Solar Flare Forecasting Using Time Series and Extreme Gradient Boosting Ensembles

被引:0
|
作者
T. Cinto
A. L. S. Gradvohl
G. P. Coelho
A. E. A. da Silva
机构
[1] University of Campinas (UNICAMP),School of Technology (FT)
[2] Federal Institute of Education,undefined
[3] Science and Technology of Rio Grande do Sul (IFRS) – Campus Feliz,undefined
来源
Solar Physics | 2020年 / 295卷
关键词
Flares, forecasting; Flares, models; Active regions, magnetic fields; Active regions, structure;
D O I
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中图分类号
学科分类号
摘要
Space weather events may cause damage to several types of technologies, including aviation, satellites, oil and gas industries, and electrical systems, leading to economic and commercial losses. Solar flares belong to the most significant events, and refer to sudden radiation releases that can affect the Earth’s atmosphere within a few hours or minutes. Therefore, it is worth designing high-performance systems for forecasting such events. Although in the literature there are many approaches for flare forecasting, there is still a lack of consensus concerning the techniques used for designing these systems. Seeking to establish some standardization while designing flare predictors, in this study we propose a novel methodology for designing such predictors, further validated with extreme gradient boosting tree classifiers and time series. This methodology relies on the following well-defined machine learning based pipeline: (i) univariate feature selection provided with the F-score, (ii) randomized hyperparameters search and optimization, (iii) imbalanced data treatment through cost function analysis of classifiers, (iv) adjustment of cut-off point of classifiers seeking to find the optimal relationship between hit rate and precision, and (v) evaluation under operational settings. To verify our methodology effectiveness, we designed and evaluated three proof-of-concept models for forecasting flares with an X class larger than C up to 72 hours ahead. Compared to baseline models, those models were able to significantly increase their scores of true skill statistics (TSS) under operational forecasting scenarios by 0.37 (predicting flares in the next 24 hours), 0.13 (predicting flares within 24 – 48 hours), and 0.36 (predicting flares within 48 – 72 hours). Besides increasing the TSS, the methodology also led to significant increases in the area under the receiver operating characteristic (ROC) curve, corroborating that we improved the positive and negative recalls of classifiers while decreasing the number of false alarms.
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