Monthly Prediction on Summer Extreme Precipitation With a Deep Learning Approach: Experiments Over the Mid-To-Lower Reaches of the Yangtze River

IF 2.9 3区 地球科学 Q2 ASTRONOMY & ASTROPHYSICS
Yi Fan, Yang Lyu, Shoupeng Zhu, Zhicong Yin, Mingkeng Duan, Xiefei Zhi, Botao Zhou
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Abstract

Accurate predictions of monthly extremes assume paramount importance in enabling proactive decision-making, which however are lacked in skills even for state-of-the-art dynamical models. Taking the extreme precipitation prediction over the mid-to-lower reaches of the Yangtze River, China, as an instance, a multi-predictor U-Net deep learning approach is designed to enhance the prediction over the European Center for Medium-Range Weather Forecasts (ECMWF) model, with the single-predictor U-Net parallelly examined as the benchmark. Focusing on the precipitation extremes, an extreme associated component is incorporated into the model loss function for optimization. Besides, predictions composed by daily outputs with multiple lead times are imported as a comprehensive set in the training phase to augment the deep learning sample size and to emphasize enhancements in predictions at the monthly timescale as a whole. Results indicate that the multi-predictor U-Net effectively improves predictions of extreme summer precipitation frequency, showing distinct superiority to the raw ECMWF and the single-predictor U-Net. Multiple evaluation metrics indicate that the model shows a significant positive improvement ratio ranging from 65.1% to 80.0% across all grids compared to the raw ECMWF prediction, which has also been validated through applications in the two extreme summer precipitation cases in 2016 and 2020. Besides, a ranking analysis of feature importance reveals that factors such as humidity and temperature play even more crucial roles than precipitation itself in the multi-predictor extreme precipitation prediction model at the monthly timescale. That is, in such a deep learning approach, the monthly prediction on extreme precipitation benefits significantly from the inclusion of multiple associated predictors.

Abstract Image

利用深度学习方法对夏季极端降水进行月度预测:长江中下游试验
准确预测月极端降水量对做出前瞻性决策至关重要,但即使是最先进的动力学模型也缺乏这方面的技能。以中国长江中下游地区的极端降水预测为例,设计了一种多预测因子 U-Net 深度学习方法,以加强对欧洲中期天气预报中心(ECMWF)模型的预测,并将单预测因子 U-Net 作为基准进行平行检验。以极端降水为重点,在模型损失函数中加入了极端相关成分以进行优化。此外,在训练阶段,还将由多个前置时间的日输出组成的预测结果作为一个综合集导入,以增加深度学习的样本量,并从整体上强调月度时间尺度上预测结果的增强。结果表明,多预测因子 U-Net 有效提高了对夏季极端降水频率的预测,显示出明显优于原始 ECMWF 和单预测因子 U-Net。多个评估指标表明,与原始 ECMWF 预测相比,该模型在所有网格上都显示出 65.1%到 80.0%的显著正改进率,这也在 2016 年和 2020 年两个极端夏季降水案例的应用中得到了验证。此外,对特征重要性的排序分析表明,在月时间尺度上,湿度和温度等因素在多预测因子极端降水预测模型中的作用甚至比降水本身更为重要。也就是说,在这种深度学习方法中,纳入多个相关预测因子对月度极端降水预测大有裨益。
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来源期刊
Earth and Space Science
Earth and Space Science Earth and Planetary Sciences-General Earth and Planetary Sciences
CiteScore
5.50
自引率
3.20%
发文量
285
审稿时长
19 weeks
期刊介绍: Marking AGU’s second new open access journal in the last 12 months, Earth and Space Science is the only journal that reflects the expansive range of science represented by AGU’s 62,000 members, including all of the Earth, planetary, and space sciences, and related fields in environmental science, geoengineering, space engineering, and biogeochemistry.
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