Inspired by literature, we introduce a new f(Q) gravity model, a perturbation of ΛCDM.
This paper is available on arxiv under CC 4.0 license. Authors: A. Oliveros, Programa de F´ısica, Universidad del Atl´antico; Mario A. Acero, Programa de F´ısica, Universidad del Atl´antico. Table of Links Abstract and Intro The f gravity: a brief review Cosmological dynamics in late-time Parameter constraints Conclusions Acknowledgments and References 3.
Authors: Authors: A. Oliveros, Programa de F´ısica, Universidad del Atl´antico; Mario A. Acero, Programa de F´ısica, Universidad del Atl´antico.
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Cosmological dynamics and observational constraints: Acknowledgments and ReferencesInspired by literature, we introduce a new f(Q) gravity model, a perturbation of ΛCDM.
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Cosmological dynamics and observational constraints: The f(Q) gravity, a brief reviewInspired by literature, we introduce a new f(Q) gravity model, a perturbation of ΛCDM.
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