Sensitivity to sub-GeV dark matter from cosmic-ray scattering with very-high-energy gamma-ray observatories (2403.09343v2)
Abstract: Huge efforts have been deployed to detect dark matter (DM) in the GeV-TeV mass range involving various detection techniques, and led to strong constraints in the available parameter space. We compute here the sensitivity to sub-GeV DM that can be probed from the inevitable cosmic-ray scattering onto DM particles populating the Milky Way halo. Inelastic scattering of energetic cosmic rays off DM would produce high-energy gamma rays in the final state, providing a new avenue to probe the poorly-constrained so far sub-GeV dark matter mass range. In this work we derive sensitivity forecasts for the inelastic cosmic-ray proton - DM cross section for current and future very-high-energy gamma-ray observatories such as H.E.S.S., LHAASO, CTA and SWGO in the 100 eV to 100 MeV mass range. These inelastic cross section constraints are converted to the elastic proton - DM cross section to highlight further complementarity with cosmological, collider and direct detection searches. The sensitivity computed at 95\% confidence level on the elastic cross section reaches $\sim$2$\times$ 10${-32}$ cm$2$ for a 100 keV DM mass for H.E.S.S.-like and $\sim$7$\times$ 10${-34}$ cm$2$ for a $\sim$1 keV DM mass for LHAASO. The sensitivity prospects for CTA and a strawman SWGO model reach $\sim$6$\times$ 10${-34}$ cm$2$ and $\sim$4$\times$ 10${-35}$ cm$2$, for DM masses of 10 keV and 1 keV, respectively. The sensitivity reach of the gamma-ray observatories considered here enables to probe an uncharted region of the DM mass - cross section parameter space.
- https://www.mpi-hd.mpg.de/HESS/.
- https://english.ihep.cas.cn/lhaaso.
- http://www.magic.iac.es.
- https://veritas.sao.arizona.edu.
- https://www.cta-observatory.org.
- https://www.swgo.org/SWGOWiki/doku.php.
- F.W. Stecker, Cosmic gamma rays (1971).
- https://github.com/harmscho/SGSOSensitivity.
- 10.5281/zenodo.5163273.
- 10.5281/zenodo.5499840.
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