Consortium of Universities for the Advancement of Hydrologic Science, Inc., Cambridge, MA, USA.
Department of Civil, Construction and Environmental Engineering, University of Alabama, Tuscaloosa, AL, USA.
Sci Rep. 2019 May 9;9(1):7171. doi: 10.1038/s41598-019-43496-w.
The massive socioeconomic impacts engendered by extreme floods provides a clear motivation for improved understanding of flood drivers. We use self-organizing maps, a type of artificial neural network, to perform unsupervised clustering of climate reanalysis data to identify synoptic-scale atmospheric circulation patterns associated with extreme floods across the United States. We subsequently assess the flood characteristics (e.g., frequency, spatial domain, event size, and seasonality) specific to each circulation pattern. To supplement this analysis, we have developed an interactive website with detailed information for every flood of record. We identify four primary categories of circulation patterns: tropical moisture exports, tropical cyclones, atmospheric lows or troughs, and melting snow. We find that large flood events are generally caused by tropical moisture exports (tropical cyclones) in the western and central (eastern) United States. We identify regions where extreme floods regularly occur outside the normal flood season (e.g., the Sierra Nevada Mountains due to tropical moisture exports) and regions where multiple extreme flood events can occur within a single year (e.g., the Atlantic seaboard due to tropical cyclones and atmospheric lows or troughs). These results provide the first machine-learning based near-continental scale identification of atmospheric circulation patterns associated with extreme floods with valuable insights for flood risk management.
极端洪水造成的巨大社会经济影响为更好地了解洪水驱动因素提供了明确的动力。我们使用自组织映射(一种人工神经网络)对气候再分析数据进行无监督聚类,以识别与美国各地极端洪水相关的天气尺度大气环流模式。随后,我们评估了每种环流模式特有的洪水特征(例如,频率、空间域、事件规模和季节性)。为了补充这一分析,我们开发了一个带有详细记录洪水信息的交互式网站。我们确定了四种主要的环流模式:热带湿气输出、热带气旋、大气低压或槽以及融雪。我们发现,大型洪水事件通常是由美国西部和中部(东部)的热带湿气输出(热带气旋)引起的。我们确定了在正常洪水季节之外经常发生极端洪水的地区(例如,内华达山脉由于热带湿气输出)以及在一年内可能发生多次极端洪水事件的地区(例如,由于热带气旋和大气低压或槽,大西洋沿岸)。这些结果提供了基于机器学习的与极端洪水相关的大气环流模式的首次近大陆尺度识别,为洪水风险管理提供了有价值的见解。