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Application of the Bayesian Processor of Ensemble to the Combination and Calibration of Ensemble Forecasts

机译:贝叶斯合奏处理器在合奏预报组合与标定中的应用

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Ensemble forecasts are developed to assess and convey uncertainty in weather forecasts. Unfortunately, ensemble prediction systems (EPS) usually underestimate uncertainty and thus are statistically not reliable. In this study, we apply the Bayesian Processor of Ensemble (BPE), which is an extension of the statistical post-processing method of Bayesian Processor of Forecasts (BPF) to calibrate ensemble forecasts. BPE is performed to obtain a posterior function through the combination of a regression-based likelihood function and a cli-matological prior. The method is applied to 1-10 day lead time EPS forecasts from the NCEP Global Ensemble Forecast System (GEFS) and the Canadian Meteorological Centre (CMC) of 2-m temperature at 24 stations over the continental United States (CONUS). Continuous rank probability score is used to evaluate the performance of posterior probability forecasts. Results show that post-processed ensembles are much better calibrated than the raw ensemble. In addition, merging two ensemble forecasts by incorporating the CMC ensemble mean as another predictor in addition to GEFS ensemble forecasts is shown to provide more skillful and reliable probabilistic forecasts. BPE has a broad potential use in the future given its flexible framework for calibrating and combining ensemble forecast.
机译:开发了合并预测,以评估和传达天气预报的不确定性。遗憾的是,集合预测系统(EPS)通常低估不确定性,因此在统计上不可靠。在这项研究中,我们应用了集合(BPE)的贝叶斯处理器,这是差异预测(BPF)贝叶斯处理器统计后处理方法的延伸,以校准集合预测。通过组合基于回归的似然函数和CLI Matological先前来进行BPE以获得后函数。该方法应用于NCEP全球集合预测系统(GEF)和加拿大气象中心(CMC)在美国大陆大陆(康士州)的24个站点中的1-10天的发出时间EPS预测。连续等级概率得分用于评估后验概率预测的性能。结果表明,后处理后的集合比原始合奏更好地校准。此外,除了包括GEFS集合预测之外,通过将CMC集合均值作为另一个预测来合并两个集合预测,还显示出更熟练和可靠的概率预测。 BPE在未来具有广泛的潜在使用,因为它的灵活框架用于校准和组合集合预测。

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