Euclid preparation. Sensitivity to non-standard particle dark matter model
Euclid Collaboration: J. Lesgourgues (1), J. Schwagereit (1), J. Bucko, (2), G. Parimbelli (3, 4, 5), S. K. Giri (2, 6), F. Hervas-Peters (7, and 2), A. Schneider (2), M. Archidiacono (8, 9), F. Pace (10, 11 and, 12), Z. Sakr (13, 14, 15), A. Amara (16), L. Amendola (13)

TL;DR
The Euclid mission will significantly enhance our ability to constrain non-standard dark matter models through weak lensing and galaxy clustering, potentially revealing deviations from the cold dark matter paradigm with unprecedented sensitivity.
Contribution
This paper forecasts Euclid's capability to test four non-minimal dark matter models using emulators trained on N-body simulations and mock data analysis.
Findings
Euclid can detect effects of non-standard dark matter models.
Bounds on dark matter parameters can improve by up to two orders of magnitude.
Euclid's data will provide critical insights into the dark sector of particle physics.
Abstract
The Euclid mission of the European Space Agency will provide weak gravitational lensing and galaxy clustering surveys that can be used to constrain the standard cosmological model and its extensions, with an opportunity to test the properties of dark matter beyond the minimal cold dark matter paradigm. We present forecasts from the combination of these surveys on the parameters describing four interesting and representative non-minimal dark matter models: a mixture of cold and warm dark matter relics; unstable dark matter decaying either into massless or massive relics; and dark matter experiencing feeble interactions with relativistic relics. We model these scenarios at the level of the non-linear matter power spectrum using emulators trained on dedicated N-body simulations. We use a mock Euclid likelihood to fit mock data and infer error bars on dark matter parameters marginalised…
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