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利用改进的GoogLeNet深度学习模型识别COSMIC-2掩星信号中的反射信号

罗文杰 项杰 杜华栋

罗文杰, 项杰, 杜华栋. 2023. 利用改进的GoogLeNet深度学习模型识别COSMIC-2掩星信号中的反射信号[J]. 大气科学, 47(3): 631−641 doi: 10.3878/j.issn.1006-9895.2202.21096
引用本文: 罗文杰, 项杰, 杜华栋. 2023. 利用改进的GoogLeNet深度学习模型识别COSMIC-2掩星信号中的反射信号[J]. 大气科学, 47(3): 631−641 doi: 10.3878/j.issn.1006-9895.2202.21096
LUO Wenjie, XIANG Jie, DU Huadong. 2023. Identification of the Reflected Signal in the COSMIC-2 Occultation Signal Using the Improved GoogLeNet Deep Learning Model [J]. Chinese Journal of Atmospheric Sciences (in Chinese), 47(3): 631−641 doi: 10.3878/j.issn.1006-9895.2202.21096
Citation: LUO Wenjie, XIANG Jie, DU Huadong. 2023. Identification of the Reflected Signal in the COSMIC-2 Occultation Signal Using the Improved GoogLeNet Deep Learning Model [J]. Chinese Journal of Atmospheric Sciences (in Chinese), 47(3): 631−641 doi: 10.3878/j.issn.1006-9895.2202.21096

利用改进的GoogLeNet深度学习模型识别COSMIC-2掩星信号中的反射信号

doi: 10.3878/j.issn.1006-9895.2202.21096
基金项目: 国家自然科学基金项目41475021
详细信息
    作者简介:

    罗文杰,男,1997年出生,硕士研究生,研究方向是人工智能方法在卫星遥感中的应用。E-mail: 835321654@qq.com

    通讯作者:

    项杰,E-mail: xjieah@aliyun.com

  • 中图分类号: P412

Identification of the Reflected Signal in the COSMIC-2 Occultation Signal Using the Improved GoogLeNet Deep Learning Model

Funds: National Natural Science Foundation of China (Grant 41475021)
  • 摘要: GPS(Global Positioning System)掩星探测技术作为一种先进的大气探测手段,已广泛用于数值天气预报、气候和空间天气研究。掩星探测存在的问题之一是容易受到地球表面反射信号的干扰,识别和分离掩星探测信号中的反射信号有助于将掩星数据同化到数值天气预报系统中去,具有重要意义。本文提出一种基于改进的GoogLeNet深度学习模型(Im-GNet),并应用于COSMIC-2掩星探测数据来识别反射信号。本文选择了2020年1月1~9日的COSMIC-2掩星数据(conPhs文件),进行质量控制后,利用无线电全息方法得到掩星信号的无线电全息功率谱密度图像,然后训练得到Im-GNet深度学习模型,Im-GNet模型测试的准确率达到了96.4%,显著高于支持向量机(SVM)方法的结果。本文还分析了反射信号对掩星数据的影响,掩星事件的地理分布以及掩星反演数据(atmPrf文件)与NCEP再分析资料的12 h预报值(avnPrf文件)的折射率比较表明:有反射信号的掩星事件数据质量更好,所包含的大气信息更丰富。
  • 图  1  GPS掩星探测示意图

    Figure  1.  Schematic diagram of GPS occultation detection

    图  2  一次COSMIC-2掩星事件[(1.75°N,54.02°E),掩星编号为C2E1.2020.001.03.50.G19]的(a)L1波段(1.57542 GHz)信号、(b)L2波段(1.22760 GHz)信号的时间—频率域空间谱,(c)L1波段信号、(d)L2波段信号的影响高度—弯角域空间谱

    Figure  2.  Spatial spectrums of time–frequency domain for the (a) L1 wave band (1.57542 GHz) and (b) L2 wave band (1.22760 GHz) signals, spatial spectrums of height–bending angle domain for the (c) L1 wave band and (d) L2 wave band signals in a COSMIC-2 occultation event [(1.75°N, 54.02°E), occultation ID is C2E1.2020.001.03.50.G19]

    图  3  COSMIC-2掩星L1波段信号局地空间谱:(a)清晰的反射信号;(b)模糊的反射信号;(c)无反射信号

    Figure  3.  Local spatial spectrum of L1 wave band signal for COSMIC-2 occultation: (a) Clear reflection signal; (b) unclear reflection signal; (c) no-reflection signal

    图  4  Im-GNet(改进的GoogLeNet模型)网络结构

    Figure  4.  Im-GNet (improved GoogLenet model) network structure

    图  5  Im-GNet模型训练过程准确率和损失率的变化曲线

    Figure  5.  The change curves of accuracy and loss rate for training process of the Im-GNet model

    图  6  2020年1月1~9日的13307次COSMIC-2掩星事件的分布。蓝(红)色点代表有(无)反射信号

    Figure  6.  Distribution of 13307 COSMIC-2 occultation events from 1 January to 9 January 2020. Blue (red) dots represent clear reflection (no-reflection) signals

    图  7  COSMIC-2掩星事件与NCEP再分析资料的折射率廓线的误差均值和标准差:(a)有清晰反射信号;(b)有模糊反射信号;(c)没有反射信号。黑色曲线代表误差均值,黑色水平线段代表标准差,蓝色曲线代表掩星事件的数量

    Figure  7.  Mean error and standard deviation of the refractive index profile between COSMIC-2 occultation events and NCEP reanalysis data: (a) Clear reflection signals; (b) unclear reflection signals; (c) no-reflection signals. The black curve represents the mean error, the black horizontal line represents the standard deviation, and the blue curve represents the number of occultation events

    表  1  试验计算机的软、硬件配置

    Table  1.   Configuration for hardware and software

    项目配置
    硬件内存(RAM) :16 G;
    处理器:Inter(R) Core(TM)i7-9850H CPU
    操作系统Windows 10专业版
    计算机语言Python 3.7.0
    机器学习框架/工具GoogLeNet:Tensorflow 2.1.0
    SVM:Scikit-learn 0.18.1
    下载: 导出CSV

    表  2  三种模型的测试结果

    Table  2.   Test results for the three models

    模型模块/核函数准确率运算时间/s
    Im-GNetInception(3a、3b、4a)96.4%12423
    Li-SVM线性核函数80.9%2053
    Ga-SVM高斯核函数73.8%2804
    下载: 导出CSV
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出版历程
  • 收稿日期:  2021-06-08
  • 录用日期:  2022-03-21
  • 网络出版日期:  2022-03-12
  • 刊出日期:  2023-05-15

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