论文标题
深度学习的重建,用于预测太阳风暴的黑子矢量磁场
Deep learning reconstruction of sunspot vector magnetic fields for forecasting solar storms
论文作者
论文摘要
太阳能磁性活动会产生极端的太阳耀斑和冠状质量驱动,这对电子基础设施构成了严重威胁,并可能严重破坏经济活动。因此,重要的是要欣赏爆炸性太阳活动的触发因素并提高可靠的空间天气预测。光电载体 - 磁场数据捕获了黑子磁场复杂性,因此可以提高空间周围预测的质量。但是,最先进的矢量场观测值只能从太阳能动力学观测站/热震和磁成像仪(SDO/HMI(SDO/HMI)(自2010年以来)获得,大多数其他当前和过去的任务以及观测设施,例如全球振荡网络集团(GONG)仅记录录制线路线(LOS)字段。在这里,使用基于Inception的卷积神经网络,我们从HMI的LOS磁力图以及具有高忠诚度(〜90%相关性)和持续的耀斑质量精度的Gong中重建HMI Sunspot矢量场特征。我们在2003年万圣节风暴期间重建矢量场特征,为此,只有LOS场观测值可供选择,并且CNN估计的电流螺旋准确地捕获了在极端发炎之前观察到的相关太阳点的旋转,显示出惊人的增加。因此,我们的研究为从过去的LOS测量值中重建了价值的三个太阳能循环铺平了道路,这在改善太空天气预测模型并获得了有关太阳能活动的新见解方面非常有用。
Solar magnetic activity produces extreme solar flares and coronal mass ejections, which pose grave threats to electronic infrastructure and can significantly disrupt economic activity. It is therefore important to appreciate the triggers of explosive solar activity and develop reliable space-weather forecasting. Photospheric vector-magnetic-field data capture sunspot magnetic-field complexity and can therefore improve the quality of space-weather prediction. However, state-of-the-art vector-field observations are consistently only available from Solar Dynamics Observatory/Helioseismic and Magnetic Imager (SDO/HMI) since 2010, with most other current and past missions and observational facilities such as Global Oscillations Network Group (GONG) only recording line-of-sight (LOS) fields. Here, using an inception-based convolutional neural network, we reconstruct HMI sunspot vector-field features from LOS magnetograms of HMI as well as GONG with high fidelity (~ 90% correlation) and sustained flare-forecasting accuracy. We rebuild vector-field features during the 2003 Halloween storms, for which only LOS-field observations are available, and the CNN-estimated electric-current-helicity accurately captures the observed rotation of the associated sunspot prior to the extreme flares, showing a striking increase. Our study thus paves the way for reconstructing three solar cycles worth of vector-field data from past LOS measurements, which are of great utility in improving space-weather forecasting models and gaining new insights about solar activity.