IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing (Jan 2023)

Toward a Deep-Learning-Network-Based Convective Weather Initiation Algorithm From the Joint Observations of Fengyun-4A Geostationary Satellite and Radar for 0–1h Nowcasting

  • Fenglin Sun,
  • Bo Li,
  • Min Min,
  • Danyu Qin

DOI
https://doi.org/10.1109/JSTARS.2023.3262557
Journal volume & issue
Vol. 16
pp. 3455 – 3468

Abstract

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Nowcasting of convective weather is a challenging and significant task in operational weather forecasting system. In this article, a new convolution recurrent neural network based regression network for convective weather prediction is proposed, which is named as the convective weather nowcasting net (CWNNet). The CWNNet adopts the joint observations of Fengyun-4A geostationary (GEO) satellite and the ground-based Doppler weather radar data of the last 0–1-h as the inputs of the model to predict the radar reflectivity factor maps of next 0–1 h. The statistical validating results clearly demonstrate that the mean values of the probability of detection, false alarm ratio, threat score, root mean square error and mean absolute error evaluating the performance of CWNNet for 1-h nowcasting reach 0.87, 0.137, 0.71, 3.365 dBZ and 1.038 dBZ, respectively. Due to that the GEO meteorological satellite is capable of capturing the features of convective initiation (CI), the CWNNet shows a good performance in CI nowcasting. Besides, several case studies also further indicate that the CWNNet can predict CI more than 30 min in advance by monitoring the convective clouds. The CWNNet based on the joint satellite and radar data shows a better nowcasting performance than that only employing single data source. Thus, it can effectively produce more reliable nowcasting for convective weather events.

Keywords