TL;DR
This paper demonstrates that deep learning can effectively classify fast radio burst candidates in real-time, significantly reducing false positives and enabling rapid identification of astrophysical signals in large-scale radio surveys.
Contribution
The authors develop a hierarchical deep neural network framework for fast radio burst classification, trained on real and simulated data, achieving high accuracy and speed for large-scale surveys.
Findings
Deep learning achieves high accuracy in FRB classification.
Real-time processing is feasible with GPU acceleration.
Potential to replace traditional dedispersion methods for quick detection.
Abstract
Upcoming Fast Radio Burst (FRB) surveys will search 10\, beams on sky with very high duty cycle, generating large numbers of single-pulse candidates. The abundance of false positives presents an intractable problem if candidates are to be inspected by eye, making it a good application for artificial intelligence (AI). We apply deep learning to single pulse classification and develop a hierarchical framework for ranking events by their probability of being true astrophysical transients. We construct a tree-like deep neural network (DNN) that takes multiple or individual data products as input (e.g. dynamic spectra and multi-beam detection information) and trains on them simultaneously. We have built training and test sets using false-positive triggers from real telescopes, along with simulated FRBs, and single pulses from pulsars. Training of the DNN was independently done for…
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