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Automatic Burst Detection in Solar Radio Spectrograms Using Deep Learning: deARCE Method

J. Bussóns Gordo, Mario Fernández Ruiz, Manuel Prieto, Jorge Alvarado, Francisco Chávez, J. Ignacio Hidalgo, C. Monstein

2023Solar Physics11 citationsDOIOpen Access PDF

Abstract

Abstract We present in detail an automatic radio-burst detection system, based on the convolutional neural network, for use with any kind of solar spectrogram. A full methodology for model training, performance evaluation, and feedback to the model generator has been developed with special emphasis on i) robustness tests against stochastic and overfitting effects, ii) specific metrics adapted to the unbalanced nature of the solar-burst scenario, iii) tunable parameters for probability-threshold optimization, and iv) burst-coincidence cross match among e-Callisto stations and with external observatories (NOAA-SWPC). The resulting neural network configuration has been designed to accept data from observatories other than e-Callisto , either ground- or spacecraft-based. Typical False Negative and False Positive Scores in single-observatory mode are, respectively, in the 10 – 16% and 6 – 8% ranges, which improve further in cross-match mode. This mode includes new services (, ) allowing the end-user to check at a glance if a solar radio burst has taken place with a high level of confidence.

Topics & Concepts

OverfittingSpectrogramRobustness (evolution)Solar radioPhysicsArtificial neural networkConvolutional neural networkBurst mode (computing)Remote sensingMode (computer interface)ObservatoryComputer scienceArtificial intelligenceReal-time computingAstronomyGeneGeologyChemistryBiochemistryOperating systemSolar and Space Plasma DynamicsBlind Source Separation Techniques
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