The eROSITA Final Equatorial-Depth Survey (eFEDS): Galaxy Clusters and Groups in Disguise
Esra Bulbul, Ang Liu, Thomas Pasini, Johan Comparat, Duy Hoang,, Matthias Klein, Vittorio Ghirardini, Mara Salvato, Andrea Merloni, Riccardo, Seppi, Julien Wolf, Scott F. Anderson, Y. Emre Bahar, Marcella Brusa, Marcus, Brueggen, Johannes Buchner, Tom Dwelly, Hector Ibarra-Medel

TL;DR
This study analyzes the eROSITA eFEDS survey to identify galaxy clusters and groups, especially those misclassified as point sources due to their compactness and faint X-ray emission, and develops methods to detect AGN-hosting clusters.
Contribution
The paper introduces a multiwavelength approach to identify galaxy clusters and groups hosting AGN, addressing biases caused by eROSITA's point-spread function and classification challenges.
Findings
346 galaxy clusters and groups identified in the point source catalog.
10% of sources host AGN in their brightest cluster galaxies.
Developed a method to identify clusters with radio-loud AGN using optical, infrared, and radio data.
Abstract
The eROSITA Final Equatorial-Depth Survey (eFEDS), executed during the performance verification phase of the Spectrum-Roentgen-Gamma (SRG)/eROSITA telescope, was completed in Nov. 2019. One of the science goals of this survey is to demonstrate the ability of eROSITA to detect samples of clusters and groups at the final depth of the eROSITA all-sky survey. Because of the sizeable point-spread function of eROSITA, high-redshift clusters of galaxies or compact nearby groups hosting bright active galactic nuclei (AGN) can be misclassified as point sources by the source detection algorithms. A total of 346 galaxy clusters and groups in the redshift range of 0.1<z<1.3 were identified based on their red sequence in the point source catalog. We examine the multiwavelength properties of these clusters and groups to understand the potential biases in our selection process and the completeness of…
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