TL;DR
This paper introduces a fast, accurate, and scalable hybrid $w$-stacking and $w$-projection algorithm for wide-field interferometric imaging, significantly reducing computation while maintaining high accuracy for large datasets.
Contribution
The authors develop a radially symmetric $w$-projection kernel with adaptive quadrature, enabling efficient exact corrections and a hybrid algorithm that scales to large interferometric datasets.
Findings
Kernel generation is reduced by several orders of magnitude.
Achieves approximately 1% accuracy in imaging tests.
Successfully applied to 17.5 million visibilities in a large field of view.
Abstract
The standard wide-field imaging technique, the -projection, allows correction for wide-fields of view for non-coplanar radio interferometric arrays. However, calculating exact corrections for each measurement has not been possible due to the amount of computation required at high resolution and with the large number of visibilities from current interferometers. The required accuracy and computational cost of these corrections is one of the largest unsolved challenges facing next generation radio interferometers such as the Square Kilometre Array. We show that the same calculation can be performed with a radially symmetric -projection kernel, where we use one dimensional adaptive quadrature to calculate the resulting Hankel transform, decreasing the computation required for kernel generation by several orders of magnitude, whilst preserving the accuracy. We confirm that the radial…
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