Deep Learning Applications in Ionospheric Modeling: Progress, Challenges, and Opportunities

被引:2
作者
Zhang, Renzhong [1 ]
Li, Haorui [1 ]
Shen, Yunxiao [1 ]
Yang, Jiayi [1 ]
Li, Wang [1 ,2 ]
Zhao, Dongsheng [3 ]
Hu, Andong [4 ]
机构
[1] Kunming Univ Sci & Technol, Fac Land Resource Engn, Kunming 650093, Peoples R China
[2] Yunnan Prov Key Lab Intelligent Monitoring Nat Res, Kunming 650093, Peoples R China
[3] China Univ Min & Technol, Sch Environm Sci & Spatial Informat, Xuzhou 221116, Peoples R China
[4] CU Boulder, Cooperat Inst Res Environm Sci CIRES, Boulder, CO 80309 USA
基金
中国国家自然科学基金;
关键词
ionospheric model; deep learning; space weather monitoring; natural disaster early warning; navigation and positioning; NEURAL-NETWORKS; REAL-TIME; DELAY CORRECTION; ELECTRON-CONTENT; PREDICTION; GPS; TEC; EARTHQUAKE; ALGORITHM;
D O I
10.3390/rs17010124
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
With the continuous advancement of deep learning algorithms and the rapid growth of computational resources, deep learning technology has undergone numerous milestone developments, evolving from simple BP neural networks into more complex and powerful network models such as CNNs, LSTMs, RNNs, and GANs. In recent years, the application of deep learning technology in ionospheric modeling has achieved breakthrough advancements, significantly impacting navigation, communication, and space weather forecasting. Nevertheless, due to limitations in observational networks and the dynamic complexity of the ionosphere, deep learning-based ionospheric models still face challenges in terms of accuracy, resolution, and interpretability. This paper systematically reviews the development of deep learning applications in ionospheric modeling, summarizing findings that demonstrate how integrating multi-source data and employing multi-model ensemble strategies has substantially improved the stability of spatiotemporal predictions, especially in handling complex space weather events. Additionally, this study explores the potential of deep learning in ionospheric modeling for the early warning of geological hazards such as earthquakes, volcanic eruptions, and tsunamis, offering new insights for constructing ionospheric-geological activity warning models. Looking ahead, research will focus on developing hybrid models that integrate physical modeling with deep learning, exploring adaptive learning algorithms and multi-modal data fusion techniques to enhance long-term predictive capabilities, particularly in addressing the impact of climate change on the ionosphere. Overall, deep learning provides a powerful tool for ionospheric modeling and indicates promising prospects for its application in early warning systems and future research.
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页数:24
相关论文
共 151 条
  • [11] The International Reference Ionosphere Model: A Review and Description of an Ionospheric Benchmark
    Bilitza, Dieter
    Pezzopane, Michael
    Truhlik, Vladimir
    Altadill, David
    Reinisch, Bodo W.
    Pignalberi, Alessio
    [J]. REVIEWS OF GEOPHYSICS, 2022, 60 (04)
  • [12] IRI the International Standard for the Ionosphere
    Bilitza, Dieter
    [J]. ADVANCES IN RADIO SCIENCE, 2018, 16 : 1 - 11
  • [13] Boulch A, 2018, Arxiv, DOI arXiv:1810.13273
  • [14] Identification of Surface Deformation in InSAR Using Machine Learning
    Brengman, Clayton M. J.
    Barnhart, William D.
    [J]. GEOCHEMISTRY GEOPHYSICS GEOSYSTEMS, 2021, 22 (03)
  • [15] Near-real-time detection of co-seismic ionospheric disturbances using machine learning
    Brissaud, Quentin
    Astafyeva, Elvira
    [J]. GEOPHYSICAL JOURNAL INTERNATIONAL, 2022, 230 (03) : 2117 - 2130
  • [16] Volcano-Seismic Transfer Learning and Uncertainty Quantification With Bayesian Neural Networks
    Bueno, Angel
    Benitez, Carmen
    De Angelis, Silvio
    Diaz Moreno, Alejandro
    Ibanez, Jesus M.
    [J]. IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 2020, 58 (02): : 892 - 902
  • [17] Ionospheric data assimilation three-dimensional (IDA3D): A global, multisensor, electron density specification algorithm
    Bust, GS
    Garner, TW
    Gaussiran, TL
    [J]. JOURNAL OF GEOPHYSICAL RESEARCH-SPACE PHYSICS, 2004, 109 (A11)
  • [18] In-depth comparison of deep artificial neural network architectures on seismic events classification
    Canario, Joao Paulo
    Mello, Rodrigo
    Curilem, Millaray
    Huenupan, Fernando
    Rios, Ricardo
    [J]. JOURNAL OF VOLCANOLOGY AND GEOTHERMAL RESEARCH, 2020, 401
  • [19] Cander LR, 1998, ANN GEOFIS, V41, P757
  • [20] Precise point positioning (PPP) based on the machine learning-based ionospheric tomography
    Chen, Pengxiang
    Zheng, Dunyong
    Nie, Wenfeng
    Ye, Fei
    Long, Sichun
    He, Changyong
    Liao, Mengguang
    Xie, Jian
    [J]. ADVANCES IN SPACE RESEARCH, 2024, 74 (10) : 4835 - 4848