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Seasonal Variations in Severe Weather Forecast Skill in an Experimental Convection-Allowing Model

机译:实验对流允许模型中严重天气预报技能的季节变化

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Eight years of daily, experimental, deterministic, convection-allowing model (CAM) forecasts, produced by the National Severe Storms Laboratory, were evaluated to assess their ability at predicting severe weather hazards over a diverse collection of seasons, regions, and environments. To do so, forecasts of severe weather hazards were produced and verified as in previous studies using CAM output, namely by thresholding the updraft helicity (UH) field, smoothing the resulting binary field to create surrogate severe probability forecasts (SSPFs), and verifying the SSPFs against observed storm reports. SSPFs were most skillful during the spring and fall, with a relative minimum in skill observed during the summer. SSPF skill during the winter months was more variable than during other seasons, partly due to the limited sample size of events, but was often less than that during the warm season. The seasonal behavior of SSPF skill was partly driven by the relationship between the UH threshold and the likelihood of obtaining severe storm reports. Varying UH thresholds by season and region produced SSPFs that were more skillful than using a fixed UH threshold to identify severe convection. Accounting for this variability was most important during the cool season, when a lower UH threshold produced larger SSPF skill compared to warm-season events, and during the summer, when large differences in skill occurred within different parts of the continental United States (CONUS), depending on the choice of UH threshold. This relationship between UH threshold and SSPF skill is discussed within the larger scope of generating skillful CAM-based guidance for hazardous convective weather and verifying CAM predictions.
机译:通过全国严重风暴实验室产生的八年的日报,实验,确定性,对流允许模型(CAM)预测,以评估其在预测各种季节,地区和环境中预测严重天气危险的能力。为此,在使用CAM输出的先前研究中,生产和验证了严重天气危害的预测,即通过阈值下降的螺旋(UH)字段,平滑所产生的二进制场,以创建代理严重概率预测(SSPF),并验证针对观察到的风暴报告的SSPFS。 SSPF在春季和秋季最熟练,夏季观察到的技能相对最小。冬季的SSPF技能比在其他赛季中更具变量,部分原因是事件的样本量有限,但往往少于温暖季节。 SSPF技能的季节性行为是由UH阈值与获得严重风暴报告的可能性之间的关系的部分驱动。由季节和区域不同的UH阈值产生的SSPFS比使用固定的UH阈值更加熟练,以确定严重对流。在凉爽的季节,当较低的UH阈值产生更大的SSPF技能时,与暖季活动相比,这种变异性最重要的是,在美国大陆(康斯)的不同地区发生大差异,取决于UH阈值的选择。在危险对流天气和验证凸轮预测的基于熟练凸轮的指导范围内讨论了UH阈值和SSPF技能之间的这种关系。

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