We investigate the inclusion of clustering maps in a weak lensing Minkowski functional (MF) analysis of DES-like and LSST-like simulations to constrain cosmological parameters. The standard 3x2pt approach to lensing and clustering data uses two-point correlations as its primary statistic; MFs, morphological statistics describing the shape of matter fields, provide additional information for non-Gaussian fields. Previous analyses have studied MFs of lensing convergence maps; in this project we explore their simultaneous application to clustering maps. We employ a simplified linear galaxy bias model, and using a lognormal curved sky measurement and Monte Carlo Markov Chain (MCMC) sampling process for parameter inference, we find that MFs do not yield any information in the Ωm -- σ8 plane not already generated by a 3x2pt analysis. However, we expect that MFs should improve constraining power when nonlinear baryonic and other small-scale effects are taken into account. As with a 3x2pt analysis, we find a significant improvement to constraints when adding clustering data to MF-only and MF+Cℓ shear measurements, and strongly recommend future higher order statistics be measured from both convergence and clustering maps.
@article{arxiv.2206.03877,
title = {Minkowski Functionals in Joint Galaxy Clustering & Weak Lensing Analyses},
author = {Nisha Grewal and Joe Zuntz and Tilman Tröster and Alexandra Amon},
journal= {arXiv preprint arXiv:2206.03877},
year = {2022}
}
Comments
12 pages, 8 figures, version accepted by Open Journal of Astrophysics