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Using Support Vector Machine (SVM) and Ionospheric Total Electron Content (TEC) Data for Solar Flare Predictions

机译:使用支持向量机(SVM)和电离层总电子含量(TEC)用于太阳耀斑预测的数据

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摘要

Predicting where and when space weather events such as solar flares and X-rays bursts are likely to occur in a specific area of interest constitutes a significant challenge in space weather research. Space weather scientists are, therefore, gradually exploring multivariate data analysis techniques from the fields of data mining or machine learning in order to approximate future occurrences of space weather events from past distribution patterns. As solar flares emit extreme ultraviolet and X-ray radiation, which leads to ionization effect in different layers of the ionosphere, most recent works related to solar flare predictions using machine learning (ML) techniques, focused on X-ray time series predictions. Here, we suggest using support vector machine for classifying subdaily and diurnal total electron content (TEC) spatial changes prior to solar flare events, in order to assess the possibility of predicting B, C, M, and X-class solar flare events. This is done as opposed to predicting TEC time series using ML techniques. The predictions are estimated up to three days before each tested class events, along with different skill scores such as precision, recall, Heidke skill score (HSS), accuracy, and true skill statistics. The results indicate that the suggested approach has the ability to predict solar flare events of X and M-class 24 h prior to their occurrence with 91% and 76% HSS skill scores, respectively, which improves over most recent related works. However, for the small-size C and B-class flares, the suggested approach does not succeed in producing similar promising results.
机译:在特定的感兴趣区域中预测太阳耀斑和X射线突发的空间天气事件可能发生在太空天气研究中的重大挑战。因此,空间天气科学家逐渐探索来自数据挖掘或机器学习领域的多元数据分析技术,以便从过去的分布模式近似于未来的空间天气事件发生。由于太阳耀斑发出极端紫外线和X射线辐射,这导致电离层不同层的电离效果,最近与使用机器学习(ML)技术有关的最新作品,专注于X射线时间序列预测。在这里,我们建议使用支持向量机进行分类,用于在太阳耀斑事件之前分类Subdaily和Dianal总电子含量(TEC)空间变化,以评估预测B,C,M和X类太阳耀斑事件的可能性。这是使用ML技术预测TEC时间序列所做的。预测估计在每个测试的类事件前三天,以及不同的技能分数,如精度,召回,Heidke技能评分(HSS),准确性和真正的技能统计。结果表明,建议的方法在其出现91%和76%的HSS技能分数之前预测X和M级24小时的太阳耀斑事件,可以改善最近的相关工程。然而,对于小尺寸的C和B级耀斑,建议的方法不会成功产生类似的有希望的结果。

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