Search for anisotropic gravitational-wave backgrounds using data from Advanced LIGO and Advanced Virgo's first three observing runs
The LIGO Scientific Collaboration, the Virgo Collaboration, and the, KAGRA Collaboration: R. Abbott, T. D. Abbott, S. Abraham, F. Acernese, K., Ackley, A. Adams, C. Adams, R. X. Adhikari, V. B. Adya, C. Affeldt, D., Agarwal, M. Agathos, K. Agatsuma, N. Aggarwal, O. D. Aguiar

TL;DR
This paper reports on the search for anisotropic stochastic gravitational-wave backgrounds using data from Advanced LIGO and Virgo, employing new analysis techniques and setting improved upper limits on gravitational-wave signals from various sources.
Contribution
First analysis including Virgo data with a new pipeline, providing the most stringent upper limits to date on anisotropic gravitational-wave backgrounds.
Findings
No gravitational-wave signals detected.
Upper limits on energy flux and energy density improved by factors of 2.9 to 3.5.
Strain amplitude limits for specific astrophysical targets improved by at least a factor of 2.
Abstract
We report results from searches for anisotropic stochastic gravitational-wave backgrounds using data from the first three observing runs of the Advanced LIGO and Advanced Virgo detectors. For the first time, we include Virgo data in our analysis and run our search with a new efficient pipeline called {\tt PyStoch} on data folded over one sidereal day. We use gravitational-wave radiometry (broadband and narrow band) to produce sky maps of stochastic gravitational-wave backgrounds and to search for gravitational waves from point sources. A spherical harmonic decomposition method is employed to look for gravitational-wave emission from spatially-extended sources. Neither technique found evidence of gravitational-wave signals. Hence we derive 95\% confidence-level upper limit sky maps on the gravitational-wave energy flux from broadband point sources, ranging from $F_{\alpha, \Theta} < {\rm…
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