Litcius/Paper detail

Radar-Based Precipitation Nowcasting Based on Improved U-Net Model

Youwei Tan, Ting Zhang, Leijing Li, Jianzhu Li

2024Remote Sensing16 citationsDOIOpen Access PDF

Abstract

Rainfall nowcasting is the basis of extreme rainfall monitoring, flood prevention, and water resource scheduling. Based on the structural features of the U-Net model, we proposed the Double Recurrent Residual Attention Gates U-Net (DR2A-UNet) deep-learning model to carry out radar echo extrapolation. The model was trained with mean square error (MSE) and balanced mean square error (BMSE) as loss functions, respectively. The dynamic Z-R relationship was applied for quantitative rainfall estimation. The reference U-Net model, U-Net++, and the ConvLSTM were used as control experiments to carry out radar echo extrapolation. The results showed that the model trained by BMSE had better extrapolation. For 1 h lead time, the rainfall nowcasted by each model could reflect the actual rainfall process. DR2A-UNet performed significantly better than other models for intense rainfall, with a higher extrapolation accuracy for echo intensity and variability processes. At the 2 h lead time, the nowcast accuracy of each model was significantly reduced, but the echo extrapolation and rainfall nowcasting of DR2A-UNet were better.

Topics & Concepts

NowcastingRemote sensingPrecipitationRadarNet (polyhedron)MeteorologyEnvironmental scienceClimatologyComputer scienceGeologyGeographyTelecommunicationsMathematicsGeometryPrecipitation Measurement and AnalysisMeteorological Phenomena and SimulationsFlood Risk Assessment and Management
Radar-Based Precipitation Nowcasting Based on Improved U-Net Model | Litcius