Japan Geoscience Union Meeting 2025

Presentation information

[E] Oral

A (Atmospheric and Hydrospheric Sciences ) » A-AS Atmospheric Sciences, Meteorology & Atmospheric Environment

[A-AS01] From Weather Predictability to Controllability

Fri. May 30, 2025 1:45 PM - 3:15 PM Exhibition Hall Special Setting (4) (Exhibition Hall 7&8, Makuhari Messe)

convener:Takemasa Miyoshi(RIKEN), Tetsuo Nakazawa(AORI, The University of Tokyo), Kohei Takatama(Japan Science and Technology Agency), Chairperson:Takemasa Miyoshi(RIKEN), Tetsuo Nakazawa(AORI, The University of Tokyo)

2:45 PM - 3:00 PM

[AAS01-05] Short-term hourly weather forecasting using PredRNN with image preprocessing

*Tan Bui-Thanh1, Hoang Tran2, Ruby Leung2 (1.The University of Texas at Austin, 2.Pacific Northwest National Laboratory)

Keywords:weather forecast, deep learning

Global weather forecast models are vital tools for numerous applications, including public safety, agriculture, and transportation. Recent advancements in artificial intelligence (AI) and deep learning (DL) have shown the potential to enhance weather forecasting accuracy and speed. In this study, we developed a spatiotemporal DL model, called PredRNN, to generate mid-range hourly forecasts for five surface atmospheric variables, including wind speed and direction, mean sea level pressure, temperature, and precipitation. By incorporating a wavelet transform function for data preprocessing, our model enhances the forecasting of extreme weather events. The PredRNN model demonstrates promising results. It achieves high-resolution (25 km) forecasts with a 1-day lead time RMSE of 1.8 m/s for wind components, 180 Pa for mean sea level pressure, 1.8 K for temperature, and 4x10-4 m for precipitation. While our model may not yet outperform state-of-the-art AI weather forecast models in all aspects, its ability to provide accurate hourly forecasts and potential for future enhancements contribute to the advancement of DL weather forecasting methods. Our work highlights the importance of integrating sophisticated temporal components and data transformation techniques to improve the predictability and accuracy of weather forecasts, particularly for extreme events.