Zimeena Rasheed , Akshay Aravamudan , Xi Zhang , Georgios C. Anagnostopoulos , Efthymios I. Nikolopoulos
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引用次数: 0
Abstract
Increasing flood risk due to urbanization and climate change poses a significant challenge to societies at global scale. Hydrologic information that is required for understanding flood processes and for developing effective warning procedures is currently lacking in most parts of the world. Procedures that can combine global climate dataset from satellite and reanalysis with fast and low computational cost prediction systems, are attractive solutions for addressing flood predictions in ungauged areas. This work develops and tests a prediction framework that relies on two fundamental components. First, meteorological data from global datasets (IMERG and ERA5-Land) provide key input variables and second, ML models trained in the data-rich contiguous US, are applied in climatically similar regions in other parts of the world. Catchments in Australia, Brazil, Chile, Switzerland, and Great Britain were used as pseudo-ungauged regions for testing. Results indicate acceptable performance for both IMERG and ERA5-Land forced models with relative difference in flood peak prediction within 30 % and similar overall performance to locally trained ML models. Specific climate regions for which ML models have revealed good performance include Mediterranean climates like the US West Coast, subtropical areas like the Southern Atlantic Gulf, and mild temperate regions like the Mid-Atlantic Basin. This work highlights the potential of combining global precipitation dataset with pre-trained ML models in data-rich areas, for flood prediction in ungauged areas with similar climate.
城市化和气候变化导致洪水风险不断增加,给全球社会带来了巨大挑战。目前,世界大部分地区都缺乏了解洪水过程和制定有效预警程序所需的水文信息。能够将卫星和再分析的全球气候数据集与快速、低计算成本的预测系统相结合的程序,是解决无测站地区洪水预测问题的有吸引力的解决方案。这项工作开发并测试了一个依靠两个基本组成部分的预测框架。首先,来自全球数据集(IMERG 和 ERA5-Land)的气象数据提供了关键输入变量;其次,在数据丰富的美国毗连区训练的 ML 模型被应用于世界其他地区气候相似的区域。澳大利亚、巴西、智利、瑞士和英国的集水区被用作测试的假缺雨地区。结果表明,IMERG 和 ERA5 陆地强迫模型的性能可以接受,洪峰预测的相对差异在 30% 以内,总体性能与本地训练的 ML 模型相似。ML 模型表现良好的特定气候区包括美国西海岸等地中海气候区、南大西洋海湾等亚热带地区以及大西洋中部盆地等温带地区。这项工作凸显了在数据丰富地区将全球降水数据集与预先训练的 ML 模型相结合,用于气候相似的无测站地区洪水预测的潜力。
期刊介绍:
Advances in Water Resources provides a forum for the presentation of fundamental scientific advances in the understanding of water resources systems. The scope of Advances in Water Resources includes any combination of theoretical, computational, and experimental approaches used to advance fundamental understanding of surface or subsurface water resources systems or the interaction of these systems with the atmosphere, geosphere, biosphere, and human societies. Manuscripts involving case studies that do not attempt to reach broader conclusions, research on engineering design, applied hydraulics, or water quality and treatment, as well as applications of existing knowledge that do not advance fundamental understanding of hydrological processes, are not appropriate for Advances in Water Resources.
Examples of appropriate topical areas that will be considered include the following:
• Surface and subsurface hydrology
• Hydrometeorology
• Environmental fluid dynamics
• Ecohydrology and ecohydrodynamics
• Multiphase transport phenomena in porous media
• Fluid flow and species transport and reaction processes