GalSBI-SPS: a stellar population synthesis-based galaxy population model for cosmology and galaxy evolution applications
Luca Tortorelli, Silvan Fischbacher, Daniel Gr\"un, Alexandre Refregier, Sabine Bellstedt, Aaron S. G. Robotham, Tomasz Kacprzak

TL;DR
GalSBI-SPS is a new galaxy population model based on stellar population synthesis that accurately reproduces observed galaxy properties and redshift distributions, aiding cosmology and galaxy evolution studies with upcoming surveys.
Contribution
It introduces GalSBI-SPS, a novel SPS-based model that generates realistic galaxy catalogues and improves forward-modeling of survey data for better understanding of galaxy populations.
Findings
Reproduces magnitude, colour, and size distributions with small differences.
Qualitatively matches stellar mass-SFR and size-stellar mass relations.
Provides a survey-independent galaxy population description at Stage-III depth.
Abstract
Next generation photometric and spectroscopic surveys will enable unprecedented tests of the concordance cosmological model and of galaxy formation and evolution. Fully exploiting their potential requires a precise understanding of the selection effects on galaxies and biases on measurements of their properties, required, above all, for accurate estimates of redshift distributions n(z). Forward-modelling offers a powerful framework to simultaneously recover galaxy s and characterise the observed galaxy population. We present GalSBI-SPS, a new SPS-based galaxy population model that generates realistic galaxy catalogues, which we use to forward-model HSC data in the COSMOS field. GalSBI-SPS samples galaxy physical properties, computes magnitudes with ProSpect, and simulates HSC images in the COSMOS field with UFig. We measure photometric properties consistently in real data and…
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