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Evaluating the Performance of Hydrological Models via Cross-Spectral Analysis: Case Study of the Thames Basin, United Kingdom

机译:通过跨光谱分析评估水文模型的性能:以英国泰晤士河盆地为例

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Nine distributed hydrological models, forced with common meteorological inputs, simulated naturalized daily discharge from the Thames basin for 1963-2001. While model-dependent evaporative losses are critical for modeling mean discharge, multiple physical processes at many time scales influence the variability and timing of discharge. Here the use of cross-spectral analysis is advocated to measure how the average amplitude-and independently, the average phase-of modeled discharge differ from observed discharge at daily to decadal time scales. Simulation of the spectral properties of the model discharge via numerical manipulation of precipitation confirms that modeled transformation involves runoff generation and routing that amplify the annual cycle, while subsurface storage and routing of runoff between grid boxes introduces most of the autocorrelation and delays. Too much or too little modeled evaporation affects discharge variability, as do the capacity and time constants of modeled stores. Additionally, the performance of specific models would improve if four issues were tackled: 1) nonsinusoidal annual variations in model discharge (prolonged low base flow and shortened high base flow; three models), 2) excessive attenuation of high-frequency variability (three models), 3) excessive short-term variability in winter half years but too little variability in summer half years (two models), and 4) introduction of phase delays at the annual scale only during runoff generation (three models) or only during routing (one model). Cross-spectral analysis reveals how reruns of one model using alternative methods of runoff generation-designed to improve performance at the weekly to monthly time scales-degraded performance at the annual scale. The cross-spectral approach facilitates hydrological model diagnoses and development.
机译:九种分布式水文模型,在有共同的气象投入的情况下,模拟了1963-2001年泰晤士河流域的自然归化日排放量。尽管与模型有关的蒸发损失对于建模平均排放至关重要,但在许多时间尺度上的多个物理过程会影响排放的可变性和时机。在这里,提倡使用互谱分析来测量建模放电的平均振幅和独立的平均相位与每天到十年时间尺度的观测放电有何不同。通过降水的数值处理对模型排放物的光谱特性进行仿真,证实模型转换涉及径流的产生和路由,从而放大了年周期,而地下存储和网格箱之间的径流的路由引入了大多数自相关和延迟。建模的蒸发量过多或过少都会影响排放的可变性,建模的存储库的容量和时间常数也会如此。此外,如果解决了以下四个问题,则特定模型的性能将得到改善:1)模型流量的非正弦年度变化(延长的低基流和缩短的高基流;三个模型),2)高频可变性的过度衰减(三个模型) ),3)冬季半年的短期可变性过大,夏季半年的可变性太小(两个模型)和4)仅在径流生成(三个模型)或仅在径流产生期间以年尺度引入相位延迟(一种模型)。互谱分析揭示了如何使用替代的径流生成方法重新运行一个模型,该方法旨在提高每周至每月时间尺度的绩效,而降低年度尺度的绩效。跨谱方法有助于水文模型的诊断和开发。

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