FOREWARNS:开发和多方面验证增强型区域尺度地表水洪水预报

Ben Maybee, C. Birch, S. Böing, T. Willis, L. Speight, Aurore N. Porson, C. Pilling, K. Shelton, M. Trigg
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摘要

摘要地表水洪水(SWF)是一种与极端对流降雨相关的严重灾害,其空间和时间上的稀疏性掩盖了它对人口和基础设施的重大影响。在有效洪水预报所需的时间和空间尺度上对造成大多数 SWF 的强对流降雨进行预报仍然极具挑战性。目前,英国发布了全国范围的洪水预报,在洪水应对人员中颇受好评,但仍需要补充增强区域信息。在此,我们提出了一种新颖的地表水预报方法 FOREWARNS(区域尺度地表水洪水预报),旨在填补预报方面的空白。FOREWARNS 将邻域处理、允许对流的集合预报系统提供的合理最坏情况降雨量与预先模拟的洪水情景进行比较,并对 SWF 的严重程度进行分类预报。我们报告了围绕英格兰北部三次历史洪水事件举办的研讨会的结果,预报用户表示他们认为预报很有帮助,并将使用 FOREWARNS 作为国家指导的补充,以便在预期事件发生前制定行动规划。我们还介绍了对 2013-2022 年英格兰北部 82 次有记录的洪水事件的预测进行客观验证的结果,以及利用洪水记录和降水代用指标对 2019-2022 年期间 725 次每日预测进行客观验证的结果。我们证明了 FOREWARNS 在预测 SWF 风险方面具有良好的技能,空间命中率高,时间误报率低,从而证实了用户的信心是合理的,FOREWARNS 适合满足用户对增强型业务预测的要求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FOREWARNS: development and multifaceted verification of enhanced regional-scale surface water flood forecasts
Abstract. Surface water flooding (SWF) is a severe hazard associated with extreme convective rainfall, whose spatial and temporal sparsity belie the significant impacts it has on populations and infrastructure. Forecasting the intense convective rainfall that causes most SWF on the temporal and spatial scales required for effective flood forecasting remains extremely challenging. National-scale flood forecasts are currently issued for the UK and are well regarded amongst flood responders, but there is a need for complementary enhanced regional information. Here we present a novel SWF-forecasting method, FOREWARNS (Flood fOREcasts for Surface WAter at a RegioNal Scale), that aims to fill this gap in forecast provision. FOREWARNS compares reasonable worst-case rainfall from a neighbourhood-processed, convection-permitting ensemble forecast system against pre-simulated flood scenarios, issuing a categorical forecast of SWF severity. We report findings from a workshop structured around three historical flood events in Northern England, in which forecast users indicated they found the forecasts helpful and would use FOREWARNS to complement national guidance for action planning in advance of anticipated events. We also present results from objective verification of forecasts for 82 recorded flood events in Northern England from 2013–2022, as well as 725 daily forecasts spanning 2019–2022, using a combination of flood records and precipitation proxies. We demonstrate that FOREWARNS offers good skill in forecasting SWF risk, with high spatial hit rates and low temporal false alarm rates, confirming that user confidence is justified and that FOREWARNS would be suitable for meeting the user requirements of an enhanced operational forecast.
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