In recent years, ensemble weather forecasting have become a routine at all major weather prediction centres. These forecasts are obtained from multiple runs of numerical weather prediction models with different initial conditions or model parametrizations. However, ensemble forecasts can often be underdispersive and also biased, so some kind of post-processing is needed to account for these deficiencies. One of the most popular state of the art statistical post-processing techniques is the ensemble model output statistics (EMOS), which provides a full predictive distribution of the studied weather quantity. We propose a novel EMOS model for calibrating wind speed ensemble forecasts, where the predictive distribution is a generalized extreme value (GEV) distribution left truncated at zero (TGEV). The truncation corrects the disadvantage of the GEV distribution based EMOS models of occasionally predicting negative wind speed values, without affecting its favorable properties. The new model is tested on four data sets of wind speed ensemble forecasts provided by three different ensemble prediction systems, covering various geographical domains and time periods. The forecast skill of the TGEV EMOS model is compared with the predictive performance of the truncated normal, log-normal and GEV methods and the raw and climatological forecasts as well. The results verify the advantageous properties of the novel TGEV EMOS approach.
翻译:最近几年,所有主要天气预测中心都经常进行混合天气预报,这些预报来自多种数字天气预测模型的多次运行,最初条件不同,或模型不对称,但是,混合预测往往不够分散,而且有偏差,因此需要某种后处理来解释这些缺陷。最受欢迎的先进统计后处理技术是混合模型产出统计,它提供了所研究天气数量的充分预测分布。我们提议了一个用于校准风速联合预报的新型EMOS模型,其中预测分布是普遍极端值(GEV)分布在零时变速(TGEV),变速预测纠正了基于EMOS的GEEV分布模型的缺点,即偶尔预测负风速值,而不影响其有利性能。新模型用三个不同的混合预测系统提供的风速联合预报的四套数据进行测试,涵盖不同的地理区域和时间段。预测的预测值分布是普遍极端值(GEVVV)分布在零时的分布(TGEVV),预测纠正了以EVS模型为基础的预测结果。