Reality from Galaxy Observables with Machine Learning), we utilize contrastive learning to directly compare a large sample of simulated and observed galaxies based on their stellar-light images. This eliminates the need to specify summary statistics and allows to exploit the whole information content of the observations. We produce survey-realistic galaxy mock datasets resembling real Hyper Suprime-Cam (HSC) observations using the cosmological simulations TNG50 and TNG100. Our focus is on galaxies with stellar masses between and at . This…
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Taxonomy
TopicsGalaxies: Formation, Evolution, Phenomena · Remote Sensing in Agriculture · Astronomy and Astrophysical Research
