Practical approaches to analyzing PTA data: Cosmic strings with six pulsars
Abstract
We search for a stochastic gravitational wave background (SGWB) generated by a network of cosmic strings using six millisecond pulsars from Data Release 2 (DR2) of the European Pulsar Timing Array (EPTA). We perform a Bayesian analysis considering two models for the network of cosmic string loops, and compare it to a simple power-law model which is expected from the population of supermassive black hole binaries. Our main strong assumption is that the previously reported common red noise process is a SGWB. We find that the one-parameter cosmic string model is slightly favored over a power-law model thanks to its simplicity. If we assume a two-component stochastic signal in the data (supermassive black hole binary population and the signal from cosmic strings), we get a upper limit on the string tension of () for the two cosmic string models we consider. In extended two-parameter string models, we were unable to constrain the number of kinks. We test two approximate and fast Bayesian data analysis methods against the most rigorous analysis and find consistent results. These two fast and efficient methods are applicable to all SGWBs, independent of their source, and will be crucial for analysis of extended data sets.
Cite
@article{arxiv.2306.12234,
title = {Practical approaches to analyzing PTA data: Cosmic strings with six pulsars},
author = {Hippolyte Quelquejay Leclere and Pierre Auclair and Stanislav Babak and Aurélien Chalumeau and Danièle A. Steer and J. Antoniadis and A. -S. Bak Nielsen and C. G. Bassa and A. Berthereau and M. Bonetti and E. Bortolas and P. R. Brook and M. Burgay and R. N. Caballero and D. J. Champion and S. Chanlaridis and S. Chen and I. Cognard and G. Desvignes and M. Falxa and R. D. Ferdman and A. Franchini and J. R. Gair and B. Goncharov and E. Graikou and J. -M. Grießmeier and L. Guillemot and Y. J. Guo and H. Hu and F. Iraci and D. Izquierdo-Villalba and J. Jang and J. Jawor and G. H. Janssen and A. Jessner and R. Karuppusamy and E. F. Keane and M. J. Keith and M. Kramer and M. A. Krishnakumar and K. Lackeos and K. J. Lee and K. Liu and Y. Liu and A. G. Lyne and J. W. McKee and R. A. Main and M. B. Mickaliger and I. C. Niţu and A. Parthasarathy and B. B. P. Perera and D. Perrodin and A. Petiteau and N. K. Porayko and A. Possenti and A. Samajdar and S. A. Sanidas and A. Sesana and G. Shaifullah and L. Speri and R. Spiewak and B. W. Stappers and S. C. Susarla and G. Theureau and C. Tiburzi and E. van der Wateren and A. Vecchio and V. Venkatraman Krishnan and J. P. W. Verbiest and J. Wang and L. Wang and Z. Wu},
journal= {arXiv preprint arXiv:2306.12234},
year = {2024}
}
Comments
14 pages, 6 figures; typo corrected in (5)