4.6 Article

Constraints on the tensor-to-scalar ratio for non-power-law models

Journal

Publisher

IOP PUBLISHING LTD
DOI: 10.1088/1475-7516/2013/08/001

Keywords

inflation; CMBR experiments; physics of the early universe; cosmological parameters from CMBR

Funding

  1. CONACYT Mexico
  2. Science and Technology Facilities Council [ST/J00152X/1] Funding Source: researchfish
  3. STFC [ST/J00152X/1] Funding Source: UKRI

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Recent cosmological observations hint at a deviation from the simple power-law form of the primordial spectrum of curvature perturbations. In this paper we show that in the presence of a tensor component, a turn-over in the initial spectrum is preferred by current observations, and hence non-power-law models ought to be considered. For instance, for a power-law parameterisation with both a tensor component and running parameter, current data show a preference for a negative running at more than 2.5 sigma C.L. As a consequence of this deviation from a power-law, constraints on the tensor-to-scalar ratio r are slightly broader. We also present constraints on the inflationary parameters for a model-independent reconstruction and the Lasenby & Doran (LD) model. In particular, the constraints on the tensor-to-scalar ratio from the LD model are: r(LD) = 0.11 +/- 0.024. In addition to current data, we show expected constraints from Planck-like and CMB-Pol sensitivity experiments by using Markov-Chain-Monte-Carlo sampling chains. For all the models, we have included the Bayesian Evidence to perform a model selection analysis. The Bayes factor, using current observations, shows a strong preference for the LD model over the standard power-law parameterisation, and provides an insight into the accuracy of differentiating models through future surveys.

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