Time-Dependent Searches for Point Sources of Neutrinos with the 40-String and 22-String Configurations of IceCube
The IceCube Collaboration: R. Abbasi, Y. Abdou, T. Abu-Zayyad, J., Adams, J. A. Aguilar, M. Ahlers, K. Andeen, J. Auffenberg, X. Bai, M. Baker,, S. W. Barwick, R. Bay, J. L. Bazo Alba, K. Beattie, J. J. Beatty, S. Bechet,, J. K. Becker, K.-H. Becker, M. L. Benabderrahmane

TL;DR
This study conducts time-dependent searches for neutrino point sources using IceCube's 40- and 22-string configurations, aiming to detect transient astrophysical neutrino emissions associated with various cosmic phenomena.
Contribution
It introduces a comprehensive, unbinned maximum likelihood method for time-dependent neutrino source searches over a broad parameter space, including untriggered and multi-wavelength triggered analyses.
Findings
No significant neutrino flares detected beyond background fluctuations.
Enhanced sensitivity to transient sources compared to time-integrated searches.
Methodology applicable to future multi-messenger astrophysics studies.
Abstract
This paper presents searches for flaring sources of neutrinos using the IceCube neutrino telescope. For the first time, a search is performed over the entire parameter space of energy, direction and time looking for neutrino flares of 20 microseconds to a year duration from astrophysical sources among the atmospheric neutrino and muon backgrounds. Searches which integrate over time are less sensitive to flares because they are affected by a larger background of atmospheric neutrinos and muons that can be reduced by the time constraint. Flaring sources considered here, such as active galactic nuclei, soft gamma-ray repeaters and gamma-ray bursts, are promising candidate neutrino emitters. We used mainly data taken between April 5, 2008 and May 20, 2009 by a partially completed configuration of IceCube with 40 strings. For the presented searches an unbinned maximum likelihood method is…
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