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基于生成对抗网络和卫星数据的云图临近预报

肖海霞, 张峰, 王亚强, 等. 基于生成对抗网络和卫星数据的云图临近预报. 应用气象学报, 2023, 34(2): 220-233. DOI: 10.11898/1001-7313.20230208..
引用本文: 肖海霞, 张峰, 王亚强, 等. 基于生成对抗网络和卫星数据的云图临近预报. 应用气象学报, 2023, 34(2): 220-233. DOI: 10.11898/1001-7313.20230208.
Xiao Haixia, Zhang Feng, Wang Yaqiang, et al. Nowcasting of cloud images based on generative adversarial network and satellite data. J Appl Meteor Sci, 2023, 34(2): 220-233. DOI:  10.11898/1001-7313.20230208.
Citation: Xiao Haixia, Zhang Feng, Wang Yaqiang, et al. Nowcasting of cloud images based on generative adversarial network and satellite data. J Appl Meteor Sci, 2023, 34(2): 220-233. DOI:  10.11898/1001-7313.20230208.

基于生成对抗网络和卫星数据的云图临近预报

DOI: 10.11898/1001-7313.20230208
详细信息
    通信作者:

    王亚强,yqwang@cma.gov.cn

Nowcasting of Cloud Images Based on Generative Adversarial Network and Satellite Data

  • 摘要: 利用风云四号气象卫星A星(FY-4A)红外云图,基于生成对抗网络方法,提出了红外云图外推预报模型,实现了华东区域未来3 h的云图预报,预报的时空分辨率分别为1 h和4 km。结果表明:该外推模型预报的云图可较好描述云团移动、发展和减弱趋势,对研究区域内云团的强度、位置和形态得到较为理想的预报效果。为了验证提出的云图外推模型的有效性,将其与光流法和轨迹门控循环单元模型进行比较。对比试验结果表明:该云图外推模型具有最优的预报效果,说明使用生成对抗网络进行云图外推具有较好的可行性,能有效应用于气象业务中监测云团的生消和移动并提前预警灾害性天气的发生,为天气预报提供重要的参考依据。
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出版历程
  • 收稿日期:  2022-10-01
  • 修回日期:  2022-12-15
  • 网络出版日期:  2023-03-02

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