Radar Echo Spatiotemporal Sequence Prediction Using an Improved ConvGRU Deep Learning Model

Author:

He Wei,Xiong Taisong,Wang HaoORCID,He Jianxin,Ren Xinyue,Yan Yilin,Tan Linyin

Abstract

Precipitation nowcasting is extremely important in disaster prevention and mitigation, and can improve the quality of meteorological forecasts. In recent years, deep learning-based spatiotemporal sequence prediction models have been widely used in precipitation nowcasting, obtaining better prediction results than numerical weather prediction models and traditional radar echo extrapolation results. Because existing deep learning models rarely consider the inherent interactions between the model input data and the previous output, model prediction results do not sufficiently meet the actual forecast requirement. We propose a Modified Convolutional Gated Recurrent Unit (M-ConvGRU) model that performs convolution operations on the input data and previous output of a GRU network. Moreover, this adopts an encoder–forecaster structure to better capture the characteristics of spatiotemporal correlation in radar echo maps. The results of multiple experiments demonstrate the effectiveness of the proposed model. The balanced mean absolute error (B-MAE) and balanced mean squared error (B-MSE) of M-ConvGRU are slightly lower than Convolutional Long Short-Term Memory (ConvLSTM), but the mean absolute error (MAE) and mean squared error (MSE) of M-ConvGRU are 6.29% and 10.25% lower than ConvLSTM, and the prediction accuracy and prediction performance for strong echo regions were also improved.

Funder

the National Key R&D Program of China

Publisher

MDPI AG

Subject

Atmospheric Science,Environmental Science (miscellaneous)

Reference42 articles.

1. Use of NWP for nowcasting convective precipitation: Recent progress and challenges;Juan;Bull. Am. Meteorol. Soc.,2014

2. The present situation and prospect of operational model of numerical weather forecast;Chen;J. Meteorol.,2004

3. Experiences with 0–36-h explicit convective forecasts with the WRF-ARW model;Morris;Weather Forecast.,2008

4. Nowcasting multicell short-term intense precipitation using graph models and random forests;Cong;Mon. Weather Rev.,2020

5. Nowcasting of hailstorms simulated by the NWP model COSMO for the area of the Czech Republic;Zbyněk;Atmos. Res.,2016

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