Explaining Full-disk Deep Learning Model for Solar Flare Prediction using Attribution Methods

Chetraj Pandey, R. Angryk, Berkay Aydin
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引用次数: 4

Abstract

This paper contributes to the growing body of research on deep learning methods for solar flare prediction, primarily focusing on highly overlooked near-limb flares and utilizing the attribution methods to provide a post hoc qualitative explanation of the model's predictions. We present a solar flare prediction model, which is trained using hourly full-disk line-of-sight magnetogram images and employs a binary prediction mode to forecast $\geq$M-class flares that may occur within the following 24-hour period. To address the class imbalance, we employ a fusion of data augmentation and class weighting techniques; and evaluate the overall performance of our model using the true skill statistic (TSS) and Heidke skill score (HSS). Moreover, we applied three attribution methods, namely Guided Gradient-weighted Class Activation Mapping, Integrated Gradients, and Deep Shapley Additive Explanations, to interpret and cross-validate our model's predictions with the explanations. Our analysis revealed that full-disk prediction of solar flares aligns with characteristics related to active regions (ARs). In particular, the key findings of this study are: (1) our deep learning models achieved an average TSS=0.51 and HSS=0.35, and the results further demonstrate a competent capability to predict near-limb solar flares and (2) the qualitative analysis of the model explanation indicates that our model identifies and uses features associated with ARs in central and near-limb locations from full-disk magnetograms to make corresponding predictions. In other words, our models learn the shape and texture-based characteristics of flaring ARs even at near-limb areas, which is a novel and critical capability with significant implications for operational forecasting.
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解释利用归因方法预测太阳耀斑的全盘深度学习模型
本文为太阳耀斑预测的深度学习方法研究做出了贡献,主要关注高度被忽视的近翼耀斑,并利用归因方法为模型预测提供事后定性解释。我们提出了一个太阳耀斑预测模型,该模型使用每小时全盘视距磁图图像进行训练,并采用二元预测模式来预测在接下来的24小时内可能发生的$\geq$ m级耀斑。为了解决类不平衡问题,我们采用了数据增强和类加权技术的融合;并使用真实技能统计量(TSS)和海德克技能分数(HSS)来评估我们模型的整体性能。此外,我们应用了三种归因方法,即Guided Gradient-weighted Class Activation Mapping、Integrated Gradients和Deep Shapley Additive explanation,来解释和交叉验证我们模型的预测结果。我们的分析表明,太阳耀斑的全盘预测与活动区(ARs)相关的特征一致。特别是,本研究的主要发现是:(1)我们的深度学习模型实现了平均TSS=0.51和HSS=0.35,结果进一步证明了预测近翼太阳耀斑的能力;(2)对模型解释的定性分析表明,我们的模型识别并利用全盘磁图中与中心和近翼位置的ARs相关的特征进行了相应的预测。换句话说,我们的模型甚至可以在近肢区域学习燃烧ARs的形状和纹理特征,这是一种新颖而关键的能力,对业务预测具有重要意义。
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