首页> 外文期刊>Journal of Geophysical Research, A. Space Physics: JGR >The Application of a Deep Convolutional Generative Adversarial Network on Completing Global TEC Maps
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The Application of a Deep Convolutional Generative Adversarial Network on Completing Global TEC Maps

机译:深卷积生成的应用程序对抗网络完成全球TEC的地图

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Total electron content (TEC) map is one of the important ionospheric parameters. The International Global Navigation Satellite System Service (Ionosphere Working Group) provides the combined vertical TEC maps. However, the postprocessing of the IGS TEC maps may cost quite a long time, and it's not easy for the organization to collect the complete data. It is necessary for researchers to figure out a method to complete the global TEC maps efficiently with regard to the problems of lack of data or not available to the standard IGS TEC. With the rapid development of the deep learning methods, the Deep Convolutional Generative Adversarial Network exhibits the great potential in computer vision. In this paper, we propose a new method called Global and Local GAN (GLGAN) based on the DCGAN and apply it on completing the global TEC maps. Different from the traditional GAN, the GLGAN consists of a generator (or called completion network) and two discriminators. The completion network is powerful enough to Extract features of IGS TEC maps to complete the TEC maps. The design of two discriminators enhances the ability of judging the quality of output images, and improves the accuracy of the completion network. After analyzing the results, we find the GLGAN have a better performance in complicate structures during geomagnetic storm time. The success of the GLGAN in completing the TEC maps suggests that the deep learning methods are able to solve many problems regarding to data and images in ionospheric parameters' reconstruction or forecasting.
机译:总电子含量(TEC)地图是其中一个重要的电离层参数。国际全球导航卫星系统(电离层工作组)提供服务结合垂直TEC的地图。后处理的IGS TEC地图可能成本相当很长一段时间,它是不容易的组织收集完整的数据。研究人员必须找出一种方法完成全球TEC地图有效对缺乏数据的问题IGS TEC可用标准。深度学习方法的发展,深卷积生成对抗的网络在计算机视觉展现了巨大的潜力。在本文中,我们提出一个新方法全球和本地GAN (GLGAN)基于DCGAN并将其应用在完成全球TEC的地图。从传统的氮化镓,GLGAN不同由发电机(或称为完成网络)和两个鉴别器。网络是强大到足以提取的特征IGS TEC地图完成TEC的地图。两个鉴别器提高的能力判断输出图像的质量提高完成网络的准确性。分析结果后,我们发现GLGAN有一个更好的性能在复杂吗结构在磁暴期间。成功完成TEC GLGAN的地图表明,深度学习的方法关于数据和解决许多问题电离层参数的图像重建或预测。

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