Euclid. Populating a dark universe with galaxies using SciPIC
Euclid Collaboration: E. J. Gonzalez (1, 2), J. Carretero (3, 4), Z. Baghkhani (5, 6), F. J. Castander (5, 6), P. Fosalba (6, 5), P. Tallada-Cresp\'i (3, 4), J. Stadel (7), D. Potter (7), I. Tutusaus (5, 6, 8), S. Ramakrishnan (5), M. L. van Heukelum (9), N. E. Chisari (9, 10)

TL;DR
The paper introduces SciPICal, an automated pipeline for calibrating and generating realistic synthetic galaxy catalogues from cosmological simulations, validated against observational data and hydrodynamical simulations.
Contribution
It presents SciPICal, a novel calibration pipeline that improves galaxy mock predictions, especially clustering, for Euclid surveys and beyond.
Findings
Clustering predictions improved by approximately 50% after calibration.
Generated mocks agree within 15% with observational and simulation data.
The pipeline supports galaxy property assignment and future observational constraints.
Abstract
High-fidelity galaxy mocks are crucial for validating analysis pipelines and for cosmological inference. In this context, the Science Pipeline at PIC (SciPIC) is a pipeline specifically designed for the fast generation of synthetic galaxy catalogues from the halo properties identified in cosmological simulations. SciPIC delivers galaxy catalogues that aim to reproduce the observed luminosity function and clustering above a given flux detection limit over a wide redshift range. In this work, we introduce SciPICal, an automated pipeline that calibrates the parameters that set the main mock galaxy properties, namely number density, luminosities, colours, and positions. The pipeline is applied to the Euclid Flagship 2 Wide and Deep halo catalogues, specifically built to support the \textit{Euclid} wide and deep surveys. Compared to the recently released Flagship 2 Wide mock, our calibrated…
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