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Sensitivity and model reduction of simulated snow processes: Contrasting observational and parameter uncertainty to improve prediction

机译:模拟雪过程的敏感性和模型简化:对比观测和参数不确定性以改善预测

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摘要

The hydrology of high-elevation, mountainous regions is poorly represented in Earth Systems Models (ESMs), yet these ecosystems play an important role in the storage and land-atmosphere exchange of water. As much of the western United States' water comes from water stored in the snowpack (snow water equivalent, SWE), model representation of these regions is important. This study assesses how uncertainty in both model parameters and forcing affect simulated snow processes through sensitivity analysis (active subspaces) on model inputs (meteorological forcing and model input parameters) for a widely used snow model. Observations from an AmeriFlux tower at the Niwot Ridge research site are used to force an integrated, single-column hydrologic model, ParFlow-CLM. This study finds that trees can mute the effects of snow albedo causing the evergreen needleleaf scenarios to be sensitive primarily to hydrologic forcing while bare ground simulations are more sensitive to the snow parameters. The bare ground scenarios are most sensitive overall. Both forcing and model input parameters are important for obtaining accurate hydrologic model results.
机译:在地球系统模型(ESM)中,高海拔山区的水文学表现不佳,但是这些生态系统在水的存储和陆地-大气交换中起着重要作用。由于美国西部的大部分水来自积雪堆中的水(雪水当量,SWE),因此这些区域的模型表示很重要。这项研究通过对广泛使用的雪模型的模型输入(气象强迫和模型输入参数)进行敏感性分析(活动子空间)来评估模型参数和强迫的不确定性如何影响模拟的降雪过程。在Niwot Ridge研究地点的AmeriFlux塔上观察到的数据被用于推动集成的单列水文模型ParFlow-CLM。这项研究发现,树木可以消除积雪反照率的影响,从而使常绿的针叶场景主要对水文强迫敏感,而空地模拟对积雪参数更敏感。裸露的场景总体上最敏感。强迫参数和模型输入参数对于获得准确的水文模型结果都很重要。

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