预测地球辐射带动力学的一种实用方法

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
G. Bernoux, A. Brunet, É. Buchlin, M. Janvier, A. Sicard
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引用次数: 3

摘要

Ca指数是一个时间积分地磁指数,与外辐射带高能电子通量的动力学密切相关。因此,Ca可以用作这些电子的辐射带的填充状态的指示器。Ca还有一个优点,那就是它是一种具有大量历史记录的地基测量。在这项工作中,我们提出了一个数据驱动的模型,根据近地太阳风参数提前24小时预测Ca。我们的模型主要依赖于一种名为长短期记忆的递归神经网络架构,该架构在以前的论文中在预测其他地磁指标方面表现出良好的性能。本研究中的大多数实施选择都是从空间系统操作员的角度进行仲裁的,包括数据选择和分割、二元分类阈值的定义和评估方法。我们使用经典和新颖的(在空间天气领域)测量来评估我们的模型(相对于线性基线)。特别地,我们使用时间失真混合(TDM)来评估两个时间序列表现出时间滞后的倾向。我们还评估了我们的模型在平静时期检测风暴爆发的能力。结果表明,我们的模型具有较高的总体准确性,评估指标随着时间的推移呈平稳缓慢的趋势恶化。然而,使用TDM和二元分类预测评估指标,我们表明,即使在短于6小时的时间范围内,预测在操作环境中也会失去一些有用性。当仅使用均方根误差或Pearson线性相关性等指标评估模型时,这种行为是不可观察到的。考虑到问题的物理性质,这一结果并不令人惊讶,并表明使用更多空间遥感数据(如太阳成像)可以改善空间天气预报。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An operational approach to forecast the Earth’s radiation belts dynamics
The Ca  index is a time-integrated geomagnetic index that correlates well with the dynamics of high-energy electron fluxes in the outer radiation belts. Therefore Ca can be used as an indicator for the state of filling of the radiation belts for those electrons. Ca also has the advantage of being a ground-based measurement with extensive historical records. In this work, we propose a data-driven model to forecast Ca up to 24 hours in advance from near-Earth solar wind parameters. Our model relies mainly on a recurrent neural network architecture called Long Short Term Memory that has shown good performances in forecasting other geomagnetic indices in previous papers. Most implementation choices in this study were arbitrated from the point of view of a space system operator, including the data selection and split, the definition of a binary classification threshold, and the evaluation methodology. We evaluate our model (against a linear baseline) using both classical and novel (in the space weather field) measures. In particular, we use the Temporal Distortion Mix (TDM) to assess the propensity of two time series to exhibit time lags. We also evaluate the ability of our model to detect storm onsets during quiet periods. It is shown that our model has high overall accuracy, with evaluation measures deteriorating in a smooth and slow trend over time. However, using the TDM and binary classification forecast evaluation metrics, we show that the forecasts lose some of their usefulness in an operational context even for time horizons shorter than 6 hours. This behaviour was not observable when evaluating the model only with metrics such as the root-mean-square error or the Pearson linear correlation. Considering the physics of the problem, this result is not surprising and suggests that the use of more spatially remote data (such as solar imaging) could improve space weather forecasts.
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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
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