论文标题

机器学习和计算机视觉方法,以预测地磁风暴

A Machine Learning and Computer Vision Approach to Geomagnetic Storm Forecasting

论文作者

Domico, Kyle, Sheatsley, Ryan, Beugin, Yohan, Burke, Quinn, McDaniel, Patrick

论文摘要

地磁风暴,是由太阳散发出的大量带电颗粒引起的地球磁层的干扰,是对现代技术的不可控制的威胁。值得注意的是,它们有可能损坏卫星,并在地球上以及其他灾难中引起不稳定。它们是由高太阳活性引起的,这些活动是由被称为黑子的阳光区域引起的。预测暴风雨以防止灾难,需要了解如何以及何时发生。但是,国家海洋和大气管理局(NOAA)的当前预测方法受到限制,因为它们依赖于昂贵的太阳能航天器和全球规模的磁力计传感器网络。在本文中,我们介绍了一种新颖的机器学习和计算机视觉方法,以准确预测地磁风暴,而无需进行这种昂贵的物理测量。我们的方法从太阳图像中提取特征,以在黑子和地磁风暴分类之间建立相关性,并且具有NOAA的预测具有竞争力。确实,我们的预测达到了76%的风暴分类精度。本文是一种存在证据,证明机器学习和计算机视觉技术为增强和改善现有的地磁风暴预测方法提供了有效的手段。

Geomagnetic storms, disturbances of Earth's magnetosphere caused by masses of charged particles being emitted from the Sun, are an uncontrollable threat to modern technology. Notably, they have the potential to damage satellites and cause instability in power grids on Earth, among other disasters. They result from high sun activity, which are induced from cool areas on the Sun known as sunspots. Forecasting the storms to prevent disasters requires an understanding of how and when they will occur. However, current prediction methods at the National Oceanic and Atmospheric Administration (NOAA) are limited in that they depend on expensive solar wind spacecraft and a global-scale magnetometer sensor network. In this paper, we introduce a novel machine learning and computer vision approach to accurately forecast geomagnetic storms without the need of such costly physical measurements. Our approach extracts features from images of the Sun to establish correlations between sunspots and geomagnetic storm classification and is competitive with NOAA's predictions. Indeed, our prediction achieves a 76% storm classification accuracy. This paper serves as an existence proof that machine learning and computer vision techniques provide an effective means for augmenting and improving existing geomagnetic storm forecasting methods.

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