Searching for stochastic gravitational waves using data from the two co-located LIGO Hanford detectors
The LIGO Scientific Collaboration, the Virgo Collaboration: J. Aasi,, J. Abadie, B. P. Abbott, R. Abbott, T. Abbott, M. R. Abernathy, T. Accadia,, F. Acernese, C. Adams, T. Adams, P. Addesso, R. X. Adhikari, C. Affeldt, M., Agathos, N. Aggarwal, O. D. Aguiar, P. Ajith, B. Allen

TL;DR
This paper reports on the first stochastic gravitational-wave background search using the co-located LIGO Hanford detectors, demonstrating noise mitigation techniques that improve upper limits at high frequencies, relevant for future advanced detector analyses.
Contribution
It introduces methods to identify and mitigate correlated environmental noise in co-located detectors, enabling more sensitive SGWB searches at high frequencies.
Findings
Set a 95% confidence upper limit on gravitational-wave energy density at high frequencies.
Demonstrated noise mitigation techniques applicable to future advanced detector analyses.
Improved previous upper limits by a factor of approximately 180.
Abstract
Searches for a stochastic gravitational-wave background (SGWB) using terrestrial detectors typically involve cross-correlating data from pairs of detectors. The sensitivity of such cross-correlation analyses depends, among other things, on the separation between the two detectors: the smaller the separation, the better the sensitivity. Hence, a co-located detector pair is more sensitive to a gravitational-wave background than a non-co-located detector pair. However, co-located detectors are also expected to suffer from correlated noise from instrumental and environmental effects that could contaminate the measurement of the background. Hence, methods to identify and mitigate the effects of correlated noise are necessary to achieve the potential increase in sensitivity of co-located detectors. Here we report on the first SGWB analysis using the two LIGO Hanford detectors and address the…
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