Euclid preparation. CosmoPostProcess: A simulation calibrated framework for weak lensing selection bias in richness-selected galaxy clusters
Euclid Collaboration: R. Ingrao (1, 2, 3, 4), S. Borgani (1, 2, 3, 4, 5), M. Costanzi (1, 3, 2), A. Saro (1, 2, 3, 4, 5), T. Castro (3, 4, 2, 5), L. Baumont (1, 3, 2), M. Aguena (3), S. Grandis (6), C. Murray (7), S. Bhargava (8), E. Munari (3, 2), B. Altieri (9)

TL;DR
CosmoPostProcess is a simulation-based framework that models and corrects for selection biases and baryonic effects in weak lensing analyses of Euclid galaxy clusters, improving cosmological measurements.
Contribution
It introduces a calibrated forward-modeling algorithm that accounts for selection systematics, baryonic effects, and miscentring in richness-selected galaxy cluster profiles for Euclid.
Findings
Baryonic effects are within 2% beyond 0.3 h^{-1} Mpc.
Projection-induced bias enhances profiles near 1 h^{-1} Mpc by 20-40%.
Bias effects are mild at z<0.7 but significant at higher redshifts.
Abstract
We present \texttt{CosmoPostProcess}, a simulation-based forward-modelling algorithm calibrated to reproduce Euclid optical cluster observables. Its main deliverable is a correction for stacked surface-density profiles, binned in richness and redshift, accounting for selection systematics in richness-selected samples relative to unbiased references. We focus on the Euclid richness definition foreseen for cosmological analyses, which does not apply a colour selection; red-sequence richness is not considered. The algorithm processes -body simulations by painting galaxies with a halo-occupation model and emulating survey detection and richness assignment. We also implement a novel estimate of optical cluster centres from projected galaxy densities, validated against Euclid pipelines. Baryonic effects are included through a correction calibrated on hydrodynamical simulations; the…
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