Dark Matter in the High-Scale Seesaw Leptogenesis Paradigm
Juan Herrero-Garcia, Giacomo Landini, Tsutomu T. Yanagida

TL;DR
This paper extends the high-scale seesaw leptogenesis model to include a dark sector, proposing a new dark matter candidate and predicting observable cosmological signatures, linking neutrino physics with dark matter and early universe cosmology.
Contribution
It introduces a minimal dark sector extension to the high-scale seesaw leptogenesis framework, connecting neutrino mass generation with dark matter production and cosmological signals.
Findings
Heavy neutrino decays produce cold dark matter.
Late scalar decays generate additional dark matter components.
Predicted spectral distortions in the CMB could be detected by future experiments.
Abstract
The seesaw mechanism with three heavy Majorana right-handed neutrinos provides an elegant explanation for neutrino masses and, combined with leptogenesis, can generate the baryon asymmetry of the universe (BAU). Naturally embedded in a Grand Unified Theory, this framework stands as one of the best-motivated extensions beyond the Standard Model, but it is very difficult to test it. Moreover, it does not account for dark matter (DM). In this paper, we propose a minimal extension that introduces a dark sector with a singlet Majorana fermion (as the DM candidate) and a complex scalar singlet. The heavy right-handed neutrinos serve another role beyond generating neutrino masses and the BAU: producing the cold DM density through their decays. Interestingly, the model also predicts a subdominant DM component from late scalar decays, which in some cases may be hot or warm at the onset of…
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Taxonomy
TopicsDark Matter and Cosmic Phenomena · Computational Physics and Python Applications
