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首页> 外文期刊>Hydrology and Earth System Sciences >Statistical modelling and climate variability of compound surge and precipitation events in a managed water system: a case study in the Netherlands
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Statistical modelling and climate variability of compound surge and precipitation events in a managed water system: a case study in the Netherlands

机译:管理水系统中复合浪涌和降水事件的统计建模和气候变异性:荷兰的案例研究

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The co-occurrence of (not necessarily extreme) precipitation and surge can lead to extreme inland water levels in coastal areas. In a previous work the positive dependence between the two meteorological drivers was demonstrated in a managed water system in the Netherlands by empirically investigating an 800-year time series of water levels, which were simulated via a physical-based hydrological model driven by a regional climate model large ensemble. In this study, we present an impact-focused multivariate statistical framework to model the dependence between these flooding drivers and the resulting return periods of inland water levels. This framework is applied to the same managed water system using the aforementioned large ensemble. Composite analysis is used to guide the selection of suitable predictors and to obtain an impact function that optimally describes the relationship between high inland water levels (the impact) and the explanatory predictors. This is complex due to the high degree of human management affecting the dynamics of the water level. Training the impact function with subsets of data uniformly distributed along the range of water levels plays a major role in obtaining an unbiased performance. The dependence structure between the defined predictors is modelled using two- and three-dimensional copulas. These are used to generate paired synthetic precipitation and surge events, transformed into inland water levels via the impact function. The compounding effects of surge and precipitation and the return water level estimates fairly well reproduce the earlier results from the empirical analysis of the same regional climate model ensemble. Regarding the return levels, this is quantified by a root-mean-square deviation of 0.02? m . The proposed framework is able to produce robust estimates of compound extreme water levels for a highly managed hydrological system. Even though the framework has only been applied and validated in one study area, it shows great potential to be transferred to other areas. In addition, we present a unique assessment of the uncertainty when using only 50?years of data (what is typically available from observations). Training the impact function with short records leads to a general underestimation of the return levels as water level extremes are not well sampled. Also, the marginal distributions of the 50-year time series of the surge show high variability. Moreover, compounding effects tend to be underestimated when using 50-year slices to estimate the dependence pattern between predictors. Overall, the internal variability of the climate system is identified as a major source of uncertainty in the multivariate statistical model.
机译:(不一定极端)降水和浪涌的共同发生可能导致沿海地区的极端内陆水平。在先前的工作中,通过经验研究了一个800年的时间序列水平,在荷兰的管理水系统中证明了两种气象司机之间的积极依赖性,这些水平是由区域气候驱动的物理水文模型模拟的模型大集合。在这项研究中,我们提出了一种以影响为重点的多变量统计框架,以模拟这些洪水驱动因素之间的依赖性以及内陆水位的返回时期。该框架应用于使用上述大型集合的相同托管水系统。复合分析用于指导选择合适的预测因子并获得影响功能,以最佳地描述高内陆水位(冲击)与解释性预测器之间的关系。由于影响水位动态的人类管理程度高,这是复杂的。培训具有沿着水平范围均匀分布的数据子集的冲击功能在获得无偏见的性能方面发挥了重要作用。定义的预测器之间的依赖性结构是使用两维的共同组合建模的。这些用于产生配对的合成沉淀和浪涌事件,通过冲击功能转变为内陆水平。浪涌和降水的复合效应和返回水位估计相当良好地重现了同一区域气候模型集合的实证分析的先前结果。关于返回水平,通过0.02的根均方偏差量化,这是量化的? m。所提出的框架能够为高度管理的水文系统生产复合极水水平的强大估计。尽管框架仅在一个研究区域应用和验证,但它显示出转移到其他地区的巨大潜力。此外,我们在使用仅50多年数据时,我们对不确定性的独特评估(通常可从观察中获得)。培训短记录的影响功能导致返回水平的一般低估,因为水位极端不是很好的采样。此外,50年代速率的边际分布浪涌显示出高变化。此外,在使用50年的切片时倾向于低估复合效果来估计预测因子之间的依赖模式。总体而言,气候系统的内部变异被确定为多元统计模型中不确定性的主要来源。

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