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Real-Time Flood Forecasting Based on a High-Performance 2-D Hydrodynamic Model and Numerical Weather Predictions

机译:基于高性能2-D流体动力模型和数值天气预报的实时洪水预测

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摘要

Abstract A flood forecasting system commonly consists of at least two essential components, that is, a numerical weather prediction (NWP) model to provide rainfall forecasts and a hydrological/hydraulic model to predict the hydrological response. While being widely used for flood forecasting, hydrological models only provide a simplified representation of the physical processes of flooding due to negligence of strict momentum conservation. They cannot reliably predict the highly transient flooding process from intense rainfall, in which case a fully 2‐D hydrodynamic model is required. Due to high computational demand, hydrodynamic models have not been exploited to support real‐time flood forecasting across a large catchment at sufficiently high resolution. To fill the current research and practical gaps, this work develops a new forecasting system by coupling a graphics processing unit (GPU) accelerated hydrodynamic model with NWP products to provide high‐resolution, catchment‐scale forecasting of rainfall‐runoff and flooding processes induced by intense rainfall. The performance of this new forecasting system is tested and confirmed by applying it to “forecast” an extreme flood event across a 2,500‐km2 catchment at 10‐m resolution. Quantitative comparisons are made between the numerical predictions and field measurements in terms of water level and flood extent. To produce simulation results comparing well with the observations, the new flood forecasting system provides 34 hr of lead time when the weather forecasts are available 36 hr beforehand. Numerical experiments further confirm that uncertainties from the rainfall inputs are not amplified by the hydrodynamic model toward the final flood forecasting outputs in this case.
机译:摘要洪水预测系统通常包括至少两个基本组件,即数字天气预报(NWP)模型,提供降雨预测和水文/液压模型,以预测水文反应。虽然广泛用于洪水预测,但水文模型仅提供由于严格的势头保护而洪水物理过程的简化表示。它们不能可靠地预测从激烈降雨中的高瞬态泛滥过程,在这种情况下,需要完全2-D流体动力学模型。由于计算需求的高,流体动力学模型尚未被利用以满足足够高分辨率的大型集水区的实时洪水预测。为了填补当前的研究和实际差距,这项工作通过耦合具有NWP产品的图形处理单元(GPU)加速的流体动力学模型来开发一个新的预测系统,以提供高分辨率,集水量预测降雨 - 径流和洪水过程强烈降雨。通过在10米分辨率下将其“预测”在2500 km2集水区内的“预测”极端洪水事件中进行了测试和确认了这一新的预测系统的表现。在水位和泛滥程度方面,在数值预测和现场测量之间进行定量比较。为了产生仿真结果与观察结果相比,新的洪水预测系统提供了34小时的11小时,预先使用了天气预报36小时。数值实验进一步证实,在这种情况下,流体动力学模型对降雨输入的不确定性不会被朝向最终洪水预测输出放大。

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