The XXL survey: XLVI. Forward cosmological analysis of the C1 cluster sample
Christian Garrel, Marguerite Pierre, Patrick Valageas, Dominique, Eckert, Federico Marulli, Alfonso Veropalumbo, Florian Pacaud, Nicolas Clerc,, Mauro Sereno, Keiichi Umetsu, Lauro Moscardini, Sunayana Bhargava, Christophe, Adami, Lucio Chiappetti, Fabio Gastaldello

TL;DR
This paper performs a detailed cosmological analysis of galaxy clusters using the XXL survey data, employing the ASpiX method to improve constraints on cosmological parameters and account for systematics, with promising results for future surveys.
Contribution
The study introduces an upgraded cosmological analysis using the ASpiX method on the XXL C1 cluster sample, including systematic error treatment and combining multiple data constraints.
Findings
Improved parameter constraints by a factor of 2 over previous analysis.
Adding BAO and 2-point correlation data reduces uncertainties significantly.
Results are compatible with Planck CMB measurements within 2.2 sigma.
Abstract
We present the forward cosmological analysis of an selected sample of galaxy clusters out to a redshift of unity. Following our previous 2018 study based on the dn/dz quantity alone, we perform an upgraded cosmological analysis of the same XXL C1 cluster catalogue (178 objects), with a detailed account of the systematic errors. We follow the ASpiX methodology: the distribution of the observed X-ray properties of the cluster population is analysed in a 3D observable space (count rate, hardness ratio, redshift) and modelled as a function of cosmology. Compared to more traditional methods, ASpiX allows the inclusion of clusters down to a few tens of photons. We obtain an improvement by a factor of 2 compared to the previous analysis by letting the normalisation of the M-T relation and the evolution of the L-T relation free. Adding constraints from the XXL cluster 2-point correlation…
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