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A robust RFI identification for radio interferometry based on a convolutional neural network

Hao-Min Sun, Hui Deng, Feng Wang, Ying Mei, Tingting Xu, O. Smirnov, Linhua Deng, Shoulin Wei

2022Monthly Notices of the Royal Astronomical Society24 citationsDOI

Abstract

ABSTRACT The rapid development of new generation radio interferometers such as the Square Kilometer Array (SKA) has opened up unprecedented opportunities for astronomical research. However, anthropogenic radio frequency interference (RFI) from communication technologies and other human activities severely affects the fidelity of observational data. It also significantly reduces the sensitivity of the telescopes. We proposed a robust convolutional neural network (CNN) model to identify RFI based on machine-learning methods. We overlaid RFI on the simulation data of SKA1-LOW to construct three visibility function data sets. One data set was used for modelling, and the other two were used for validating the model’s usability. The experimental results show that the area under the curve reaches 0.93, with satisfactory accuracy and precision. We then further investigated the effectiveness of the model by identifying the RFI in the actual observational data from LOFAR and MeerKAT. The results show that the model performs well. The overall effectiveness is comparable to AOFlagger software and provides an improvement over existing methods in some instances.

Topics & Concepts

LOFARConvolutional neural networkVisibilityPhysicsElectromagnetic interferenceAstronomical interferometerData setInterferometryRadio telescopeRemote sensingArtificial neural networkRadio astronomyComputer scienceArtificial intelligenceAstronomyTelecommunicationsOpticsGeologyRadio Astronomy Observations and TechnologyRadio Wave Propagation StudiesSoil Moisture and Remote Sensing
A robust RFI identification for radio interferometry based on a convolutional neural network | Litcius