Automatic Detection and Classification of Spread‐F From Ionosonde at Hainan With Image‐Based Deep Learning Method

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:10.1029/2023sw003498
Zheng Wang, Meiyi Zhan, Pengdong Gao, Guojun Wang, Chu Qiu, Quan Qi, Jiankui Shi, Xiao Wang
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Abstract

Abstract An intelligent Spread‐F image detection and classification method is presented in this paper based on an ionogram image set using deep learning models. The ionogram images from the Hainan station, spanning from 2002 to 2015, have been manually labeled into five categories, resulting in a unique ionogram image set for supervised learning models. To balance the number of different types, simulated noises were added to these images. Based on 80,000 samples with Spread‐F and 20,000 samples without, numerous experiments have been conducted to train VGG, ResNet, EfficientNet, ViT, MobileNet, and other networks. The results on the test set indicate that these models except VGG have a good ability of exacting features of different types, leading to a high level of accuracy in detecting Spread‐F and a relatively accurate classification of it. The ionogram images in 2016 are then employed as another test set to further examine the performance of the trained models. Both quantitative and qualitative analyses have demonstrated the results obtained by deep learning models are highly consistent with manual identification.
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基于图像深度学习的海南电离探空仪扩散F自动检测与分类
摘要提出了一种基于离子图图像集的基于深度学习模型的智能Spread - F图像检测与分类方法。海南台站2002年至2015年的离子图图像被人工标记为五类,形成了一个独特的离子图图像集,用于监督学习模型。为了平衡不同类型的数量,模拟噪声被添加到这些图像中。基于8万个带有Spread‐F的样本和2万个没有Spread‐F的样本,我们进行了大量的实验来训练VGG、ResNet、EfficientNet、ViT、MobileNet和其他网络。在测试集上的结果表明,除VGG外,这些模型对不同类型的特征都具有较好的精确提取能力,从而对Spread‐F的检测具有较高的准确性,对其进行了相对准确的分类。然后将2016年的离子图图像用作另一个测试集,以进一步检查训练模型的性能。定量和定性分析都表明,深度学习模型获得的结果与人工识别高度一致。
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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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