Euclid: constraining dark energy coupled to electromagnetism using astrophysical and laboratory data
M. Martinelli, C.J.A.P. Martins, S. Nesseris, I. Tutusaus, A., Blanchard, S. Camera, C. Carbone, S. Casas, V. Pettorino, Z. Sakr, V., Yankelevich, D. Sapone, A. Amara, N. Auricchio, C. Bodendorf, D. Bonino, E., Branchini, V. Capobianco, J. Carretero, M. Castellano, S. Cavuoti

TL;DR
This paper assesses how combining Euclid data with astrophysical and laboratory measurements can improve constraints on dark energy models that include coupling to electromagnetism, highlighting the importance of multi-source data for testing fundamental physics.
Contribution
It extends Euclid forecast constraints to coupled dark energy models and demonstrates the benefits of integrating astrophysical and local data for more accurate testing.
Findings
Astrophysical data improves dark energy constraints by up to 26%.
Future measurements could significantly enhance detection of electromagnetic coupling.
Genetic algorithms provide a null test for the coupling presence.
Abstract
In physically realistic scalar-field based dynamical dark energy models (including, e.g., quintessence) one naturally expects the scalar field to couple to the rest of the model's degrees of freedom. In particular, a coupling to the electromagnetic sector leads to a time (redshift) dependence of the fine-structure constant and a violation of the Weak Equivalence Principle. Here we extend the previous Euclid forecast constraints on dark energy models to this enlarged (but physically more realistic) parameter space, and forecast how well Euclid, together with high-resolution spectroscopic data and local experiments, can constrain these models. Our analysis combines simulated Euclid data products with astrophysical measurements of the fine-structure constant, , and local experimental constraints, and includes both parametric and non-parametric methods. For the astrophysical…
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