60 research outputs found
Dithering Strategies and Point-Source Photometry
The accuracy in the photometry of a point source depends on the point-spread
function (PSF), detector pixelization, and observing strategy. The PSF and
pixel response describe the spatial blurring of the source, the pixel scale
describes the spatial sampling of a single exposure, and the observing strategy
determines the set of dithered exposures with pointing offsets from which the
source flux is inferred. In a wide-field imaging survey, sources of interest
are randomly distributed within the field of view and hence are centered
randomly within a pixel. A given hardware configuration and observing strategy
therefore have a distribution of photometric uncertainty for sources of fixed
flux that fall in the field. In this article we explore the ensemble behavior
of photometric and position accuracies for different PSFs, pixel scales, and
dithering patterns. We find that the average uncertainty in the flux
determination depends slightly on dither strategy, whereas the position
determination can be strongly dependent on the dithering. For cases with pixels
much larger than the PSF, the uncertainty distributions can be non-Gaussian,
with rms values that are particularly sensitive to the dither strategy. We also
find that for these configurations with large pixels, pointings dithered by a
fractional pixel amount do not always give minimal average uncertainties; this
is in contrast to image reconstruction for which fractional dithers are
optimal. When fractional pixel dithering is favored, a pointing accuracy of
better than pixel width is required to maintain half the advantage
over random dithers
Generating and Analyzing Constrained Dark Energy Equations of State and Systematics Functions
Some functions entering cosmological analysis, such as the dark energy
equation of state or systematic uncertainties, are unknown functions of
redshift. To include them without assuming a particular form we derive an
efficient method for generating realizations of all possible functions subject
to certain bounds or physical conditions, e.g. w\in[-1,+1] as for quintessence.
The method is optimal in the sense that it is both pure and complete in filling
the allowed space of principal components. The technique is applied to
propagation of systematic uncertainties in supernova population drift and dust
corrections and calibration through to cosmology parameter estimation and bias
in the magnitude-redshift Hubble diagram. We identify specific ranges of
redshift and wavelength bands where the greatest improvements in supernova
systematics due to population evolution and dust correction can be achieved.Comment: 12 pages, 11 figures; v2 minor revisions, higher resolution figures,
matches PRD versio
Measuring the 3D shape of X-ray clusters
Observations and numerical simulations of galaxy clusters strongly indicate
that the hot intracluster x-ray emitting gas is not spherically symmetric. In
many earlier studies spherical symmetry has been assumed partly because of
limited data quality, however new deep observations and instrumental designs
will make it possible to go beyond that assumption. Measuring the temperature
and density profiles are of interest when observing the x-ray gas, however the
spatial shape of the gas itself also carries very useful information. For
example, it is believed that the x-ray gas shape in the inner parts of galaxy
clusters is greatly affected by feedback mechanisms, cooling and rotation, and
measuring this shape can therefore indirectly provide information on these
mechanisms. In this paper we present a novel method to measure the
three-dimensional shape of the intracluster x-ray emitting gas. We can measure
the shape from the x-ray observations only, i.e. the method does not require
combination with independent measurements of e.g. the cluster mass or density
profile. This is possible when one uses the full spectral information contained
in the observed spectra. We demonstrate the method by measuring radial
dependent shapes along the line of sight for CHANDRA mock data. We find that at
least 10^6 photons are required to get a 5-{\sigma} detection of shape for an
x-ray gas having realistic features such as a cool core and a double powerlaw
for the density profile. We illustrate how Bayes' theorem is used to find the
best fitting model of the x-ray gas, an analysis that is very important in a
real observational scenario where the true spatial shape is unknown. Not
including a shape in the fit may propagate to a mass bias if the x-ray is used
to estimate the total cluster mass. We discuss this mass bias for a class of
spacial shapes.Comment: 29 pages, 16 figure
- …