Identifying preflare spectral features using explainable artificial intelligence
Brandon Panos, Lucia Kleint, Jonas Zbinden

TL;DR
This paper employs explainable AI techniques to identify spectral features in MgII data that precede solar flares, enhancing understanding and prediction accuracy of flare onset.
Contribution
It introduces the use of Grad-CAM and expected gradients for interpreting neural network decisions in solar flare prediction from IRIS spectral data.
Findings
Prediction scores increase before flare onset.
MgII triplet emission and spectral asymmetries are key indicators.
Low intensity spectra can still be significant for prediction.
Abstract
The prediction of solar flares is of practical and scientific interest; however, many machine learning methods used for this prediction task do not provide the physical explanations behind a model's performance. We made use of two recently developed explainable artificial intelligence techniques called gradient-weighted class activation mapping (Grad-CAM) and expected gradients (EG) to reveal the decision-making process behind a high-performance neural network that has been trained to distinguish between MgII spectra derived from flaring and nonflaring active regions, a fact that can be applied to the task of short timescale flare forecasting. The two techniques generate visual explanations (heatmaps) that can be projected back onto the spectra, allowing for the identification of features that are strongly associated with precursory flare activity. We automated the search for…
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Taxonomy
TopicsSolar and Space Plasma Dynamics · Oil, Gas, and Environmental Issues · Geophysics and Gravity Measurements
