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Multiresolution Ensemble Forecasts of an Observed Tornadic Thunderstorm System. Part Ⅰ: Comparsion of Coarse- and Fine-Grid Experiments

机译:观测到的飓风雷暴系统的多分辨率集合预报。第一部分:粗网格和细网格实验的比较

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Using a nonhydrostatic numerical model with horizontal grid spacing of 24 km and nested grids of 6- and 3-km spacing, the authors employ the scaled lagged average forecasting (SLAF) technique, developed originally for global and synoptic-scale prediction, to generate ensemble forecasts of a tornadic thunderstorm complex that occurred in north-central Texas on 28-29 March 2000. This is the first attempt, to their knowledge, in applying ensemble techniques to a cloud-resolving model using radar and other observations assimilated within nonhorizontally uniform initial conditions and full model physics. The principal goal of this study is to investigate the viability of ensemble forecasting in the context of explicitly resolved deep convective storms, with particular emphasis on the potential value added by fine grid spacing and probabilistic versus deterministic forecasts. Further, the authors focus on the structure and growth of errors as well as the application of suitable quantitative metrics to assess forecast skill for highly intermittent phenomena at fine scales. Because numerous strategies exist for linking multiple nested grids in an ensemble framework with none obviously superior, several are examined, particularly in light of how they impact the structure and growth of perturbations. Not surprisingly, forecast results are sensitive to the strategy chosen, and owing to the rapid growth of errors on the convective scale, the traditional SLAF methodology of age-based scaling is replaced by scaling predicated solely upon error magnitude. This modification improves forecast spread and skill, though the authors believe errors grow more slowly than is desirable. For all three horizontal grid spacings utilized, ensembles show both qualitative and quantitative improvement relative to their respective deterministic control forecasts. Nonetheless, the evolution of convection at 24- and 6-km spacings is vastly different from, and arguably inferior to, that at 3 km because at 24-km spacing, the model cannot explicitly resolve deep convection while at 6 km, the deep convection closure problem is ill posed and clouds are neither implicitly nor explicitly represented (even at 3-km spacing, updrafts and downdrafts only are marginally resolved). Despite their greater spatial fidelity, the 3-km grid spacing experiments are limited in that the ensemble mean reflectivity tends to be much weaker in intensity, and much broader in aerial extent, than that of any single 3-km spacing forecast owing to amplitude reduction and spatial smearing that occur when averaging is applied to spatially intermittent phenomena. The ensemble means of accumulated precipitation, on the other hand, preserve peak intensity quite well. Although a single case study obviously does not provide sufficient information with which to draw general conclusions, the results presented here, as well as those in Part Ⅱ (which focuses solely on 3-km grid spacing experiments), suggest that even a small ensemble of cloud-resolving forecasts may provide greater skill, and greater practical value, than a single deterministic forecast using either the same or coarser grid spacing.
机译:使用水平网格间距为24 km的非静水力数值模型以及6 km和3 km间距的嵌套网格,作者采用了最初为全局和天气尺度预报而开发的缩放滞后平均预测(SLAF)技术来生成集合预报了2000年3月28日至29日在德克萨斯州中北部发生的一场雷暴云。这是他们所知,首次尝试将集合技术应用到雷达的云解算模型中,并将其他观测资料同化为非水平一致的初始资料。条件和完整的模型物理。这项研究的主要目的是研究在明确解决的深对流风暴情况下集合预报的可行性,特别强调细网格间距以及概率与确定性预报所增加的潜在价值。此外,作者专注于误差的结构和增长,以及适用的定量指标在精细尺度上评估高度间歇性现象的预测技能的应用。由于存在许多将整体框架中的多个嵌套网格链接在一起的策略,而没有一个策略有明显的优越性,因此对其中的几种方法进行了研究,尤其是考虑到它们如何影响扰动的结构和增长。毫不奇怪,预测结果对所选择的策略很敏感,并且由于对流尺度误差的快速增长,传统的基于年龄的尺度SLAF方法被仅基于误差幅度的尺度替代。尽管作者认为错误的增长速度比期望的要慢,但这种修改可以提高预测的传播范围和技能。对于所有使用的三个水平网格间距,集合相对于其各自的确定性控制预测都显示出质和量的改进。但是,在24 km和6 km距离处的对流演变与在3 km处的对流演变有很大差异,并且可以说是次于3 km,因为在24 km距离处,该模型无法显式解析深对流,而在6 km处,深对流封闭问题不适当地存在,云也没有隐含或显式表示(即使在3 km的距离处,仅略微解决了上升气流和下降气流)。尽管3 km网格间距实验具有更高的空间保真度,但其局限性在于,由于振幅降低,总体平均反射率往往比任何单个3 km间距预测的强度更弱,并且在空中范围更广将平均应用于空间间歇现象时发生的空间拖尾现象。另一方面,累积降水的整体方法很好地保持了峰值强度。尽管单个案例研究显然不能提供足够的信息来得出一般性结论,但此处以及第二部分(仅侧重于3 km网格间距实验)中给出的结果表明,即使是很小的整体与使用相同或更粗的网格间距的单个确定性预测相比,云解决方案的预测可能提供更高的技能和更大的实用价值。

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