The NANOGrav 12.5-year data set: A computationally efficient eccentric binary search pipeline and constraints on an eccentric supermassive binary candidate in 3C 66B
Gabriella Agazie, Zaven Arzoumanian, Paul T. Baker, Bence B\'ecsy,, Laura Blecha, Harsha Blumer, Adam Brazier, Paul R. Brook, Sarah, Burke-Spolaor, J. Andrew Casey-Clyde, Maria Charisi, Shami Chatterjee,, Belinda D. Cheeseboro, Tyler Cohen, James M. Cordes, Neil J. Cornish,

TL;DR
This paper develops an efficient Bayesian pipeline to search for eccentric supermassive black hole binaries in pulsar timing data, applies it to 3C 66B, and sets upper limits on gravitational wave signals consistent with electromagnetic observations.
Contribution
It introduces a new computationally efficient eccentric binary search pipeline for PTA data and applies it to real data for the first time.
Findings
No evidence for an eccentric SMBHB in 3C 66B.
Sets upper limits on GW amplitude and chirp mass.
Results are consistent with electromagnetic SMBHB models.
Abstract
The radio galaxy 3C 66B has been hypothesized to host a supermassive black hole binary (SMBHB) at its center based on electromagnetic observations. Its apparent 1.05-year period and low redshift () make it an interesting testbed to search for low-frequency gravitational waves (GWs) using Pulsar Timing Array (PTA) experiments. This source has been subjected to multiple searches for continuous GWs from a circular SMBHB, resulting in progressively more stringent constraints on its GW amplitude and chirp mass. In this paper, we develop a pipeline for performing Bayesian targeted searches for eccentric SMBHBs in PTA data sets, and test its efficacy by applying it on simulated data sets with varying injected signal strengths. We also search for a realistic eccentric SMBHB source in 3C 66B using the NANOGrav 12.5-year data set employing PTA signal models containing Earth term-only as…
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