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Solar Flare Forecasting Based on Magnetogram Sequences Learning with Multiscale Vision Transformers and Data Augmentation Techniques.

Authors :
Grim, Luís Fernando L.
Gradvohl, André Leon S.
Source :
Solar Physics. Mar2024, Vol. 299 Issue 3, p1-28. 28p.
Publication Year :
2024

Abstract

Solar flares are releases of electromagnetic energy generally occurring in active solar regions with magnetic fields, known as sunspots. The burst of radiation released by a solar flare can reach Earth's atmosphere in a few minutes. High-intensity solar flares, M- or X-class flares, can significantly impact some of Earth's activities and technologies, such as satellites, telecommunications, and electrical power systems. Therefore driving efforts in high-intensity solar flare forecasting systems is crucial. A forecasting model that observes the evolution of active regions may analyze a set of attributes that indicate which active regions can be precursors to solar flares. Recent work has focused on deep-learning models that consider the evolution of active regions in the Sun. However, M- and X-class flares are spurious in the solar-cycle period. That situation leads to an imbalanced dataset, increasing the effort to develop machine-learning models for forecasting. Therefore we propose transformers-based models to forecast ≥M-class flares, taking sequences of line-of-sight magnetogram images as input. In addition, we apply data augmentation techniques and other methods to deal with training on imbalanced datasets. Our fine-tuned models outperformed state-of-the-art work using image processing to forecast ≥M-class flares in the next 48 h with an approximate True Skill Statistic (TSS ) of 0.8. Moreover, the data augmentation techniques applied to the training set kept the TSS stable and improved most of the secondary performance metrics analyzed. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
00380938
Volume :
299
Issue :
3
Database :
Academic Search Index
Journal :
Solar Physics
Publication Type :
Academic Journal
Accession number :
176584413
Full Text :
https://doi.org/10.1007/s11207-024-02276-0