Improved Upper Limits on the Stochastic Gravitational-Wave Background from 2009-2010 LIGO and Virgo Data
The LIGO Scientific Collaboration, the Virgo Collaboration: J., Aasi, B. P. Abbott, R. Abbott, T. Abbott, M. R. Abernathy, T. Accadia, F., Acernese, K. Ackley, C. Adams, T. Adams, P. Addesso, R. X. Adhikari, C., Affeldt, M. Agathos, N. Aggarwal, O. D. Aguiar, A. Ain, P. Ajith

TL;DR
This paper reports the most stringent upper limits to date on the stochastic gravitational-wave background across multiple frequency bands using LIGO and Virgo data, constraining models of early universe phenomena.
Contribution
It provides new, lower upper limits on the gravitational-wave energy density in four frequency bands, improving previous constraints and informing cosmological models.
Findings
No evidence of a stochastic gravitational-wave background was detected.
Established the lowest direct upper limits on the background in the studied frequency bands.
Compared results with inflationary gravitational-wave models and recent BICEP2 claims.
Abstract
Gravitational waves from a variety of sources are predicted to superpose to create a stochastic background. This background is expected to contain unique information from throughout the history of the universe that is unavailable through standard electromagnetic observations, making its study of fundamental importance to understanding the evolution of the universe. We carry out a search for the stochastic background with the latest data from LIGO and Virgo. Consistent with predictions from most stochastic gravitational-wave background models, the data display no evidence of a stochastic gravitational-wave signal. Assuming a gravitational-wave spectrum of Omega_GW(f)=Omega_alpha*(f/f_ref)^alpha, we place 95% confidence level upper limits on the energy density of the background in each of four frequency bands spanning 41.5-1726 Hz. In the frequency band of 41.5-169.25 Hz for a spectral…
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