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Quantifying new water fractions and transit time distributions using ensemble hydrograph separation: theory and benchmark tests

机译:使用集合水文法分离量化新的水份和渡越时间分布:理论和基准测试

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Decades of hydrograph separation studies have estimated the proportions of recent precipitation in streamflow using end-member mixing of chemical or isotopic tracers. Here I propose an ensemble approach to hydrograph separation that uses regressions between tracer fluctuations in precipitation and discharge to estimate the average fraction of new water (e.g., same-day or same-week precipitation) in streamflow across an ensemble of time steps. The points comprising this ensemble can be selected to isolate conditions of particular interest, making it possible to study how the new water fraction varies as a function of catchment and storm characteristics. Even when new water fractions are highly variable over time, one can show mathematically (and confirm with benchmark tests) that ensemble hydrograph separation will accurately estimate their average. Because ensemble hydrograph separation is based on correlations between tracer fluctuations rather than on tracer mass balances, it does not require that the end-member signatures are constant over time, or that all the end-members are sampled or even known, and it is relatively unaffected by evaporative isotopic fractionation. Ensemble hydrograph separation can also be extended to a multiple regression that estimates the average (or “marginal”) transit time distribution (TTD) directly from observational data. This approach can estimate both “backward” transit time distributions (the fraction of streamflow that originated as rainfall at different lag times) and “forward” transit time distributions (the fraction of rainfall that will become future streamflow at different lag times), with and without volume-weighting, up to a user-determined maximum time lag. The approach makes no assumption about the shapes of the transit time distributions, nor does it assume that they are time-invariant, and it does not require continuous time series of tracer measurements. Benchmark tests with a nonlinear, nonstationary catchment model confirm that ensemble hydrograph separation reliably quantifies both new water fractions and transit time distributions across widely varying catchment behaviors, using either daily or weekly tracer concentrations as input. Numerical experiments with the benchmark model also illustrate how ensemble hydrograph separation can be used to quantify the effects of rainfall intensity, flow regime, and antecedent wetness on new water fractions and transit time distributions.
机译:数十年的水文学分离研究已经使用化学或同位素示踪剂的末端成员混合来估算近期降水在水流中的比例。在这里,我提出了一种水文分离的整体方法,该方法使用降水和流量的示踪物波动之间的回归来估算整个时间步长中新水流(例如当天或同一周的降水)的平均比例。可以选择组成该集合的各个点以隔离特别感兴趣的条件,从而有可能研究新的水分量如何根据集水区和风暴特征而变化。即使新的水分数随时间变化很大,人们也可以通过数学方法证明(并通过基准测试确认)整体水文图分离将准确地估算出它们的平均值。因为整体水文图的分离是基于示踪物波动之间的相关性,而不是基于示踪物质量平衡,所以它不需要端成员签名随时间变化是恒定的,或者不需要对所有端成员进行采样甚至是已知的,并且相对不受蒸发同位素分馏的影响。集合水文分离还可以扩展到多元回归,该回归可以直接从观测数据估算平均(或“边际”)渡越时间分布(TTD)。这种方法既可以估算“向后”的过渡时间分布(在不同滞后时间起源于降雨的水流比例),也可以估算“正向”的过渡时间分布(在不同滞后时间成为未来水流的降雨比例),分别为和如果不进行体积加权,则最多可达到用户确定的最大时滞。该方法没有假设通过时间分布的形状,也没有假设它们是时不变的,并且不需要跟踪器测量的连续时间序列。使用非线性,非平稳流域模型进行的基准测试证实,集合水位图分离法可以可靠地量化新水含量和跨大范围流域行为的渡越时间分布,并使用每日或每周示踪剂浓度作为输入。使用基准模型进行的数值实验还说明了如何使用集合水文法分离来量化降雨强度,流态和前期湿度对新水份和渡越时间分布的影响。

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