Methods and results of a search for gravitational waves associated with gamma-ray bursts using the GEO600, LIGO, and Virgo detectors
The LIGO Scientific Collaboration, the Virgo Collaboration: J. Aasi,, B. P. Abbott, R. Abbott, T. Abbott, M. R. Abernathy, F. Acernese, K. Ackley,, C. Adams, T. Adams, P. Addesso, R. X. Adhikari, C. Affeldt, M. Agathos, N., Aggarwal, O. D. Aguiar, P. Ajith, A. Alemic, B. Allen

TL;DR
This paper presents a new linear search grid method for efficiently detecting gravitational waves associated with gamma-ray bursts, demonstrating its application to data from GEO600, LIGO, and Virgo, with no detections but improved analysis capabilities.
Contribution
Introduces a linear search grid technique that reduces computational costs for GW searches with poorly localized GRBs and enhances sky localization accuracy.
Findings
No gravitational wave signals detected in the analyzed data.
The linear search grid reduces computational costs by a factor of 10.
First GW search using data from a squeezed-light interferometer.
Abstract
In this paper we report on a search for short-duration gravitational wave bursts in the frequency range 64 Hz-1792 Hz associated with gamma-ray bursts (GRBs), using data from GEO600 and one of the LIGO or Virgo detectors. We introduce the method of a linear search grid to analyse GRB events with large sky localisation uncertainties such as the localisations provided by the Fermi Gamma-ray Burst Monitor (GBM). Coherent searches for gravitational waves (GWs) can be computationally intensive when the GRB sky position is not well-localised, due to the corrections required for the difference in arrival time between detectors. Using a linear search grid we are able to reduce the computational cost of the analysis by a factor of O(10) for GBM events. Furthermore, we demonstrate that our analysis pipeline can improve upon the sky localisation of GRBs detected by the GBM, if a high-frequency GW…
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