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首页> 外文期刊>Journal of Hydrology >Disaggregated monthly hydrological models can outperform daily models in providing daily flow statistics and extrapolate well to a drying climate
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Disaggregated monthly hydrological models can outperform daily models in providing daily flow statistics and extrapolate well to a drying climate

机译:分解的月度水文模型在提供每日流量统计数据方面优于每日模型,并能很好地推断干旱气候

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Daily timescale hydrological information is important for many purposes such as flood estimation, predicting the consequences of catchment management and meeting the needs of freshwater ecology. In hydrological assessments, daily timestep modelling is typically used because of the availability of daily data and many of the processes governing impacts occur at this timescale. However, daily models can suffer from poor performance in certain contexts (e.g. drier climates), and their computational requirements can make it difficult to efficiently explore many sources of uncertainty in some situations, such as understanding the impacts of climate change in larger water resource systems. Here, we test an alternate approach based on monthly modelling with a postprocessing step involving monthly-to-daily disaggregation using historic flow patterns conditioned on soil moisture estimates. We apply our approach to 214 catchments across Australia representing a wide range of climate and hydrological conditions, and assess outcomes for multiple objectives spanning water supply, flood magnitude and freshwater ecological outcomes, and validate performance over an extreme multi-year drought with substantially different rainfall and streamflow characteristics. Our results show that for many metrics including sustained low flows, annual flow maxima, and high and low flow spells, the results based on monthly hydrologic modelling with daily disaggregation are generally better than those based on daily hydrological modelling. This was especially true for ecologically relevant flow metrics. In addition, the disaggregation approach fared better than the daily model when extrapolating to the multi-year dry period. Our approach also has the potential to greatly reduce the effort required to explore uncertainty in large river systems.
机译:每日时间尺度水文信息对于许多目的都很重要,例如洪水估算、预测集水区管理的后果和满足淡水生态的需求。在水文评估中,通常使用每日时间步长建模,因为每日数据的可用性,并且许多控制影响的过程都发生在这个时间尺度上。然而,日常模型在某些情况下(例如较干燥的气候)可能会表现不佳,并且其计算要求可能使得在某些情况下难以有效地探索许多不确定性来源,例如了解气候变化对大型水资源系统的影响。在这里,我们测试了一种基于月度建模的替代方法,其后处理步骤涉及使用以土壤湿度估计为条件的历史流动模式进行每月到每天的分解。我们将我们的方法应用于澳大利亚各地的 214 个集水区,这些集水区代表了广泛的气候和水文条件,并评估了涵盖供水、洪水规模和淡水生态结果的多个目标的结果,并验证了在降雨量和流量特征大不相同的极端多年干旱中的性能。结果表明,对于持续低流量、年流量最大值、高低流量等指标,基于月度水文建模和每日分解的结果普遍优于基于日水文建模的结果。对于与生态相关的流量指标尤其如此。此外,在外推到多年干旱期时,分解方法的表现优于日模型。我们的方法也有可能大大减少探索大型河流系统不确定性所需的工作量。

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