Hydrological modeling using distributed rainfall data to represent the flow in urban watersheds

Pub Date : 2022-01-01 DOI:10.1590/2318-0331.272220220060
L. Amorim, A. Magalhães, JOSE RODOLFO SCARATI MARTINS, B. Duarte, F. Nogueira
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Abstract

ABSTRACT Hydrological models are one of the most effective ways of assessing water behavior and flood risk, although the quality of their results is determined by the input data representativity, especially rainfall. Normally, only rain gauge data is used, unable to represent rain spatial variability. Aiming to reduce the model’s uncertainties, hydrological model performance was evaluated in determining the runoff based on distributed rainfall data applied in an urban watershed with macro drainage structures. A distributed rainfall data, derived from a conditional merging of radar and field measurements, was used as the hydrological model’s input data, and led to very accurate runoff results. The analysis of the results demonstrated that to model urban watersheds with accuracy, distributed rainfall data is required, as well as knowledge about the sewage and drainage systems, reinforcing the need to use tools that are compatible with the site complexity.
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利用分布式降雨数据来表示城市流域流量的水文建模
水文模型是评估水行为和洪水风险的最有效方法之一,尽管其结果的质量取决于输入数据的代表性,特别是降雨量。通常,只使用雨量计数据,无法表示降雨的空间变异性。为了减少模型的不确定性,基于具有宏观排水结构的城市流域的分布式降雨数据,对水文模型在确定径流时的性能进行了评估。通过有条件地合并雷达和实地测量得到的分布式降雨数据被用作水文模型的输入数据,得出了非常准确的径流结果。对结果的分析表明,为了准确地模拟城市流域,需要分布式降雨数据,以及有关污水和排水系统的知识,这加强了使用与场地复杂性兼容的工具的必要性。
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