基于深度学习方法从 IRI-2020 模型重建全球电离层 TEC 地图

IF 3.9 2区 地球科学 Q1 GEOCHEMISTRY & GEOPHYSICS
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引用次数: 0

摘要

摘要 根据电离层模型计算的总电子含量(TEC)是描述电离层形态结构的一个广泛使用的参数。与全球导航卫星系统(GNSS)的双频测量结果相比,国际参考电离层(IRI)模型等经验模型计算出的全球总电子含量图精度有限。我们开发了一种基于深度学习方法的重构 IRI TEC 模型,用于生成高精度的全球 TEC 地图。为此,我们从 IRI-2020 模型和全球电离层地图(GIM)模型中收集了 48204 对全球 TEC 地图,时间分辨率为 2 小时,时间跨度从 2009 年到 2019 年,覆盖整个太阳周期 24。我们还引入了每日太阳射电通量(F10.7)、太阳黑子数(SSN)、Dst 和 Kp 指数作为训练模型的输入特征。我们研究了重构 TEC 模型输入参数的最佳组合,并比较了模型在太阳活动水平较高和较低年份的性能。结果表明,使用 F10.7 和 Kp 特征重建的 TEC 模型比考虑所有太阳和地磁指数的模型性能更好。与 IRI-2020 模型相比,我们的模型预测的全球 TEC 图与 GIM 模型的相应 TEC 图更加一致。特别是,重建的 TEC 模型很好地预测了大尺度赤道电离层异常峰和 TEC 的明显增强。从统计指标来看,与IRI-2020模型相比,重构TEC模型在太阳活动旺盛的2015年准确率提高了40.8%,在太阳活动低迷的2018年准确率提高了43.0%。重建的 TEC 模型在风暴期间的预测性能也显示出更好的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reconstruction of global ionospheric TEC maps from IRI-2020 model based on deep learning method

Abstract

The Total Electron Content (TEC) computed from ionospheric models is a widely used parameter for characterizing the morphological structure of the ionosphere. The global TEC maps from empirical models, like the International Reference Ionosphere (IRI) model, have limited accuracy compared to those calculated by dual-frequency measurements from the global navigation satellite systems (GNSS). We have developed a reconstructed IRI TEC model for generating high-precision global TEC maps based on a deep learning method. For this, we have collected 48,204 pairs of global TEC maps from the IRI-2020 model and Global Ionosphere Maps (GIM) model with 2-h time resolution from 2009 to 2019 covering the whole solar cycle 24. The daily solar radio flux (F10.7), sunspot number (SSN), Dst, and Kp indices are also introduced as input features to train the model. We have investigated the optimum combination of the input parameters for the reconstructed TEC model and compared the performance of the model during the years with high and low solar activity levels. Results show that the reconstructed TEC model with F10.7 and Kp features has a better performance compared to that considering all solar and geomagnetic indices. The global TEC maps predicted from our model are much more consistent with the corresponding TEC maps from the GIM model than those from the IRI-2020 model. Especially, the large-scale equatorial ionospheric anomaly (EIA) crests and the pronounced enhancement of TEC are well predicted by the reconstructed TEC model. From statistical metrics, the accuracy of the reconstructed TEC model increased by 40.8% during the high solar activity year 2015 and 43.0% during the low solar activity year 2018 compared with the IRI-2020 model. The prediction performance of the reconstructed TEC model also shows better accuracy during the storm periods.

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来源期刊
Journal of Geodesy
Journal of Geodesy 地学-地球化学与地球物理
CiteScore
8.60
自引率
9.10%
发文量
85
审稿时长
9 months
期刊介绍: The Journal of Geodesy is an international journal concerned with the study of scientific problems of geodesy and related interdisciplinary sciences. Peer-reviewed papers are published on theoretical or modeling studies, and on results of experiments and interpretations. Besides original research papers, the journal includes commissioned review papers on topical subjects and special issues arising from chosen scientific symposia or workshops. The journal covers the whole range of geodetic science and reports on theoretical and applied studies in research areas such as: -Positioning -Reference frame -Geodetic networks -Modeling and quality control -Space geodesy -Remote sensing -Gravity fields -Geodynamics
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