Detecting Dispersed Radio Transients in Real Time Using Convolutional Neural Networks
David Ruhe, Mark Kuiack, Antonia Rowlinson, Ralph Wijers, Patrick, Forr\'e

TL;DR
This paper introduces a GPU-accelerated pipeline using convolutional neural networks for real-time detection and analysis of dispersed radio transients, addressing a critical gap for upcoming large-scale radio telescopes.
Contribution
It presents a novel real-time analysis pipeline combining convolutional neural networks and GPU acceleration for detecting dispersed radio transients, filling a methodological gap for SKA.
Findings
Successfully applied to simulated data demonstrating efficacy.
Discovered dispersed pulses in real LOFAR data.
Pipeline operates in real-time, enabling prompt alerts.
Abstract
We present a methodology for automated real-time analysis of a radio image data stream with the goal to find transient sources. Contrary to previous works, the transients we are interested in occur on a time-scale where dispersion starts to play a role, so we must search a higher-dimensional data space and yet work fast enough to keep up with the data stream in real time. The approach consists of five main steps: quality control, source detection, association, flux measurement, and physical parameter inference. We present parallelized methods based on convolutions and filters that can be accelerated on a GPU, allowing the pipeline to run in real-time. In the parameter inference step, we apply a convolutional neural network to dynamic spectra that were obtained from the preceding steps. It infers physical parameters, among which the dispersion measure of the transient candidate. Based on…
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Taxonomy
TopicsRadio Astronomy Observations and Technology · Astrophysics and Cosmic Phenomena
