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首页> 外文期刊>Weather and forecasting >Short-Term Probabilistic Forecasts of the 31 May 2013 Oklahoma Tornado and Flash Flood Event Using a Continuous-Update-Cycle Storm-Scale Ensemble System
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Short-Term Probabilistic Forecasts of the 31 May 2013 Oklahoma Tornado and Flash Flood Event Using a Continuous-Update-Cycle Storm-Scale Ensemble System

机译:使用持续更新周期风暴规模合奏系统的2013年5月31日俄克拉荷马州龙卷风和山洪暴发事件的短期概率预测

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A continuous-update-cycle storm-scale ensemble data assimilation (DA) and prediction system using the ARW model and DART software is used to generate retrospective 0-6-h ensemble forecasts of the 31 May 2013 tornado and flash flood event over central Oklahoma, with a focus on the prediction of heavy rainfall. Results indicate that the model-predicted probabilities of strong low-level mesocyclones correspond well with the locations of observed mesocyclones and with the observed damage track. The ensemble-mean quantitative precipitation forecast (QPF) from the radar DA experiments match NCEP's stage IV analyses reasonably well in terms of location and amount of rainfall, particularly during the 0-3-h forecast period. In contrast, significant displacement errors and lower rainfall totals are evident in a control experiment that withholds radar data during the DA. The ensemble-derived probabilistic QPF (PQPF) from the radar DA experiment is more skillful than the PQPF from the no_radar experiment, based on visual inspection and probabilistic verification metrics. A novel object-based storm-tracking algorithm provides additional insight, suggesting that explicit assimilation and 1-2-h prediction of the dominant supercell is remarkably skillful in the radar experiment. The skill in both experiments is substantially higher during the 0-3-h forecast period than in the 3-6-h period. Furthermore, the difference in skill between the two forecasts decreases sharply during the latter period, indicating that the impact of radar DA is greatest during early forecast hours. Overall, the results demonstrate the potential for a frequently updated, high-resolution ensemble system to extend probabilistic low-level mesocyclone and flash flood forecast lead times and improve accuracy of convective precipitation nowcasting.
机译:使用ARW模型和DART软件的连续更新周期风暴规模集合数据同化(DA)和预测系统用于生成俄克拉荷马州中部2013年5月31日龙卷风和山洪暴发的回顾性0-6小时整体预报,着重预测强降雨。结果表明,强低水平中旋风分离器的模型预测概率与观测到的中旋风分离器的位置以及观测到的破坏轨迹非常吻合。雷达DA实验得出的集合平均定量降水预报(QPF)与NCEP的IV级分析在降雨的位置和降雨量方面相当吻合,尤其是在0-3-h预报期间。相反,在控制实验中明显的位移误差和较低的降雨总量在DA期间保留了雷达数据,这是显而易见的。基于目视检查和概率验证指标,从雷达DA实验获得的集合概率QPF(PQPF)比从no_radar实验获得的概率QPF更熟练。一种新颖的基于对象的风暴跟踪算法提供了更多的见解,表明显性同化和显性超级单元的1-2-h预测在雷达实验中非常熟练。在0-3-h的预测期内,这两个实验的技能要比在3-6-h的时间内更高。此外,两次预报之间的技能差异在后期显着下降,这表明雷达DA在早期预报时间内的影响最大。总体而言,结果表明,经常更新的高分辨率合奏系统有可能延长概率性低水平中气旋和山洪预报的交货时间,并提高对流降水临近预报的准确性。

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