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Exploring Hydrologic Model Process Connectivity at the Continental Scale Through an Information Theory Approach

机译:通过信息理论方法探索大陆规模的水文模型过程连接

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Exploring water fluxes between hydrological model (HM) components is essential to assess and improve model realism. Many classical metrics for HM diagnosis rely solely on streamflow and hence provide limited insights into model performance across processes. This study applies an information theory measure known as "transfer entropy" (TE) to systematically quantify the transfer of information among major HM components. To test and demonstrate the benefits of TE, we use the Framework for Understanding Structural Errors (FUSE) model to mimic and compare four commonly used HM structures, VIC, PRMS, SACRAMENTO, and TOPMODEL, across 671 catchments spanning a variety of hydrologic regimes in the conterminous United States. We explore connections between HM components and catchment landscape characteristics (e.g., climate, topography, soil, and vegetation) and characterize their nonlinear associations using distance correlation and Spearman correlation coefficients. Our results indicate that while the information transferred from precipitation to runoff is similar across model structures (likely as a result of calibration), the information transferred among other components can vary significantly from a FUSE structure to another. We find that aridity, precipitation duration and frequency, snow fraction, mean elevation, forest area, and leaf area index are often significantly associated with TE between the main HM components. We propose that the presence of meaningful nonlinear associations can be used to diagnose process representation in HMs. Our results highlight the necessity to enhance the conventional streamflow-only calibration approach for a more realistic representation of water dynamics in the models.
机译:探索水文模型(HM)组件之间的水通量对于评估和改善模型现实主义至关重要。 HM诊断的许多古典指标仅依赖于流流,因此提供有限的深度跨流程模拟性能。本研究适用于称为“转移熵”(TE)的信息理论措施,以系统地量化主要的HM组件之间的信息传递。要测试和展示TE的好处,我们使用框架了解结构错误(熔断器)模型来模拟,并比较四个常用的HM结构,VIC,PRMS,萨克拉门托和TOPMODEL,跨越多种水文制度的671个集水区孔雀石美国。我们探讨了HM组件和集水区景观特征(例如,气候,地形,土壤和植被)之间的连接,并使用距离相关和Spearman相关系数来表征其非线性关联。我们的结果表明,虽然从径流转移到径流的信息跨模型结构(可能导致校准)相似,但是在其他组件中传输的信息可以从熔丝结构到另一个组件的融合结构显着变化。我们发现,与主HM组件之间的TE常常显着相关,达到干燥,降水持续时间和频率,雪分数,平均升高,森林面积和叶面积指数。我们建议存在有意义的非线性关联的存在来诊断HMS中的过程表示。我们的结果突出了增强常规流流校准方法的必要性,以便在模型中进行更现实的水动态表示。

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