Sensitivity Projections for Dark Matter Searches with the Fermi Large Area Telescope
Eric Charles, Miguel Sanchez-Conde, Brandon Anderson, Regina Caputo,, Alessandro Cuoco, Mattia Di Mauro, Alex Drlica-Wagner, German Gomez-Vargas,, Manuel Meyer, Luigi Tibaldo, Matthew Wood, Gabrijela Zaharijas, Stephan, Zimmer, Marco Ajello, Andrea Albert, Luca Baldini

TL;DR
This paper reviews and projects the sensitivity of Fermi LAT gamma-ray observations for dark matter detection, highlighting improvements over time and potential to probe thermal relic cross sections up to hundreds of GeV.
Contribution
It introduces methods for dark matter searches with Fermi LAT and projects future sensitivities, emphasizing the rapid improvement in dwarf galaxy search limits with extended data.
Findings
Current LAT limits reach the thermal relic level up to 120 GeV.
Projected data could extend sensitivity to about 250 GeV for dwarf galaxies.
15-year observations could detect dark matter annihilation at thermal relic cross sections up to >400 GeV.
Abstract
The nature of dark matter is a longstanding enigma of physics; it may consist of particles beyond the Standard Model that are still elusive to experiments. Among indirect search techniques, which look for stable products from the annihilation or decay of dark matter particles, or from axions coupling to high-energy photons, observations of the -ray sky have come to prominence over the last few years, because of the excellent sensitivity of the Large Area Telescope (LAT) on the Fermi Gamma-ray Space Telescope mission. The LAT energy range from 20 MeV to above 300 GeV is particularly well suited for searching for products of the interactions of dark matter particles. In this report we describe methods used to search for evidence of dark matter with the LAT, and review the status of searches performed with up to six years of LAT data. We also discuss the factors that determine the…
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