NuSTAR observations of WISE J1036+0449, a Galaxy at z$\sim1$ obscured by hot dust
C. Ricci, R. J. Assef, D. Stern, R. Nikutta, D. M. Alexander, D., Asmus, D. R. Ballantyne, F. E. Bauer, A. W. Blain, S. Boggs, P. G. Boorman,, W. N. Brandt, M. Brightman, C. S. Chang, C.-T. J. Chen, F. E. Christensen, A., Comastri, W. W. Craig, T. D\'iaz-Santos, P. R. Eisenhardt

TL;DR
This study introduces a new method to identify Hot Dust-Obscured Galaxies at lower redshifts, exemplified by WISE J1036+0449, revealing their heavy obscuration and X-ray weakness, which informs galaxy evolution and black hole growth models.
Contribution
The paper presents a novel selection technique for Hot DOGs at z~1 and provides detailed multi-wavelength analysis of WISE J1036+0449, including its X-ray properties and black hole characteristics.
Findings
WISE J1036+0449 is heavily obscured with N_H ~ (2-15) x 10^23 cm^-2.
The galaxy exhibits an X-ray luminosity lower than expected from mid-infrared correlations.
Hot DOGs at z<1 show a deficiency in X-ray flux, indicating possible extreme accretion states.
Abstract
Hot, Dust-Obscured Galaxies (Hot DOGs), selected from the WISE all sky infrared survey, host some of the most powerful Active Galactic Nuclei (AGN) known, and might represent an important stage in the evolution of galaxies. Most known Hot DOGs are at , due in part to a strong bias against identifying them at lower redshift related to the selection criteria. We present a new selection method that identifies 153 Hot DOG candidates at , where they are significantly brighter and easier to study. We validate this approach by measuring a redshift , and an SED similar to higher redshift Hot DOGs for one of these objects, WISE J1036+0449 (), using data from Keck/LRIS and NIRSPEC, SDSS, and CSO. We find evidence of a broadened component in MgII, which, if due to the gravitational potential of the supermassive black…
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