Identification of high-wind features within extratropical cyclones using a probabilistic random forest – Part 1: Method and case studies

Leah Eisenstein, Benedikt Schulz, Ghulam A. Qadir, J. Pinto, P. Knippertz
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引用次数: 3

Abstract

Abstract. Strong winds associated with extratropical cyclones are one of the most dangerous natural hazards in Europe. These high winds are mostly associated with five mesoscale dynamical features: the warm (conveyor belt) jet (WJ); the cold (conveyor belt) jet (CJ); cold frontal convection (CFC); strong cold-sector winds (CS); and, at least in some storms, the sting jet (SJ). The timing within the cyclone's life cycle, the location relative to the cyclone core and some further characteristics differ between these features and, hence, likely also the associated forecast errors. Here, we present a novel objective identification approach for these high-wind features using a probabilistic random forest (RF) based on each feature’s most important characteristics in near-surface wind, rainfall, pressure and temperature evolution. As the CJ and SJ are difficult to distinguish in near-surface observations alone, these two features are considered together here. A strength of the identification method is that it works flexibly and is independent of local characteristics and horizontal gradients; thus, it can be applied to irregularly spaced surface observations and to gridded analyses and forecasts of different resolution in a consistent way. As a reference for the RF, we subjectively identify the four storm features (WJ, CS, CFC, and CJ and SJ) in 12 winter storm cases between 2015 and 2020 in both hourly surface observations and high-resolution reanalyses of the German Consortium for Small-scale Modeling (COSMO) model over Europe, using an interactive data analysis and visualisation tool. The RF is then trained on station observations only. The RF learns physically consistent relations and reveals the mean sea level pressure (tendency), potential temperature, precipitation amount and wind direction to be most important for the distinction between the features. From the RF, we get probabilities of each feature occurring at the single stations, which can be interpolated into areal information using Kriging. The results show a reliable identification for all features, especially for the WJ and CFC. We find difficulties in the distinction of the CJ and CS in extreme cases, as the features have rather similar meteorological characteristics. Mostly consistent results in observations and reanalysis data suggest that the novel approach can be applied to other data sets without the need for adaptation. Our new software RAMEFI (RAndom-forest-based MEsoscale wind Feature Identification) is made publicly available for straightforward use by the atmospheric community and enables a wide range of applications, such as working towards a climatology of these features for multi-decadal time periods (see Part 2 of this paper; Eisenstein et al., 2022d), analysing forecast errors in high-resolution COSMO ensemble forecasts and developing feature-dependent post-processing procedures.
使用概率随机森林识别温带气旋内的大风特征。第1部分:方法和案例研究
摘要与温带气旋相关的强风是欧洲最危险的自然灾害之一。这些大风主要与五个中尺度动力特征有关:暖流(传送带)急流(WJ);冷(输送带)射流(CJ);冷锋对流(CFC);强冷风;至少在某些风暴中,还有刺状急流(SJ)。气旋生命周期内的时间、相对于气旋核心的位置以及其他一些特征在这些特征之间存在差异,因此可能也存在相关的预报误差。本文提出了一种基于近地面风、降雨、压力和温度演变中每个特征最重要特征的概率随机森林(RF)方法,对这些大风特征进行客观识别。由于单独在近地表观测中很难区分CJ和SJ,因此这里将这两个特征放在一起考虑。该方法的优点是工作灵活,不受局部特征和水平梯度的影响;因此,它可以以一致的方式应用于不规则间距的地表观测和不同分辨率的网格化分析和预报。作为RF的参考,我们使用交互式数据分析和可视化工具,通过逐时地面观测和德国小尺度模式(COSMO)在欧洲的高分辨率再分析,主观地识别了2015 - 2020年12个冬季风暴案例中的4种风暴特征(WJ、CS、CFC和CJ和SJ)。然后,射频只接受台站观测的训练。RF学习了物理上一致的关系,并揭示了平均海平面压力(趋势)、潜在温度、降水量和风向是区分特征的最重要因素。从射频中,我们得到每个特征在单个站点上出现的概率,并使用克里格插值法将其插值到实际信息中。结果表明,对所有特征的识别都是可靠的,特别是对WJ和CFC。我们发现在极端情况下很难区分CJ和CS,因为它们具有相当相似的气象特征。观测和再分析数据的结果基本一致,表明这种新方法可以应用于其他数据集,而无需进行适应。我们的新软件RAMEFI(基于随机森林的中尺度风特征识别)已经公开,供大气界直接使用,并实现了广泛的应用,例如在几十年的时间周期内研究这些特征的气候学(见本文第2部分;Eisenstein et al., 2022d),分析了高分辨率COSMO集合预测中的预测误差,并开发了依赖特征的后处理程序。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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