论文标题
使用机器学习来预测CME的地理位置
Predicting the Geoeffectiveness of CMEs Using Machine Learning
论文作者
论文摘要
冠状质量弹出(CME)是最地理化的空间天气现象,与大型地磁风暴有关,有可能引起电信,卫星网络中断,电网损害和故障的干扰。因此,考虑到这些风暴对人类活动的潜在影响,对CME的地理表现的准确预测至关重要。这项工作着重于在接近太阳CME的白光冠状数据集中训练的不同机器学习方法,以估计这种新爆发的弹出是否有可能诱导地磁活动。我们使用逻辑回归,k-nearest邻居,支持向量机,向前的人工神经网络以及集成模型开发了二进制分类模型。目前,我们限制了我们的预测专门使用太阳能发作参数,以确保延长警告时间。我们讨论了这项任务的主要挑战,即我们数据集中的地理填充和无效事件的数量以及它们的众多相似之处以及可用变量数量有限的极端失衡。我们表明,即使在这种情况下,这些模型也可以达到足够的命中率。
Coronal mass ejections (CMEs) are the most geoeffective space weather phenomena, being associated with large geomagnetic storms, having the potential to cause disturbances to telecommunication, satellite network disruptions, power grid damages and failures. Thus, considering these storms' potential effects on human activities, accurate forecasts of the geoeffectiveness of CMEs are paramount. This work focuses on experimenting with different machine learning methods trained on white-light coronagraph datasets of close to sun CMEs, to estimate whether such a newly erupting ejection has the potential to induce geomagnetic activity. We developed binary classification models using logistic regression, K-Nearest Neighbors, Support Vector Machines, feed forward artificial neural networks, as well as ensemble models. At this time, we limited our forecast to exclusively use solar onset parameters, to ensure extended warning times. We discuss the main challenges of this task, namely the extreme imbalance between the number of geoeffective and ineffective events in our dataset, along with their numerous similarities and the limited number of available variables. We show that even in such conditions, adequate hit rates can be achieved with these models.