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强鲁棒高速闪电哨声波自动检测模型

银韩柯 袁静 赵庶凡 申旭辉 靳晓媛 王桥 廖力 杨德贺

银韩柯, 袁静, 赵庶凡, 申旭辉, 靳晓媛, 王桥, 廖力, 杨德贺. 强鲁棒高速闪电哨声波自动检测模型[J]. 空间科学学报. doi: 10.11728/cjss2025.05.2024-0132
引用本文: 银韩柯, 袁静, 赵庶凡, 申旭辉, 靳晓媛, 王桥, 廖力, 杨德贺. 强鲁棒高速闪电哨声波自动检测模型[J]. 空间科学学报. doi: 10.11728/cjss2025.05.2024-0132
YIN Hanke, YUAN Jing, ZHAO Shufan, SHEN Xuhui, JIN Xiaoyuan, WANG Qiao, LIAO Li, YANG Dehe. A Robust and High-Speed Automated Detection Model for Lightning Whistler (in Chinese). Chinese Journal of Space Science, 2025, 45(5): 1-14 doi: 10.11728/cjss2025.05.2024-0132
Citation: YIN Hanke, YUAN Jing, ZHAO Shufan, SHEN Xuhui, JIN Xiaoyuan, WANG Qiao, LIAO Li, YANG Dehe. A Robust and High-Speed Automated Detection Model for Lightning Whistler (in Chinese). Chinese Journal of Space Science, 2025, 45(5): 1-14 doi: 10.11728/cjss2025.05.2024-0132

强鲁棒高速闪电哨声波自动检测模型

doi: 10.11728/cjss2025.05.2024-0132 cstr: 32142.14.cjss.2024-0132
基金项目: 河北省教育厅科学研究项目(ZC2024028)和民用航天技术预先研究项目(D040203)共同资助
详细信息
    作者简介:
    • 银韩柯 男 2000年11月出生, 现为防灾科技学院在读研究生, 主要研究方向为机器学习、计算机视觉. E-mail: hankeyin@gmail.com
    通讯作者:
    • 赵庶凡 女 1985年出生, 现为中国科学院国家空间科学中心研究员, 博士生导师, 主要研究方向为地震电离层耦合机理及电波传播. E-mail: zsf2008bj@126.com
  • 中图分类号: P352

A Robust and High-Speed Automated Detection Model for Lightning Whistler

  • 摘要: 张衡一号卫星在轨6年积累了海量观测数据, 检测其中的闪电哨声波事件(Lightning Whistler, LW)对于分析空间物理环境规律具有重要意义. 但现有基于时频图像的方法推理速度过慢, 完成任务需约40年. 为此, 研究首次从音频事件检测的角度提出高速的闪电哨声波检测模型WhisNet, 将检测的时间成本从40年压缩至54天. 方法为以4s滑动窗截取波形, 提取梅尔频谱特征, 利用轻量级卷积循环神经网络(CRNN)提取音频事件特征, 输出层预测LW事件起始时间和持续时长. 基于2020年4月1日至10日的感应磁力仪(SCM)数据实验显示, WhisNet检测性能与传统方法相当, 但计算量和参数量减少99%, 速度提升98%. 进一步在2020年5月SCM数据上的应用结果与WCLG(全球闪电气候学和时间序列, WWLLN Global Lightning Climatology and time series )全球闪电密度趋势高度一致, 验证了WhisNet在大规模卫星数据处理中的准确性与适用性. 研究结果为挖掘其他海量地球空间事件提供了重要参考.

     

  • 图  1  WhisNet模型结构

    Figure  1.  Framework of the WhisNet model

    图  2  音频处理模块工作流程

    Figure  2.  Diagram of the audio processing module

    图  3  轻量化卷积层: (a)总体结构, (b)子模块Sandglass的结构细节, (c)各子模块图例

    Figure  3.  Lightweight convolutional layer. (a) Overall structure, (b) structural details of the submodule Sandglass, (c) legend for each submodule.

    图  4  循环网络层. (a)总结构, (b)单个GRU神经元结构, (c) BiGRU结构

    Figure  4.  Recurrent Network Layer. (a) General Structure, (b) Structure of a Single GRU Neuron, (c) BiGRU Structure

    图  5  输出层结构. $ F $(:,x)为输入的第x列特征

    Figure  5.  Output layer structure. F(:,x) denotes the x-th column feature of the input

    图  6  不同模型检测哨声波的效果. (a)原始波形与时频图, (b) WhisNet, (c) Mask RCNN, (d) Mask Scoring RCNN, (e) YOLOv5-Upgraded, (f) Yolov8s, (g) Yolov8m, (h) Yolov8l

    Figure  6.  Performance of different models in detecting whistlers. (a) Original image, (b) WhisNet, (c) Mask R-CNN, (d) Mask scoring R-CNN, (e) YOLOv5-Upgraded, (f) Yolov8s, (g) Yolov8m, (h) Yolov8l

    图  7  检测效果. (a)单条哨声波, (b)两条哨声波, (c) 三条哨声波, (d) 五条哨声波

    Figure  7.  Detection results. (a) Single whistler, (b) two whistlers, (c) three whistlers, (d) five whistlers

    图  8  模型实际应用情况. (a) WGLC在2020年5月份的平均闪电密度, (b) WhisNet模型自动检测张衡卫星LW的密度估计, (c) Kriging插值法

    Figure  8.  Practical Application. (a) Average lightning density in May 2020 recorded by WGLC, (b) density estimation of lightning whistlers from the Zhangheng Satellite LW detected automatically by WhisNet, (c) Kriging interpolation method

    图  9  各模块输出的特征. (a)音频处理模块, (b)轻量化卷积模块, (c)循环神经网络模块, (d)输出模块. 图中数字表示相应特征图的维度

    Figure  9.  Feature maps output by each module. (a) Audio processing module, (b) lightweight convolutional module, (c) recurrent neural network module, (d) output module. The numbers shown indicate the corresponding dimensions of the feature maps

    图  10  交叠的LW检测效果, 如红色框所示. 其余LW为正常情况

    Figure  10.  Overlapping LW detection results, as shown in the red box. The remaining LWs are in normal condition.

    表  1  模型超参数

    Table  1.   Hyperparameters of the model

    超参数
    损失函数Binary CrossEntropy Loss
    优化器Adam
    学习率0.001
    批大小128
    训练轮次50
    下载: 导出CSV

    表  2  模型性能评估

    Table  2.   Performance evaluation of the model

    Model Precision/(%) Recall/(%) F1/(%) FLOPS/GByte Params /MByte Cost time/h
    WhisNet 93.3 89.4 91.3 0.17 0.09 18.15
    Mask RCNN 85.1 95.2 89.8 144 44.32 842.16
    Mask Scoring RCNN 85.2 96.3 90.2 181 62.75 935.61
    YOLOv5 Upgraded 91.6 90.0 90.8 31.7 13.78 579.86
    Yolov8 s 91.3 90.1 90.6 28.6 11.2 574.43
    Yolov8 m 92.5 89.9 91.2 78.9 25.9 591.82
    Yolov8 l 94.0 88.8 91.3 165.2 43.7 622.61
      表中加粗的数字表示该指标下的最佳结果.
    下载: 导出CSV

    表  3  生成单个特征所需时间

    Table  3.   Time to generate a single feature

    特征名称Time/sSize/KByte
    Mel频谱0.00325
    时频图1.7165
    下载: 导出CSV
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  • 收稿日期:  2024-10-22
  • 修回日期:  2025-03-31
  • 网络出版日期:  2025-03-31

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