论文标题
灵活的峰值风暴潮预测的框架
A Framework for Flexible Peak Storm Surge Prediction
论文作者
论文摘要
风暴潮是沿海地区的主要自然危害,均导致重大财产损失和生命损失。需要准确,高效的风暴潮模型来评估长期风险和指导紧急管理决策。虽然高保真的区域和全球循环模型(例如高级循环(ADCIRC)模型)可以准确预测风暴潮,但它们在计算上非常昂贵。在这里,我们基于多阶段方法开发了一种新型的替代模型,以用于峰值风暴浪潮预测。在第一阶段,点是否归为淹没。在第二个,预测淹没水平。此外,我们提出了一种对替代问题的新表述,其中每个点都独立预测风暴潮。这允许直接对训练数据中不存在的位置进行预测,并显着减少模型参数的数量。我们在两个研究领域展示了我们的建模框架:德克萨斯州海岸和阿拉斯加海岸的北部。对于德克萨斯州,该模型经过446个合成飓风的数据库培训。该模型能够准确匹配一组合成风暴的ADCIRC预测。我们进一步介绍了关于飓风Ike(2008)和Harvey(2017)的模型的测试。对于阿拉斯加,该模型在109个历史激增事件的数据集上进行了培训。我们测试了实际激增事件的替代模型,包括在训练数据中发生事件后发生的最近的台风Merbok(2022)。对于两个数据集,与观察数据相比,替代模型在真实事件上的性能与ADCIRC相似。在这两种情况下,替代模型的数量级都比ADCIRC快。
Storm surge is a major natural hazard in coastal regions, responsible both for significant property damage and loss of life. Accurate, efficient models of storm surge are needed both to assess long-term risk and to guide emergency management decisions. While high-fidelity regional- and global-ocean circulation models such as the ADvanced CIRCulation (ADCIRC) model can accurately predict storm surge, they are very computationally expensive. Here we develop a novel surrogate model for peak storm surge prediction based on a multi-stage approach. In the first stage, points are classified as inundated or not. In the second, the level of inundation is predicted . Additionally, we propose a new formulation of the surrogate problem in which storm surge is predicted independently for each point. This allows for predictions to be made directly for locations not present in the training data, and significantly reduces the number of model parameters. We demonstrate our modeling framework on two study areas: the Texas coast and the northern portion of the Alaskan coast. For Texas, the model is trained with a database of 446 synthetic hurricanes. The model is able to accurately match ADCIRC predictions on a test set of synthetic storms. We further present a test of the model on Hurricanes Ike (2008) and Harvey (2017). For Alaska, the model is trained on a dataset of 109 historical surge events. We test the surrogate model on actual surge events including the recent Typhoon Merbok (2022) that take place after the events in the training data. For both datasets, the surrogate model achieves similar performance to ADCIRC on real events when compared to observational data. In both cases, the surrogate models are many orders of magnitude faster than ADCIRC.