1 research outputs found
A Bayesian Calibration Framework for EDGES
We develop a Bayesian model that jointly constrains receiver calibration,
foregrounds and cosmic 21cm signal for the EDGES global 21\,cm experiment. This
model simultaneously describes calibration data taken in the lab along with
sky-data taken with the EDGES low-band antenna. We apply our model to the same
data (both sky and calibration) used to report evidence for the first star
formation in 2018. We find that receiver calibration does not contribute a
significant uncertainty to the inferred cosmic signal (<1%), though our joint
model is able to more robustly estimate the cosmic signal for foreground models
that are otherwise too inflexible to describe the sky data. We identify the
presence of a significant systematic in the calibration data, which is largely
avoided in our analysis, but must be examined more closely in future work. Our
likelihood provides a foundation for future analyses in which other
instrumental systematics, such as beam corrections and reflection parameters,
may be added in a modular manner.Comment: 18 pages + 3 for appendices. 13 figures. Accepted to MNRA