利用深度学习预测地磁风暴扰动及其不确定性

IF 3.8 2区 地球科学 Q2 ASTRONOMY & ASTROPHYSICS Space Weather-The International Journal of Research and Applications Pub Date : 2023-11-01 DOI:10.1029/2023sw003474
D. Conde, F. L. Castillo, C. Escobar, C. García, J. E. García, V. Sanz, B. Zaldívar, J. J. Curto, S. Marsal, J. M. Torta
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引用次数: 0

摘要

太阳扰动条件产生的恶劣空间天气对空间和高纬度飞行中的人类以及航天器或通信等技术系统都造成有害影响。此外,地磁感应电流(gic)在长接地导体(如电网)上流动,可能会威胁到地球上的关键基础设施。开发针对gic的警报系统的第一步是预测它们。考虑到磁层对这些扰动的响应是高度非线性的,这是一项具有挑战性的任务。在过去的几年里,现代机器学习模型在预测地磁活动指数方面表现得非常出色。然而,这种复杂的模型一方面难以调整,另一方面,众所周知,它们可能带来很大的预测不确定性,这些不确定性通常难以估计。在这项工作中,我们的目标是利用来自太阳-地球L1拉格朗日点的公共行星际磁场(IMF)数据和SYM - H数据,提前数小时预测表征地磁风暴的SYM - H指数。我们实现了一种称为长短期记忆(LSTM)网络的机器学习模型。我们的范围是在预测SYM - H指数的背景下,估计来自深度学习模型的预测不确定性。这些不确定性对于设置可靠的警报阈值至关重要。由此产生的不确定性在地磁风暴的关键阶段是相当大的。我们的方法还包括LSTM网络重要超参数的有效优化和鲁棒性测试。
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Forecasting Geomagnetic Storm Disturbances and Their Uncertainties Using Deep Learning
Abstract Severe space weather produced by disturbed conditions on the Sun results in harmful effects both for humans in space and in high‐latitude flights, and for technological systems such as spacecraft or communications. Also, geomagnetically induced currents (GICs) flowing on long ground‐based conductors, such as power networks, potentially threaten critical infrastructures on Earth. The first step in developing an alarm system against GICs is to forecast them. This is a challenging task given the highly non‐linear dependencies of the response of the magnetosphere to these perturbations. In the last few years, modern machine‐learning models have shown to be very good at predicting magnetic activity indices. However, such complex models are on the one hand difficult to tune, and on the other hand they are known to bring along potentially large prediction uncertainties which are generally difficult to estimate. In this work we aim at predicting the SYM‐H index characterizing geomagnetic storms multiple‐hour ahead, using public interplanetary magnetic field (IMF) data from the Sun‐Earth L1 Lagrange point and SYM‐H data. We implement a type of machine‐learning model called long short‐term memory (LSTM) network. Our scope is to estimate the prediction uncertainties coming from a deep‐learning model in the context of forecasting the SYM‐H index. These uncertainties will be essential to set reliable alarm thresholds. The resulting uncertainties turn out to be sizable at the critical stages of the geomagnetic storms. Our methodology includes as well an efficient optimization of important hyper‐parameters of the LSTM network and robustness tests.
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来源期刊
CiteScore
5.90
自引率
29.70%
发文量
166
审稿时长
>12 weeks
期刊介绍: Space Weather: The International Journal of Research and Applications (SWE) is devoted to understanding and forecasting space weather. The scope of understanding and forecasting includes: origins, propagation and interactions of solar-produced processes within geospace; interactions in Earth’s space-atmosphere interface region produced by disturbances from above and below; influences of cosmic rays on humans, hardware, and signals; and comparisons of these types of interactions and influences with the atmospheres of neighboring planets and Earth’s moon. Manuscripts should emphasize impacts on technical systems including telecommunications, transportation, electric power, satellite navigation, avionics/spacecraft design and operations, human spaceflight, and other systems. Manuscripts that describe models or space environment climatology should clearly state how the results can be applied.
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