A high resolution foreground model for the MWA EoR1 field: model and implications for EoR power spectrum analysis
P. Procopio, R. B. Wayth, J. Line, C. M. Trott, H. T. Intema, D. A., Mitchell, B. Pindor, J. Riding, S. J. Tingay, M. E. Bell, J. R. Callingham,, K. S. Dwarakanath, Bi-Qing For, B. M. Gaensler, P. J. Hancock, L. Hindson, N., Hurley-Walker, M. Johnston-Hollitt, A. D. Kapi\'nnska

TL;DR
This paper develops a detailed high-resolution foreground source model for the MWA EoR1 field, improving calibration and reducing power spectrum bias, which enhances the prospects for detecting the Epoch of Reionisation signal.
Contribution
It introduces a hybrid foreground source model combining MWA and GMRT data, and analyzes its impact on EoR power spectrum measurements, with implications for future experiments.
Findings
Model contains 5049 sources with complex morphologies.
Peeling bright sources reduces residual power by a factor of two.
Error from modeling double sources is confined to high k modes.
Abstract
The current generation of experiments aiming to detect the neutral hydrogen signal from the Epoch of Reionisation (EoR) is likely to be limited by systematic effects associated with removing foreground sources from target fields. In this paper we develop a model for the compact foreground sources in one of the target fields of the MWA's EoR key science experiment: the `EoR1' field. The model is based on both the MWA's GLEAM survey and GMRT 150 MHz data from the TGSS survey, the latter providing higher angular resolution and better astrometric accuracy for compact sources than is available from the MWA alone. The model contains 5049 sources, some of which have complicated morphology in MWA data, Fornax A being the most complex. The higher resolution data show that 13% of sources that appear point-like to the MWA have complicated morphology such as double and quad structure, with a…
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