论文标题
统计热索引集合预报的统计后处理:有皇家道路吗?
Statistical post-processing of heat index ensemble forecasts: is there a royal road?
论文作者
论文摘要
我们研究了统计后处理对不适指数(DI)和室内湿块球体温度(WBGTID)集合预测的概率技能的影响,这均取决于相应的温度预测和脱离点温度的预测。比较了两种不同的方法论方法。在第一种情况下,我们从温度和露点预测的联合后处理开始,然后使用来自获得的双变量预测分布的样品创建DI和WBGTID的校准样品。将这种方法与热指数集合预测的直接后处理进行了比较。为此,提出了基于广义极值分布的新型集合模型输出统计模型。两种方法的预测性能均可在欧洲中等天气预测中心的操作温度和露点集合预测以及DI和WBGTID的相应预测上进行测试。在短暂的交货时间(直到第6天)中,两种方法都可以显着提高预测技能。在相互竞争的后处理方法中,热量指数的直接校准表现出最佳的预测性能,紧随其后的是基于温度和露点温度的关节校准的更通用方法。此外,测试了机器学习方法,并显示出仅对热量指数警告水平类别感兴趣的情况的可比性。
We investigate the effect of statistical post-processing on the probabilistic skill of discomfort index (DI) and indoor wet-bulb globe temperature (WBGTid) ensemble forecasts, both calculated from the corresponding forecasts of temperature and dew point temperature. Two different methodological approaches to calibration are compared. In the first case, we start with joint post-processing of the temperature and dew point forecasts and then create calibrated samples of DI and WBGTid using samples from the obtained bivariate predictive distributions. This approach is compared with direct post-processing of the heat index ensemble forecasts. For this purpose, a novel ensemble model output statistics model based on a generalized extreme value distribution is proposed. The predictive performance of both methods is tested on the operational temperature and dew point ensemble forecasts of the European Centre for Medium-Range Weather Forecasts and the corresponding forecasts of DI and WBGTid. For short lead times (up to day 6), both approaches significantly improve the forecast skill. Among the competing post-processing methods, direct calibration of heat indices exhibits the best predictive performance, very closely followed by the more general approach based on joint calibration of temperature and dew point temperature. Additionally, a machine learning approach is tested and shows comparable performance for the case when one is interested only in forecasting heat index warning level categories.