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The angular distribution of clusters in skewed CDM models
Author(s) -
S. Borgani,
Peter Coles,
L. Moscardini,
M. Plionis
Publication year - 1994
Publication title -
monthly notices of the royal astronomical society
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 2.058
H-Index - 383
eISSN - 1365-8711
pISSN - 0035-8711
DOI - 10.1093/mnras/266.2.524
Subject(s) - physics , skewness , normalization (sociology) , gaussian , statistical physics , cluster analysis , scaling , astrophysics , skew , cluster (spacecraft) , galaxy cluster , dark matter , galaxy , statistics , mathematics , astronomy , geometry , quantum mechanics , sociology , anthropology , computer science , programming language
We perform a detailed investigation of the statistical properties of the projected distribution of galaxy clusters obtained in Cold Dark Matter (CDM) models with both Gaussian and skewed primordial density fluctuations. We use N-body simulations to construct a set artificial Lick maps. An objective cluster--finding algorithm is used to identify clusters of different richness. For Gaussian models, the overall number of clusters is too small in the standard CDM case, but a model with higher normalisation fares much better; non--Gaussian models with negative skewness also fit faily well. We apply several statistical tests to compare real and simulated cluster samples, such as the 2-point correlation function, the minimal spanning tree construction, the multifractal analysis and the skewness of cell counts. The emerging picture is that Gaussian models, even with a higher normalization, are in trouble. Skew-positive models are also ruled out, while skew-negative models can reproduce the observed clustering of galaxy clusters in the CDM framework

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