TL;DR
This paper develops a combined approach for solar flare prediction using full-disk and active region models, demonstrating improved accuracy through ensemble methods suitable for operational space weather forecasting.
Contribution
It introduces a novel coupling of heterogeneous flare prediction models with ensemble techniques for real-time operational use.
Findings
Coupled models predict 24-hour flare probabilities effectively.
Ensemble logistic regression outperforms individual models and baseline.
Improved predictive metrics (TSS and HSS) with the ensemble approach.
Abstract
Solar flare prediction is a central problem in space weather forecasting and has captivated the attention of a wide spectrum of researchers due to recent advances in both remote sensing as well as machine learning and deep learning approaches. The experimental findings based on both machine and deep learning models reveal significant performance improvements for task specific datasets. Along with building models, the practice of deploying such models to production environments under operational settings is a more complex and often time-consuming process which is often not addressed directly in research settings. We present a set of new heuristic approaches to train and deploy an operational solar flare prediction system for M1.0-class flares with two prediction modes: full-disk and active region-based. In full-disk mode, predictions are performed on full-disk line-of-sight…
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Taxonomy
MethodsLogistic Regression
