2025年度 人工知能学会全国大会(第39回)

2025年度 人工知能学会全国大会(第39回)

2025年5月27日〜5月30日大阪国際会議場+オンライン
人工知能学会
2025年度 人工知能学会全国大会(第39回)

2025年度 人工知能学会全国大会(第39回)

2025年5月27日〜5月30日大阪国際会議場+オンライン

[3K5-IS-2b-02]Multi-Model Data Transfer by Knowledge Distillation for Enhancing Precipitation Nowcasting

〇QIHANG WANG1, Tomohiko Tomita2, Ken-ichi Fukui1(1. Osaka University, 2. Kumamoto University)
[[オンライン]]
Precipitation nowcasting refers to a rapid, high-resolution prediction within the next 2 hours, providing important benefits for areas such as air traffic control and emergency services. Recently, deep learning methods using only radar images have shown promising results for precipitation nowcasting without relying on physical models. However, these methods often overlook the additional meteorological information, such as temperature, humidity, and cloud water content, contained in reanalysis data, thus limiting further improvements in prediction accuracy. In this research, we build upon the U-Net architecture to integrate radar data with reanalysis data for network training. Since reanalysis data are delayed and cannot be used for real-time forecasts, we apply a knowledge distillation approach to transfer information from a teacher model to a student model that does not require reanalysis data when making predictions. Our experiments show that the distilled student model outperforms the baseline model trained only on radar data in terms of MSE, CSI, and PSD, demonstrating the effectiveness of our method in improving forecast accuracy.