大气科学进展(英文版)2025,Vol.42Issue(1) :26-35.DOI:10.1007/s00376-024-4003-3

Improving the Seasonal Forecast of Summer Precipitation in Southeastern China Using a CycleGAN-based Deep Learning Bias Correction Method

Song YANG Fenghua LING Jing-Jia LUO Lei BAI
大气科学进展(英文版)2025,Vol.42Issue(1) :26-35.DOI:10.1007/s00376-024-4003-3

Improving the Seasonal Forecast of Summer Precipitation in Southeastern China Using a CycleGAN-based Deep Learning Bias Correction Method

Song YANG 1Fenghua LING 1Jing-Jia LUO 1Lei BAI2
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作者信息

  • 1. Institute of Climate Application Research(ICAR)/School of Future Technology/CIC-FEMD/KLME/ILCEC,Nanjing University of Information Science and Technology,Nanjing 210044,China
  • 2. Shanghai Artificial Intelligence Laboratory,Shanghai 200232,China
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Abstract

Accurate seasonal precipitation forecasts,especially for extreme events,are crucial to preventing meteorological hazards and their potential impacts on national development,social activity,and security.However,the intensity of summer precipitation is often largely underestimated in many current dynamic models.This study uses a deep learning method called Cycle-Consistent Generative Adversarial Networks(CycleGAN)to improve the seasonal forecasts for June-July-August precipitation in southeastern China by the Nanjing University of Information Science and Technology Climate Forecast System(NUIST-CFS 1.0).The results suggest that the CycleGAN-based model significantly improves the accuracy in predicting the spatiotemporal distribution of summer precipitation compared to the traditional quantile mapping(QM)method.Using the unpaired bias-correction model,we can also obtain advanced forecasts of the frequency,intensity,and duration of extreme precipitation events over the dynamic model predictions.This study expands the potential applications of deep learning models toward improving seasonal precipitation forecasts.

Key words

bias correction/CycleGAN/QM/NUIST-CFS 1.0/extreme precipitation

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出版年

2025
大气科学进展(英文版)
中国科学院大气物理研究所

大气科学进展(英文版)

影响因子:0.741
ISSN:0256-1530
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