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Confidence interval estimation for quantitative precipitation forecasts (QPF) using short-range ensemble forecasts (SREF)

机译:使用短时集合预报(SREF)进行定量降水预报(QPF)的置信区间估计

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The Hydrometeorological Prediction Center (HPC) at the NCEP has produced a suite of deterministic quantitative precipitation forecasts (QPFs) for over 40 yr. While the operational forecasts have proven to be useful in their present form, they offer no information concerning the uncertainties of individual forecasts. The purpose of this study is to develop a methodology to quantify the uncertainty in manually produced 6-h HPC QPFs (HQPFs) using NCEP short-range ensemble forecasts (SREFs). Results presented herein show the SREFs can predict the uncertainty of HQPFs. The correlation between HQPF absolute error (AE) and ensemble QPF spread (SP) is greater than 0.5 at 90.5% of grid points in the continental United States, exceeding 0.8 at 10% of these, for the 6-h forecast in winter. Oil the basis of the high correlation, the linear regression equations of AE oil SP are derived at each point on a grid covering the United States. In addition, the regression equations for data categorized according to the observed and forecasted precipitation amounts are obtained and evaluated. Using the regression model equation parameters for 15 categorized ranges of HQPF at each horizontal grid point for each season and individual forecast lead time, an AE associated with ail individual SP is predicted, as is the 95% confidence interval (Cl) of the AE. Based oil the AE Cl forecast and the HQPF itself, the 95% Cl of the HQPF is predicted as well. This study introduces an efficient and advanced method, providing an estimate of the uncertainty in the deterministic HOPE. Verification demonstrates the usefulness of the Cl forecasts for a variety of classifications, such as season, Cl range, HQPF, and forecast lead time.
机译:NCEP的水文气象预报中心(HPC)已编制了40多年的一套确定性定量降水预报(QPF)。虽然业务预测已经证明以目前的形式有用,但它们未提供有关单个预测的不确定性的信息。这项研究的目的是开发一种方法,以使用NCEP短时整体预报(SREF)来量化手动生成的6小时HPC QPF(HQPF)的不确定性。本文提供的结果表明,SREF可以预测HQPF的不确定性。对于美国的6小时冬季预报,HQPF绝对误差(AE)与整体QPF展宽(SP)之间的相关性在美国大陆90.5%的网格点处大于0.5,在其中10%的网格点处大于0.8。在高相关性的基础上,AE油SP的线性回归方程是在覆盖美国的网格上的每个点导出的。此外,获得并评估了根据观测和预测降水量分类的数据的回归方程。使用回归模型方程参数,针对每个季节的每个水平网格点处的HQPF的15个分类范围以及单个预测的提前期,可以预测与所有单个SP相关的AE,以及AE的95%置信区间(Cl)。基于AE Cl预测和HQPF本身的油,也可以预测HQPF的95%Cl。这项研究引入了一种有效且先进的方法,提供了对确定性HOPE中不确定性的估计。验证证明了Cl预报对于各种分类(如季节,Cl范围,HQPF和预报提前期)的有用性。

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