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沈秉璐, 杨雅薇, 陈权亮. 2022: 基于年际增量和EOF迭代法的长江流域汛期降水预测. 暴雨灾害, 41(6): 651-661. DOI: 10.12406/byzh.2022-003
引用本文: 沈秉璐, 杨雅薇, 陈权亮. 2022: 基于年际增量和EOF迭代法的长江流域汛期降水预测. 暴雨灾害, 41(6): 651-661. DOI: 10.12406/byzh.2022-003
SHEN Binglu, YANG Yawei, CHEN Quanliang. 2022: Precipitation prediction during flood season in the Yangtze River Basin based on interannual increment and EOF iteration method. Torrential Rain and Disasters, 41(6): 651-661. DOI: 10.12406/byzh.2022-003
Citation: SHEN Binglu, YANG Yawei, CHEN Quanliang. 2022: Precipitation prediction during flood season in the Yangtze River Basin based on interannual increment and EOF iteration method. Torrential Rain and Disasters, 41(6): 651-661. DOI: 10.12406/byzh.2022-003

基于年际增量和EOF迭代法的长江流域汛期降水预测

Precipitation prediction during flood season in the Yangtze River Basin based on interannual increment and EOF iteration method

  • 摘要: 基于国家气候中心气候系统模式(Beijing Climate Center Climate System Model,BCC_CSM1.1m)和美国NCEP/NCAR的气候预测模式(The NCEP Climate Forecast System Version 2,CFSv2)分别建立针对长江流域汛期降水的动力与统计相结合的降尺度预测模型,并比较两模式对应模型的预报技巧和差异来源。分别选择两模式2月起报的500 hPa及200 hPa全球位势高度场为预报因子,结合年际增量及经验正交分解(EOF)迭代法建立降尺度模型(分别简称DY_CSM1.1m和DY_CFSv2),研究发现:(1) EOF迭代法中截断解释方差的递增增加了预报因子的协同性和稳定性,从而显著提高预报技巧,并由此确定98%的截断解释方差为模型的最优参数。(2)两模型基于最优参数的预测效果均优于模式原始的降水预测,其中DY_CSM1.1m预测技巧更高,对应29 a距平相关系数(ACC)平均评分可达0.43,尤其在长江干流区域预报效果显著提高。将两模型预测的降水年际增量百分率转换为降水距平百分率时,ACC多年平均评分降为0.27和0.22,仍高于模式原始预测。(3) DY_CSM1.1m的ACC历年评分和长江流域汛期降水年际增量均与西太平洋副热带高压的一系列指数具有高相关性(以西太平洋副高脊线位置指数为例,DY_CFSv2则无此关系),因此BCC_CSM1.1m在西太平洋地区模拟性能优于CFSv2是导致该模式降尺度后预报技巧更高的重要原因,这一点在典型洪涝年1998和2020年中得以佐证。

     

    Abstract: Based on the National Climate Center Climate System Model BCC_CSM1.1m (Beijing Climate Center Climate System Model) and the NCEP/NCAR climate prediction model CFSv2 (The NCEP Climate Forecast System Version 2) of the United States, two dynamic statistical downscaling prediction models of the precipitation during flood season in the Yangtze River Basin are established correspondingly. The forecasting skills and sources of differences between the two models are compared. The global geopotential height fields at 500 hPa and 200 hPa produced by the two models from February are selected as the predictors, and the models are established by combining the interannual increments and the empirical orthogonal decomposition (EOF) iteration method (the test scheme named DY_CSM1.1 and DY_CFSv2). This study found that:(1) The increase of the truncated explained variance in the EOF iteration method enhances the synergy and stability of the predictors, thereby significantly improving the forecasting skills, which indicates that 98% of the truncated explained variance is the optimal parameter of the model. (2) The prediction effect of the optimal parameters of the two models is better than the original precipitation prediction of the model, and the DY_CSM1.1m prediction skill is higher, especially in the main stream of the Yangtze River. The 29-year average of the spatial anomaly correlation coefficient ACC score can reach 0.43 and 0.39, respectively. When the predicted interannual increment percentage of precipitation is converted to the flood season precipitation anomaly percentage, the ACC scores dropped to 0.27 and 0.22, but are still higher than the model's original predictions. (3) The ACC score of DY_CSM1.1m has a high correlation with the interannual increment of the West Pacific Subtropical High Ridge Position Index (WPSHRP) (but DY_CFSv2 has no such relationship). The inter-annual increment of precipitation in the flood season in the Yangtze River Basin also has a high correlation with the inter-annual increment of WPSHRP. Therefore, the simulation performance of BCC_CSM1.1m in terms of the mid-low latitude geopotential height field is better than that of CFSv2, which is an important reason for the higher forecasting skills of the model after downscaling. It is evidenced in the typical flood years of 1998 and 2020.

     

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