基于TU-Net深度学习方法改进长江中下游夏季降水季节预测

Shu‐Chih Yang, Fenghua Ling, Yue Li, Jing‐Jia Luo
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引用次数: 1

摘要

两步U-Net模式(TU-Net)包含一个北太平洋副热带高压(WNPSH)预报模式和一个由WNPSH预报、海洋热含量和地表温度反馈的降水预报模式。数据驱动的预报模型提供了改进的WNPSH和长江中下游降水的4个月超前预报,对中国水资源管理和降水相关灾害预防具有重要意义。与南京信息工程大学气候预报系统(NUIST-CFS1.0)和北美多模式集成项目(NMME)等5个最先进的动力气候模式相比,TU-Net在预测500和850 hpa水平的4个月超前位势高度和风力方面具有相当的能力。对于MLYR地区降水的4个月超前预测,TU-Net在夏季各月和北夏[6 - 8月]的相关得分和平均纬度加权RMSE最好,模式相关系数得分仅在6月和JJA略低于动力模式。此外,结果表明,构建的TU-Net在预测MLYR地区2 m气温方面也优于大多数动力模型,且提前4个月。因此,基于深度学习的TU-Net模型可以提供一种快速而廉价的方法来改进MLYR地区夏季降水和2 m气温的季节性预测。本研究的目的是利用深度学习方法检验北太平洋西部副热带高压异常和长江中下游地区夏季降水异常的季节预测能力。我们的深度学习模型提供了一种快速而廉价的方法来改进夏季降水和2米气温的季节性预测。这项工作对中国水资源管理和降水相关灾害的预防具有重要意义,并可在未来推广到其他气候变量的预测中。
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Improving Seasonal Prediction of Summer Precipitation in the Middle–Lower Reaches of the Yangtze River Using a TU-Net Deep Learning Approach
The two-step U-Net model (TU-Net) contains a western North Pacific subtropical high (WNPSH) prediction model and a precipitation prediction model fed by the WNPSH predictions, oceanic heat content, and surface temperature. The data-driven forecast model provides improved 4-month lead predictions of the WNPSH and precipitation in the middle and lower reaches of the Yangtze River (MLYR), which has important implications for water resources management and precipitation-related disaster prevention in China. When compared with five state-of-the-art dynamical climate models including the Climate Forecast System of Nanjing University of Information Science and Technology (NUIST-CFS1.0) and four models participating in the North American Multi-Model Ensemble (NMME) project, the TU-Net produces comparable skills in forecasting 4-month lead geopotential height and winds at the 500- and 850-hPa levels. For the 4-month lead prediction of precipitation over the MLYR region, the TU-Net has the best correlation scores and mean latitude-weighted RMSE in each summer month and in boreal summer [June–August (JJA)], and pattern correlation coefficient scores are slightly lower than the dynamical models only in June and JJA. In addition, the results show that the constructed TU-Net is also superior to most of the dynamical models in predicting 2-m air temperature in the MLYR region at a 4-month lead. Thus, the deep learning-based TU-Net model can provide a rapid and inexpensive way to improve the seasonal prediction of summer precipitation and 2-m air temperature over the MLYR region. The purpose of this study is to examine the seasonal predictive skill of the western North Pacific subtropical high anomalies and summer rainfall anomalies over the middle and lower reaches of the Yangtze River region by means of deep learning methods. Our deep learning model provides a rapid and inexpensive way to improve the seasonal prediction of summer precipitation as well as 2-m air temperature. The work has important implications for water resources management and precipitation-related disaster prevention in China and can be extended in the future to predict other climate variables as well.
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