Exploring the MeV Sky with a Combined Coded Mask and Compton Telescope: The Galactic Explorer with a Coded Aperture Mask Compton Telescope (GECCO)
Elena Orlando, Eugenio Bottacini, Alexander Moiseev, Arash Bodaghee,, Werner Collmar, Torsten Ensslin, Igor V. Moskalenko, Michela Negro, Stefano, Profumo, Matthew G. Baring, Aleksey Bolotnikov, Nicholas Cannady, Gabriella, A. Carini, Seth Digel, Isabelle A. Grenier

TL;DR
GECCO is a proposed next-generation MeV gamma-ray telescope combining coded mask and Compton techniques to improve source detection, resolve diffuse emission, and explore new phenomena in the poorly studied MeV sky.
Contribution
It introduces a novel combined coded mask and Compton telescope design for MeV energies, enhancing angular resolution and scientific capabilities over previous missions.
Findings
Potential to resolve Galactic center excess and Fermi Bubbles.
Ability to detect and analyze nuclear and annihilation lines.
Enables multi-messenger astrophysics with transient gamma-ray sources.
Abstract
The sky at MeV energies is currently poorly explored. Here we present an innovative mission concept that builds on and improves past and currently proposed missions at such energies. We outline the motivations for combining a coded mask and a Compton telescope and we define the scientific goals of such a mission. The Galactic Explorer with a Coded Aperture Mask Compton Telescope (GECCO) is a novel concept for a next-generation telescope covering hard X-ray and soft gamma-ray energies. The potential and importance of this approach that bridges the observational gap in the MeV energy range are presented. With the unprecedented angular resolution of the coded mask telescope combined with the sensitive Compton telescope, a mission such as GECCO can disentangle the discrete sources from the truly diffuse emission. Individual Galactic and extragalactic sources are detected. This also allows…
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