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DOI10.1029/2023EF004409
Effective Deep Learning Seasonal Prediction Model for Summer Drought Over China
Liu, Wenbo; Huang, Yanyan; Wang, Huijun
发表日期2024
EISSN2328-4277
起始页码12
结束页码3
卷号12期号:3
英文摘要Drought is an important meteorological event in China and can cause severe damage to both livelihoods and socio-ecological systems, but current seasonal prediction skill for drought is far from successful. This study used convolutional neural network (CNN) to build an effective seasonal forecast model for the summer consecutive dry days (CDD) over China. The principal components (PC) of the six leading empirical orthogonal function modes of CDD anomaly were predicted by CNN, using the previous winter precipitation, 2-m temperature and 500 hPa geopotential height as predictors. These predicted PCs were then projected onto the observed spatial patterns to obtain the final predicted summer CDD anomaly over China. In the independent hindcast period of 2007-2018, the interannual variabilities of first six PCs were significantly predicted by CNN. The spatial patterns of CDD were then skillfully predicted with anomaly correlation coefficient skills generally higher than 0.2. The interannual variability of summer CDD over the middle and lower Yangtze River valley, northwestern China and northern China were significant predicted by our CNN model three months in advance. CNN identified that the previous winter precipitation was the important predictor for PC1-PC3, whereas the previous winter 2-m temperature and 500 hPa geopotential height were important for the prediction of PC4-PC6. This research provides a new and effective method for the seasonal prediction of summer drought. Drought can cause serious agricultural and ecosystem disasters, so its forecast is valuable for preventing and mitigating related natural disasters and regional socioeconomic sustainability. However, current prediction skill for drought is far from successful since its extreme feature. The gradually emerging deep learning methods offer new possibilities, but how to effectively apply deep learning models in climate prediction with a small sample size remains an open question. In this paper, we build seasonal prediction convolutional neural network model for summer consecutive dry days over China using previous winter predictors. This model achieves significant prediction skill three months in advance. The empirical orthogonal function decomposition is used to reduce the dimensionality of consecutive dry days data in our model. Our research provides a new perspective for drought prediction, and it is expected that such method will be also useful for other seasonal climate prediction problems. Convolutional neural network (CNN) skillfully predicts summer consecutive dry days (CDD) over China three months in advance The principal components of CDD are predicted by CNN and then projected on the observed spatial patterns Previous winter 2-m temperature, geopotential height at 500 hPa and precipitation are the essential predictors in CNN
语种英语
WOS研究方向Environmental Sciences & Ecology ; Geology ; Meteorology & Atmospheric Sciences
WOS类目Environmental Sciences ; Geosciences, Multidisciplinary ; Meteorology & Atmospheric Sciences
WOS记录号WOS:001188148400001
来源期刊EARTHS FUTURE
文献类型期刊论文
条目标识符http://gcip.llas.ac.cn/handle/2XKMVOVA/306359
作者单位Chinese Academy of Sciences; Institute of Atmospheric Physics, CAS; Chinese Academy of Sciences; University of Chinese Academy of Sciences, CAS; Nanjing University of Information Science & Technology; Southern Marine Science & Engineering Guangdong Laboratory; Southern Marine Science & Engineering Guangdong Laboratory (Zhuhai)
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GB/T 7714
Liu, Wenbo,Huang, Yanyan,Wang, Huijun. Effective Deep Learning Seasonal Prediction Model for Summer Drought Over China[J],2024,12(3).
APA Liu, Wenbo,Huang, Yanyan,&Wang, Huijun.(2024).Effective Deep Learning Seasonal Prediction Model for Summer Drought Over China.EARTHS FUTURE,12(3).
MLA Liu, Wenbo,et al."Effective Deep Learning Seasonal Prediction Model for Summer Drought Over China".EARTHS FUTURE 12.3(2024).
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