Postprocessing ensemble weather predictions to correct systematic errors has become a standard practice in research and operations. However, only few recent studies have focused on ensemble postprocessing of wind gust forecasts, despite its importance for severe weather warnings. Here, we provide a comprehensive review and systematic comparison of eight statistical and machine learning methods for probabilistic wind gust forecasting via ensemble postprocessing, that can be divided in three groups: State of the art postprocessing techniques from statistics (ensemble model output statistics (EMOS), member-by-member postprocessing, isotonic distributional regression), established machine learning methods (gradient-boosting extended EMOS, quantile regression forests) and neural network-based approaches (distributional regression network, Bernstein quantile network, histogram estimation network). The methods are systematically compared using six years of data from a high-resolution, convection-permitting ensemble prediction system that was run operationally at the German weather service, and hourly observations at 175 surface weather stations in Germany. While all postprocessing methods yield calibrated forecasts and are able to correct the systematic errors of the raw ensemble predictions, incorporating information from additional meteorological predictor variables beyond wind gusts leads to significant improvements in forecast skill. In particular, we propose a flexible framework of locally adaptive neural networks with different probabilistic forecast types as output, which not only significantly outperform all benchmark postprocessing methods but also learn physically consistent relations associated with the diurnal cycle, especially the evening transition of the planetary boundary layer.
翻译:用于纠正系统性误差的后处理全套天气预报,已成为研究和作业的标准做法;然而,尽管对严酷的天气警告很重要,但最近只有很少的研究侧重于风螺预报的全套后处理后处理,尽管对严酷的天气警报很重要;在这里,我们全面审查和系统比较了八种统计和机器学习方法,以便通过混合后处理进行稳妥的风螺预报,这可以分为三类:从统计数据(连锁模型产出统计数据、成员逐级晚间处理、异端分配回归)、既定机器学习方法(升级加速扩展的EMOS、量级回归森林)和基于神经网络的方法(分布回归网络、伯尔斯坦二次量度网络、直观估计网络)。 这种方法有系统比较了6年的高分辨率、可感应感化的堆积预报系统,该系统仅运行在德国气象服务中运行,在175个地表气象站进行每小时观测。 虽然所有后处理方法都产生了校准的升级的扩展的扩展的扩展的EMOS、定量回归森林回归森林) 以及大量系统预测的系统预测,因此,我们能够将稳定地预测的系统预测的系统变的系统变的系统变的系统,从而纠正了各种的系统预测,我们预测的系统预测的系统预测的系统变的系统变的系统变的系统变的系统变。