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On the Evaluation of Probabilistic Thunderstorm Forecasts and the Automated Generation of Thunderstorm Threat Areas during Environment Canada Pan Am Science Showcase

机译:关于概率雷暴预测的评价及雷暴威胁地区的自动化生成在加拿大泛师科学展示中

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An object-based forecasting, nowcasting, and alerting system prototype was demonstrated during the summer 2015 Environment Canada Pan Am Science Showcase (ECPASS) in Toronto. Part of this demonstration involved the generation of experimental thunderstorm threat areas by both automated NWP postprocessing algorithms and by a pair of human forecasters. This paper first develops a rigorous verification methodology for the intercomparison of continuous as well as categorical probabilistic thunderstorm forecasts. The methodology is then applied to the intercomparison of thunderstorm forecasts made during ECPASS. Statistical postprocessing of forecasts by smoothing with optimal bandwidth followed by recalibration is found to improve the skill scores of all thunderstorm forecasts studied at all lead times between 6 and 48 h. In addition, the calibrated ensemble mean forecasts are found to be better than the calibrated deterministic thunderstorm forecasts for all lead times considered, though postprocessing of the convective rain-rate forecast gives results that are statistically comparable with the ensemble mean forecast. Thunderstorm threat areas that were automatically generated by thresholding the output of NWP-based postprocessed algorithms have better scores than those generated by human forecasters for most lead times beyond 9 h, indicating that they could be integrated as an automated tool for providing high-quality "first-guess" thunderstorm threat areas in an object-based forecasting, nowcasting, and alerting system. A unique contribution of this paper is a novel verification methodology for the fair comparison between continuous and categorical probabilistic forecasts, a methodology that could be used for other experiments involving human- and automatically generated object-based forecasts derived from probabilistic forecasts.
机译:在2015年夏季环境加拿大泛师科学展示(Ecpass)在多伦多的环境中,演示了基于对象的预测,漫游和警报系统原型。本演示的一部分涉及通过自动化NWP后处理算法和一对人预兆的实验雷暴威胁领域的产生。本文首先为持续的和分类概率雷暴预测开发了持续的识别方法。然后将该方法应用于ECPASS期间雷暴预测的互联网上。通过使用最佳带宽进行平滑,然后发现重新校准的预测统计后处理,以提高所有雷暴预测的技能评分在6到48小时之间的所有雷暴预测。此外,发现校准的集合平均预测比考虑的所有转线时间的校准确定性雷暴预测更好,尽管对流雨率预测的后处理提供了与集合平均预测的统计上可比的结果。通过阈值下达到基于NWP的后处理算法的输出自动生成的雷暴威胁区域具有比人类预报员产生的更好的分数,而超过9小时,表明它们可以作为提供高质量的自动工具集成为自动化工具。首先猜测“雷暴威胁领域在基于对象的预测,临近的预测和警报系统中。本文的独特贡献是一种新颖的验证方法,用于连续和分类概率预测之间的公平比较,一种方法可以用于涉及人类和自动生成的基于对象的预测的其他实验。

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