Articles | Volume 15, issue 4
https://doi.org/10.5194/gmd-15-1467-2022
https://doi.org/10.5194/gmd-15-1467-2022
Model description paper
 | 
18 Feb 2022
Model description paper |  | 18 Feb 2022

GAN–argcPredNet v1.0: a generative adversarial model for radar echo extrapolation based on convolutional recurrent units

Kun Zheng, Yan Liu, Jinbiao Zhang, Cong Luo, Siyu Tang, Huihua Ruan, Qiya Tan, Yunlei Yi, and Xiutao Ran

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Cited articles

Ayzel, G., Scheffer, T., and Heistermann, M.: RainNet v1.0: a convolutional neural network for radar-based precipitation nowcasting, Geosci. Model Dev., 13, 2631–2644, https://doi.org/10.5194/gmd-13-2631-2020, 2020. 
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Bihlo, A.: Precipitation nowcasting using a stochastic variational frame predictor with learned prior distribution, Computer Science, arXiv [preprint], arXiv:1905.05037, 2019. 
Chen, L., Cao, Y., Ma L., and Jun, Z.: A Deep Learning based Methodology for Precipitation Nowcasting With Radar, Earth Space Sci., 7, https://doi.org/10.1029/2019EA000812, 2020. 
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Short summary
In extrapolation methods, there is a phenomenon that causes the extrapolated image to be blurred and unrealistic. The paper proposes the GAN–argcPredNet v1.0 network model, which aims to solve this problem through GAN's ability to strengthen the characteristics of multi-modal data modeling. GAN–argcPredNet v1.0 has achieved excellent results. Our model can reduce the prediction loss in a small-scale space so that the prediction results have more detailed features.