Probing Cosmology with Weak Lensing Minkowski Functionals
Jan M. Kratochvil (1), Eugene A. Lim (2,6), Sheng Wang (3), Zoltan, Haiman (2,4), Morgan May (5), Kevin Huffenberger (1) ((1) University of, Miami, (2) ISCAP, Columbia University, (3) KICP, University of Chicago, (4), Columbia University, (5) Brookhaven National Laboratory

TL;DR
This study demonstrates that Minkowski Functionals of weak lensing maps provide significant non-Gaussian, cosmology-dependent information, improving constraints on parameters like dark energy w beyond traditional power spectrum analysis.
Contribution
It introduces a comprehensive analysis of Minkowski Functionals applied to weak lensing maps from extensive simulations, showing their effectiveness in breaking parameter degeneracies and capturing non-Gaussian features.
Findings
Minkowski Functionals capture non-Gaussian information beyond the power spectrum.
MFs improve constraints on dark energy parameter w by a factor of three.
Combining multiple smoothing scales enhances the constraining power of MFs.
Abstract
In this paper, we show that Minkowski Functionals (MFs) of weak gravitational lensing (WL) convergence maps contain significant non-Gaussian, cosmology-dependent information. To do this, we use a large suite of cosmological ray-tracing N-body simulations to create mock WL convergence maps, and study the cosmological information content of MFs derived from these maps. Our suite consists of 80 independent 512^3 N-body runs, covering seven different cosmologies, varying three cosmological parameters Omega_m, w, and sigma_8 one at a time, around a fiducial LambdaCDM model. In each cosmology, we use ray-tracing to create a thousand pseudo-independent 12 deg^2 convergence maps, and use these in a Monte Carlo procedure to estimate the joint confidence contours on the above three parameters. We include redshift tomography at three different source redshifts z_s=1, 1.5, 2, explore five different…
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