Effective $\Lambda$CDM model emerging from $f(Q,T)$ under a special EOS limit in symmetric cosmology with Bayesian and ANN observational constraints
Anil Kumar Yadav, S. H. Shekh, N. Myrzakulov

TL;DR
This paper explores an effective $f(Q)$ gravity model under a specific EOS condition, showing it mimics $$CDM, and constrains it using observational data with Bayesian and machine learning methods, addressing current cosmological tensions.
Contribution
It derives a new $f(Q)$ model from $f(Q,T)$ gravity under a special EOS, and compares Bayesian and ANN methods for observational constraints.
Findings
Model reproduces $$CDM background evolution.
ANN provides tighter parameter constraints and faster computation.
Model offers an alternative explanation for $H_0$ and $S_8$ tensions.
Abstract
In this work, we investigate the cosmological consequences of an effective model emerging from the more general gravity theory under the special equation-of-state condition . Under this limit, the field equations yield the constraint , implying that the function becomes purely dependent on the nonmetricity scalar , and the background evolution mimics that of the standard CDM model. We derive the resulting functional forms of , obtain the corresponding effective cosmological constant, and analyze the physical nature of this reduction. To test the model against observations, we constrain the parameters , , and using cosmic chronometers (CC), baryon acoustic oscillations (BAO), and Pantheon+ SN Ia datasets. A comparative analysis is performed using both the conventional Bayesian Markov Chain Monte…
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Taxonomy
TopicsCosmology and Gravitation Theories · Galaxies: Formation, Evolution, Phenomena · Particle physics theoretical and experimental studies
