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Forecasting the Geomagnetic Activity Several Days in Advance Using Neural Networks Driven by Solar EUV Imaging

机译:Forecasting the Geomagnetic Activity Several Days in Advance Using Neural Networks Driven by Solar EUV Imaging

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摘要

Many models of the near-Earth's space environment (radiation belts, ionosphere, upper atmosphere, etc.) are driven by geomagnetic indices, representing the state of disturbance of the Earth's magnetosphere. Over the past decade, machine learning-based methods for forecasting geomagnetic indices from near-Earth solar wind parameters have become popular in the space weather community. These methods often prove to be very accurate and skilled. However, these approaches have the notable drawback of being effective in an operational context only for limited forecasting horizons (often up to a couple of hours ahead at best). In order to increase this prediction horizon, we introduce SERENADE, a novel deep learning-based proof-of-concept model using images delivered by the Atmospheric Imaging Assembly instrument onboard the Solar Dynamics Observatory spacecraft to directly provide probabilistic forecasts of the daily maximum of the geomagnetic index Kp up to a few days ahead. We show in particular that SERENADE is able to capture information on the geomagnetic dynamics from solar imaging alone. In addition, despite it being a prototypical model, our model is more accurate in most situations than three empirical baseline models. However, the model still shows some strong limitations inherent to its structure and the used data set, which could be the focus of future works. This opens the way to a better mid-to-long term data-driven magnetospheric modeling within space weather and geophysical pipelines.
机译:许多模型的近地空间环境(辐射带、电离层、高层大气,等)是由地磁指数,代表国家的干扰地球的磁气圈。基于机器学习的方法来预测从近地太阳风地磁指数参数在空间已经成为流行天气社区。非常准确和熟练。的方法有明显的缺点只有有效的操作上下文预测的视野有限(通常是一个几个小时前在最好的情况下)。增加这个预测地平线,我们介绍小夜曲,小说上优于深处使用图像由概念模型大气成像组装的工具太阳动力学观测卫星上飞船直接提供概率的预测地磁指数Kp的每日最大提前几天。小夜曲能够捕捉信息地磁动力学从太阳能单独成像。此外,尽管它是一个典型的模型,在大多数情况下我们的模型更准确比三个实证基线模型。模型还显示了一些强有力的限制固有的结构和使用的数据集,这可能是未来工作的重点。打开方式更好的中长期的术语在空间数据驱动磁性层的建模天气和地球物理管道。

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