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Host galaxy identification for binary black hole mergers with long baseline gravitational wave detectors

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posted on 2025-05-11, 15:22 authored by E. J. Howell, M. L. Chan, C. Zhao, M. Hendry, D. Coward, C. Messenger, L. Ju, Z.-H. Zhu, Q. Chu, David JonesDavid Jones, I. S. Heng, H.-M. Lee, D. Blair, J. Degallaix, T. Regimbau, H. Miao
The detection of black hole binary coalescence events by Advanced LIGO allows the science benefits of future detectors to be evaluated. In this paper, we report the science benefits of one or two 8 km arm length detectors based on the doubling of key parameters in an Advanced LIGOtype detector, combined with realizable enhancements. It is shown that the total detection rate for sources similar to those already detected would increase to ~ 10³ -10⁵ per year. Within 0.4 Gpc, we find that around 10 of these eventswould be localizable to within ~ 10-1 deg². This is sufficient to make unique associations or to rule out a direct association with the brightest galaxies in optical surveys (at r-band magnitudes of 17 or above) or for deeper limits (down to r-band magnitudes of 20) yield statistically significant associations. The combination of angular resolution and event rate would benefit precision testing of formation models, cosmic evolution, and cosmological studies.

Funding

ARC

DE170100891

History

Journal title

Monthly Notices of the Royal Astronomical Society

Volume

474

Issue

4

Pagination

4385-4395

Publisher

Oxford University Press

Language

  • en, English

College/Research Centre

Academic Division

School

Centre for English Language and Foundation Studies

Rights statement

This article has been accepted for publication in Monthly Notices of the Royal Astronomical Society © 2017 The Author(s) Published by Oxford University Press on behalf of the Royal Astronomical Society. All rights reserved.

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