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A Comparative Analysis of Machine-learning Models for Solar Flare Forecasting: Identifying High-performing Active Region Flare Indicators

Authors :
Sinha, Suvadip
Gupta, Om
Singh, Vishal
Lekshmi, B.
Nandy, Dibyendu
Mitra, Dhrubaditya
Chatterjee, Saikat
Bhattacharya, Sourangshu
Chatterjee, Saptarshi
Srivastava, Nandita
Brandenburg, Axel
Pal, Sanchita
Source :
Astrophys. J. 935, 45 (2022)
Publication Year :
2022

Abstract

Solar flares create adverse space weather impacting space and Earth-based technologies. However, the difficulty of forecasting flares, and by extension severe space weather, is accentuated by the lack of any unique flare trigger or a single physical pathway. Studies indicate that multiple physical properties contribute to active region flare potential, compounding the challenge. Recent developments in machine learning (ML) have enabled analysis of higher-dimensional data leading to increasingly better flare forecasting techniques. However, consensus on high-performing flare predictors remains elusive. In the most comprehensive study to date, we conduct a comparative analysis of four popular ML techniques (k-nearest neighbor, logistic regression, random forest classifier, and support vector machine) by training these on magnetic parameters obtained from the Helioseismic and Magnetic Imager (HMI) on board the Solar Dynamics Observatory (SDO) for the entirety of solar cycle 24. We demonstrate that the logistic regression and support vector machine algorithms perform extremely well in forecasting active region flaring potential. The logistic regression algorithm returns the highest true skill score of $0.967 \pm 0.018$, possibly the highest classification performance achieved with any strictly parametric study. From a comparative assessment, we establish that the magnetic properties like total current helicity, total vertical current density, total unsigned flux, R_VALUE, and total absolute twist are the top-performing flare indicators. We also introduce and analyze two new performance metrics, namely, severe and clear space weather indicators. Our analysis constrains the most successful ML algorithms and identifies physical parameters that contribute most to active region flare productivity.

Details

Database :
arXiv
Journal :
Astrophys. J. 935, 45 (2022)
Publication Type :
Report
Accession number :
edsarx.2204.05910
Document Type :
Working Paper
Full Text :
https://doi.org/10.3847/1538-4357/ac7955