Characterization Of Inpaint Residuals In Interferometric Measurements of the Epoch Of Reionization
Michael Pagano, Jing Liu, Adrian Liu, Nicholas S. Kern, Aaron, Ewall-Wice, Philip Bull, Robert Pascua, Siamak Ravanbakhsh, Zara, Abdurashidova, Tyrone Adams, James E. Aguirre, Paul Alexander, Zaki S. Ali,, Rushelle Baartman, Yanga Balfour, Adam P. Beardsley, Gianni Bernardi,

TL;DR
This paper evaluates various inpainting techniques for correcting RFI in interferometric measurements of the Epoch of Reionization, introducing a neural network approach and analyzing their effectiveness on simulated and real data.
Contribution
It introduces a convolutional neural network for RFI inpainting and compares multiple techniques, providing insights into their performance on real and simulated data.
Findings
High wavenumber modeling techniques perform best for narrowband RFI.
DPSS and CLEAN excel at inpainting intermittent narrowband RFI.
Errors are largest in noise-dominated delay modes, especially at lower noise levels.
Abstract
Radio Frequency Interference (RFI) is one of the systematic challenges preventing 21cm interferometric instruments from detecting the Epoch of Reionization. To mitigate the effects of RFI on data analysis pipelines, numerous inpaint techniques have been developed to restore RFI corrupted data. We examine the qualitative and quantitative errors introduced into the visibilities and power spectrum due to inpainting. We perform our analysis on simulated data as well as real data from the Hydrogen Epoch of Reionization Array (HERA) Phase 1 upper limits. We also introduce a convolutional neural network that capable of inpainting RFI corrupted data in interferometric instruments. We train our network on simulated data and show that our network is capable at inpainting real data without requiring to be retrained. We find that techniques that incorporate high wavenumbers in delay space in their…
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Taxonomy
TopicsRadio Astronomy Observations and Technology · Soil Moisture and Remote Sensing · Optical measurement and interference techniques
