A Periodically Varying Luminous Quasar at z=2 from the Pan-STARRS1 Medium Deep Survey: A Candidate Supermassive Black Hole Binary in the Gravitational Wave-Driven Regime
Tingting Liu (1), Suvi Gezari (1), Sebastien Heinis (1), Eugene A., Magnier (2), William S. Burgett (3), Kenneth Chambers (2), Heather Flewelling, (2), Mark Huber (2), Klaus W. Hodapp (2), Nicholas Kaiser (2), Rolf-Peter, Kudritzki (2), John L. Tonry (2)

TL;DR
This paper reports the discovery of a candidate supermassive black hole binary at redshift 2, identified through periodic quasar variability, providing insights into gravitational wave sources and binary evolution.
Contribution
First detection of a periodically varying quasar as a supermassive black hole binary candidate using Pan-STARRS1 data, demonstrating a method for identifying such binaries in large surveys.
Findings
Detected a quasar with a 542-day periodicity at z=2.06
Estimated the black hole mass to be nearly 10^10 solar masses
Inferred an orbital separation of a few Schwarzschild radii
Abstract
Supermassive black hole binaries (SMBHBs) should be an inevitable consequence of the hierarchical growth of massive galaxies through mergers, and the strongest sirens of gravitational waves (GWs) in the cosmos. And yet, their direct detection has remained elusive due to the compact (sub-parsec) orbital separations of gravitationally bound SMBHBs. Here we exploit a theoretically predicted signature of a SMBHB in the time domain: periodic variability caused by a mass accretion rate that is modulated by the binary's orbital motion. We report our first significant periodically varying quasar detection from the systematic search in the Pan-STARRS1 (PS1) Medium Deep Survey. Our SMBHB candidate, PSO J334.2028+01.4075, is a luminous radio-loud quasar at , with extended baseline photometry from the Catalina Real-Time Transient Survey, as well as archival spectroscopy from the FIRST…
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