首页> 外文期刊>Surveys in Geophysics: An International Review Journal of Geophysics and Planetary Sciences >Remote Sensing-Derived Water Extent and Level to Constrain Hydraulic Flood Forecasting Models: Opportunities and Challenges
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Remote Sensing-Derived Water Extent and Level to Constrain Hydraulic Flood Forecasting Models: Opportunities and Challenges

机译:遥感导出的水位和水位约束水力洪水预报模型:机遇与挑战

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Accurate, precise and timely forecasts of flood wave arrival time, depth and velocity at each point of the floodplain are essential to reduce damage and save lives. Current computational capabilities support hydraulic models of increasing complexity over extended catchments. Yet a number of sources of uncertainty (e.g., input and boundary conditions, implementation data) may hinder the delivery of accurate predictions. Field gauging data of water levels and discharge have traditionally been used for hydraulic model calibration, validation and real-time constraint. However, the discrete spatial distribution of field data impedes the testing of the model skill at the two-dimensional scale. The increasing availability of spatially distributed remote sensing (RS) observations of flood extent and water level offers the opportunity for a comprehensive analysis of the predictive capability of hydraulic models. The adequate use of the large amount of information offered by RS observations triggers a series of challenging questions on the resolution, accuracy and frequency of acquisition of RS observations; on RS data processing algorithms; and on calibration, validation and data assimilation protocols. This paper presents a review of the availability of RS observations of flood extent and levels, and their use for calibration, validation and real-time constraint of hydraulic flood forecasting models. A number of conclusions and recommendations for future research are drawn with the aim of harmonising the pace of technological developments and their applications.
机译:准确,准确,及时地预测洪泛区每个点的洪水波到达时间,深度和速度,对于减少损失和挽救生命至关重要。当前的计算能力支持在扩展集水区增加复杂性的水力模型。然而,许多不确定性来源(例如,输入和边界条件,实施数据)可能会阻碍准确预测的传递。传统上,水位和流量的现场测量数据已用于水力模型校准,验证和实时约束。但是,现场数据的离散空间分布阻碍了二维技能模型技能的测试。洪水程度和水位的空间分布遥感(RS)观测值的可用性不断提高,这为全面分析水力模型的预测能力提供了机会。充分利用RS观测所提供的大量信息会引发一系列有关RS观测的分辨率,准确性和频率的挑战性问题;关于RS数据处理算法;以及校准,验证和数据同化协议。本文概述了洪水泛滥程度和水平的遥感观测的可用性,并将其用于水力洪水预报模型的校准,验证和实时约束。为了协调技术发展及其应用的步伐,提出了一些未来研究的结论和建议。

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