TL;DR
This paper presents a neural network-based method for automated detection of quasi-periodic pulsations in solar and stellar flare lightcurves, improving analysis efficiency amid increasing observational data.
Contribution
The study introduces a Fully Convolution Network trained on synthetic data to accurately identify decaying harmonic QPP in real flare observations, with accessible implementation.
Findings
Achieved 87.2% accuracy on synthetic data
Detected QPP in 7% of real Kepler flare events
The method is effective and user-friendly for large-scale surveys
Abstract
Quasi-periodic pulsations (QPP) are often detected in solar and stellar flare lightcurves. These events may contain valuable information about the underlying fundamental plasma dynamics as they are not described by the standard flare model. The detection of QPP signals in flare lightcurves is hindered by their intrinsically non-stationary nature, contamination by noise, and the continuously increasing amount of flare observations. Hence, the creation of automated techniques for QPP detection is imperative. We implemented the Fully Convolution Network (FCN) architecture to classify the flare lightcurves whether they have exponentially decaying harmonic QPP or not. To train the FCN, 90,000 synthetic flare lightcurves with and without QPP were generated. After training, it showed an accuracy of 87.2% on the synthetic test data and did not experience overfitting. To test the FCN performance…
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