The SRG/eROSITA all-sky survey: Constraints on Ultra-light Axion Dark Matter through Galaxy Cluster Number Counts
S. Zelmer, E. Artis, E. Bulbul, S. Grandis, V. Ghirardini, A. von der Linden, Y. E. Bahar, F. Balzer, M. Br\"uggen, I. Chiu, N. Clerc, J. Comparat, F. Kleinebreil, M. Kluge, S. Krippendorf, A. Liu, N. Malavasi, A. Merloni, H. Miyatake, S. Miyazaki, K. Nandra, N. Okabe

TL;DR
This study uses galaxy cluster counts and weak lensing data from the eROSITA survey and other sources to set new constraints on the fraction of ultralight axion dark matter in specific mass ranges, improving previous limits.
Contribution
First constraints on ultralight axion relic density using galaxy cluster number counts, extending bounds in the intermediate mass regime with combined cosmological data.
Findings
Excluded ultralight axion relic density $ ext{Omega}_a < 0.0035$ at $10^{-27}$ eV mass
Excluded $ ext{Omega}_a < 0.0079$ at $10^{-26}$ eV mass
Combined data tighten bounds to $ ext{Omega}_a < 0.0030$ and $0.0058$ respectively
Abstract
Ultralight axions are hypothetical scalar particles that influence the evolution of large-scale structures of the Universe. Depending on their mass, they can potentially be part of the dark matter component of the Universe as candidates commonly referred to as fuzzy dark matter. While strong constraints have been established for pure fuzzy dark matter models, the more general scenario where ultralight axions constitute only a fraction of the dark matter has been limited to only a few observational probes. In this work, we use the galaxy cluster number counts obtained from the first All-Sky Survey (eRASS1) of the SRG/eROSITA mission together with gravitational weak lensing data from the Dark Energy Survey, the Kilo-Degree Survey, and the Hyper Suprime-Cam to constrain the fraction of ultralight axions in the mass range eV to eV. We put upper bounds on the ultralight…
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