244 research outputs found
Inverse problem: Reconstruction of modified gravity action in Palatini formalism by Supernova Type Ia data
We introduce in gravity--Palatini formalism the method of inverse
problem to extract the action from the expansion history of the universe.
First, we use an ansatz for the scale factor and apply the inverse method to
derive an appropriate action for the gravity. In the second step we use the
Supernova Type Ia data set from the Union sample and obtain a smoothed function
for the Hubble parameter up to the redshift~1.7. We apply the smoothed Hubble
parameter in the inverse approach and reconstruct the corresponding action in
gravity. In the next step we investigate the viability of reconstruction
method, doing a Monte-Carlo simulation we generate synthetic SNIa data with the
quality of union sample and show that roughly more than 1500 SNIa data is
essential to reconstruct correct action. Finally with the enough SNIa data, we
propose two diagnosis in order to distinguish between the CDM model
and an alternative theory for the acceleration of the universe.Comment: 8 pages, 8 figures, accepted in Phys. Rev.
Is cosmic acceleration slowing down?
We investigate the course of cosmic expansion in its `recent past' using the
Constitution SN Ia sample (which includes CfA data at low redshifts), jointly
with signatures of baryon acoustic oscillations (BAO) in the galaxy
distribution and fluctuations in the cosmic microwave background (CMB). Earlier
SN Ia data sets could not address this issue because of a paucity of data at
low redshifts. Allowing the equation of state of dark energy (DE) to vary, we
find that a coasting model of the universe (q_0=0) fits the data about as well
as LCDM. This effect, which is most clearly seen using the recently introduced
`Om' diagnostic, corresponds to an increase of Om(z) and q(z) at redshifts z
\lleq 0.3. In geometrical terms, this suggests that cosmic acceleration may
have already peaked and that we are currently witnessing its slowing down. The
case for evolving DE strengthens if a subsample of the Constitution set
consisting of SNLS+ESSENCE+CfA SN Ia data is analysed in combination with
BAO+CMB using the same statistical methods. The effect we observe could
correspond to DE decaying into dark matter (or something else). A toy model
which mimics this process agrees well with the combined SN Ia+BAO+CMB data.Comment: 6 pages, 5 figures, presentation expanded, results for a new
subsample of the Constitution set are added, new BAO data are accounted for,
main results unchange
Two new diagnostics of dark energy
We introduce two new diagnostics of dark energy (DE). The first, Om, is a
combination of the Hubble parameter and the cosmological redshift and provides
a "null test" of dark energy being a cosmological constant. Namely, if the
value of Om(z) is the same at different redshifts, then DE is exactly
cosmological constant. The slope of Om(z) can differentiate between different
models of dark energy even if the value of the matter density is not accurately
known. For DE with an unevolving equation of state, a positive slope of Om(z)
is suggestive of Phantom (w < -1) while a negative slope indicates Quintessence
(w > -1). The second diagnostic, "acceleration probe"(q-probe), is the mean
value of the deceleration parameter over a small redshift range. It can be used
to determine the cosmological redshift at which the universe began to
accelerate, again without reference to the current value of the matter density.
We apply the "Om" and "q-probe" diagnostics to the Union data set of type Ia
supernovae combined with recent data from the cosmic microwave background
(WMAP5) and baryon acoustic oscillations.Comment: 14 pages, 9 figures. Some new results and an additional reference.
Main conclusions unchanged. Matches published versio
A model-independent dark energy reconstruction scheme using the geometrical form of the luminosity-distance relation
We put forward a new model-independent reconstruction scheme for dark energy
which utilises the expected geometrical features of the luminosity-distance
relation. The important advantage of this scheme is that it does not assume
explicit ansatzes for cosmological parameters but only some very general
cosmological properties via the geometrical features of the reconstructed
luminosity-distance relation. Using the recently released supernovae data by
the Supernova Legacy Survey together with a phase space representation, we show
that the reconstructed luminosity-distance curves best fitting the data
correspond to a slightly varying dark energy density with the Universe
expanding slightly slower than the Lambda CDM model. However, the Lambda CDM
model fits the data at 1 sigma significance level and the fact that our best
fitting luminosity-distance curve is lower than that of the corresponding
Lambda CDM model could be due to systematics. The transition from an
accelerating to a decelerating expansion occurs at a redshift larger than
z=0.35. Interpreting the dark energy as a minimally coupled scalar field we
also reconstruct the scalar field and its potential. We constrain
using the baryon acoustic oscillation peak in the SDSS luminous
red galaxy sample and find that the best fit is obtained with
, in agreement with the CMB data.Comment: 10 pages, 18 figure
High-resolution temporal constraints on the dynamics of dark energy
We use the recent type Ia supernova, cosmic microwave background and
large-scale structure data to shed light on the temporal evolution of the dark
energy equation of state out to redshift one. We constrain the most
flexible parametrization of dark energy to date, and include the dark energy
perturbations consistently throughout. Interpreting our results via the
principal component analysis, we find no significant evidence for dynamical
dark energy: the cosmological constant model is consistent with data everywhere
between redshift zero and one at 95% C.L.Comment: 5 pages, 2 figures Version for PRD (Rapid Communications
Smoothing Supernova Data to Reconstruct the Expansion History of the Universe and its Age
We propose a non-parametric method of smoothing supernova data over redshift
using a Gaussian kernel in order to reconstruct important cosmological
quantities including H(z) and w(z) in a model independent manner. This method
is shown to be successful in discriminating between different models of dark
energy when the quality of data is commensurate with that expected from the
future SuperNova Acceleration Probe (SNAP). We find that the Hubble parameter
is especially well-determined and useful for this purpose. The look back time
of the universe may also be determined to a very high degree of accuracy (\lleq
0.2 %) in this method. By refining the method, it is also possible to obtain
reasonable bounds on the equation of state of dark energy. We explore a new
diagnostic of dark energy-- the `w-probe'-- which can be calculated from the
first derivative of the data. We find that this diagnostic is reconstructed
extremely accurately for different reconstruction methods even if \Omega_m is
marginalized over. The w-probe can be used to successfully distinguish between
CDM and other models of dark energy to a high degree of accuracy.Comment: 16 pages, 12 figures. Section 5 restructured, main conclusions
unchanged. Post journal publication versio
Crossing Statistic: Bayesian interpretation, model selection and resolving dark energy parametrization problem
By introducing Crossing functions and hyper-parameters I show that the
Bayesian interpretation of the Crossing Statistics [1] can be used trivially
for the purpose of model selection among cosmological models. In this approach
to falsify a cosmological model there is no need to compare it with other
models or assume any particular form of parametrization for the cosmological
quantities like luminosity distance, Hubble parameter or equation of state of
dark energy. Instead, hyper-parameters of Crossing functions perform as
discriminators between correct and wrong models. Using this approach one can
falsify any assumed cosmological model without putting priors on the underlying
actual model of the universe and its parameters, hence the issue of dark energy
parametrization is resolved. It will be also shown that the sensitivity of the
method to the intrinsic dispersion of the data is small that is another
important characteristic of the method in testing cosmological models dealing
with data with high uncertainties.Comment: 14 pages, 4 figures, discussions extended, 1 figure and two
references added, main results unchanged, matches the final version to be
published in JCA
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