Time-Resolved Spectroscopy of the 3 Brightest and Hardest Short Gamma-Ray Bursts Observed with the FGST Gamma-Ray Burst Monitor
Sylvain Guiriec, Michael S. Briggs, Valerie Connaugthon, Erin Kara,, Frederic Daigne, Chryssa Kouveliotou, Alexander J. van der Horst, William, Paciesas, Charles A. Meegan, P.N. Bhat, Suzanne Foley, Elisabetta Bissaldi,, Michael Burgess, Vandiver Chaplin, Roland Diehl

TL;DR
This study presents detailed time-resolved spectroscopy of the three brightest short gamma-ray bursts observed with Fermi GBM, revealing their spectral properties, evolution, and implications for emission models.
Contribution
First time high-resolution (2 ms) time-resolved spectral analysis of the brightest short GRBs, showing deviations from standard models and highlighting spectral and temporal similarities to long GRBs.
Findings
Short GRBs have higher Epeak values than long GRBs.
Spectral evolution generally follows flux variations.
Time-resolved spectra often violate synchrotron emission limits.
Abstract
From July 2008 to October 2009, the Gamma-ray Burst Monitor (GBM) on board the Fermi Gamma-ray Space Telescope (FGST) has detected 320 Gamma-Ray Bursts (GRBs). About 20% of these events are classified as short based on their T90 duration below 2 s. We present here for the first time time-resolved spectroscopy at timescales as short as 2 ms for the three brightest short GRBs observed with GBM. The time-integrated spectra of the events deviate from the Band function, indicating the existence of an additional spectral component, which can be fit by a power-law with index ~-1.5. The time-integrated Epeak values exceed 2 MeV for two of the bursts, and are well above the values observed in the brightest long GRBs. Their Epeak values and their low-energy power-law indices ({\alpha}) confirm that short GRBs are harder than long ones. We find that short GRBs are very similar to long ones, but…
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