Euclid: Optimising tomographic redshift binning for 3$\times$2pt power spectrum constraints on dark energy
J. H. W. Wong (1), M. L. Brown (1), C. A. J. Duncan (1), A. Amara (2), S. Andreon (3), C. Baccigalupi (4, 5, 6, 7), M. Baldi (8, 9, 10), S. Bardelli (9), D. Bonino (11), E. Branchini (12, 13, 3), M. Brescia (14, 15, 16), J. Brinchmann (17, 18), A. Caillat (19), S. Camera (20, 21

TL;DR
This paper develops a simulation-based method to optimize tomographic redshift binning strategies for 3x2pt cosmological analyses with Euclid, assessing their impact on dark energy parameter constraints.
Contribution
It introduces a simulation framework to determine optimal binning strategies for Euclid's 3x2pt analysis, including effects of photometric redshift errors and binning choices.
Findings
Equipopulated bins optimize constraints for full 3x2pt analysis.
Equal spacing in comoving distance best for cosmic shear constraints.
Information gain saturates at around 7-8 bins.
Abstract
We present a simulation-based method to explore the optimum tomographic redshift binning strategy for 3x2pt analyses with Euclid, focusing on the expected configuration of its first major data release (DR1). To do this, we 1) simulate a Euclid-like observation and generate mock shear catalogues from multiple realisations of the 3x2pt fields on the sky, and 2) measure the 3x2pt Pseudo-Cl power spectra for a given tomographic configuration and derive the constraints that they place on the standard dark energy equation of state parameters (w0, wa). For a simulation including Gaussian-distributed photometric redshift uncertainty and shape noise under a LambdaCDM cosmology, we find that bins equipopulated with galaxies yield the best constraints on (w0, wa) for an analysis of the full 3x2pt signal, or the angular clustering component only. For the cosmic shear component, the optimum (w0, wa)…
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