Testing and Improving a Set of Morphological Predictors of Flaring Activity
Ioannis Kontogiannis, Manolis K. Georgoulis, Sung-Hong Park, Jordan A, Guerra

TL;DR
This study evaluates and enhances morphological predictors like Ising energy and magnetic field gradient for automated solar flare forecasting using SDO/HMI data, finding that modified predictors improve prediction efficiency.
Contribution
It introduces modifications to existing predictors and assesses their effectiveness in flare prediction, demonstrating improved performance and applicability in automated forecasting systems.
Findings
Ising energy is an effective predictor, improved by modifications.
Horizontal magnetic field gradient shows promising predictive power.
Predictors' effectiveness varies with projection effects.
Abstract
Efficient prediction of solar flares relies on parameters that quantify the eruptive capability of solar active regions. Several such quantitative predictors have been proposed in the literature, inferred mostly from photospheric magnetograms and/or white-light observations. Two of them are the Ising energy and the sum of the total horizontal magnetic field gradient. The former has been developed from line-of-sight magnetograms, while the latter uses sunspot detections and characteristics, based on continuum images. Aiming to include these parameters in an automated prediction scheme, we test their applicability on regular photospheric magnetic field observations provided by the Helioseismic and Magnetic Imager (HMI) instrument onboard the Solar Dynamics Observatory (SDO). We test their efficiency as predictors of flaring activity on a representative sample of active regions and…
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