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首页> 外文期刊>Water resources research >Uncertainties in Snowpack Simulations-Assessing the Impact of Model Structure, Parameter Choice, and Forcing Data Error on Point-Scale Energy Balance Snow Model Performance
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Uncertainties in Snowpack Simulations-Assessing the Impact of Model Structure, Parameter Choice, and Forcing Data Error on Point-Scale Energy Balance Snow Model Performance

机译:Snowpack仿真中的不确定性-评估模型结构,参数选择和强制数据错误对点尺度能量平衡雪模型性能的影响

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In this study, we assess the impact of forcing data errors, model structure, and parameter choices on 1-D snow simulations simultaneously within a global variance-based sensitivity analysis framework. This approach allows inclusion of interaction effects, drawing a more representative picture of the resulting sensitivities. We utilize all combinations of a multiphysics snowpack model to mirror the influence of model structure. Uncertainty ranges of model parameters and input data are extracted from the literature. We evaluate a suite of 230,000 model realizations at the snow monitoring station Kuhtai (Tyrol, Austria, 1,920 m above sea level) against snow water equivalent observations. The results show throughout the course of 25 winter seasons (1991-2015) and different model performance criteria a large influence of forcing data uncertainty and its interactions on the model performance. Mean interannual total sensitivity indices are in the general order of parameter choice model structure forcing error, with precipitation, air temperature, and the radiative forcings controlling the variance during the accumulation period and air temperature and longwave irradiance controlling the variance during the ablation period, respectively. Model skill is highly sensitive to the snowpack liquid water transport scheme throughout the whole winter period and to albedo representation during the ablation period. We found a sufficiently long evaluation period (10 years) is required for robust averaging. A considerable interaction effect was revealed, indicating that an improvement in the knowledge (i.e., reduction of uncertainty) of one factor alone might not necessarily improve model results.
机译:在这项研究中,我们评估了在基于全局方差的敏感性分析框架中同时强迫数据错误,模型结构和参数选择对一维降雪模拟的影响。这种方法允许包含相互作用效应,从而绘制出更具敏感性的结果图。我们利用多物理场积雪模型的所有组合来反映模型结构的影响。模型参数和输入数据的不确定性范围是从文献中提取的。我们针对雪水当量观测值,评估了雪监测站Kuhtai(奥地利蒂罗尔,海拔1920 m)上的23万个模型实现套件。结果表明,在25个冬季(1991-2015年)的整个过程中,不同的模型性能标准对强迫数据不确定性及其相互作用对模型性能的影响很大。年平均总灵敏度指数按参数选择<模型结构<强迫误差,降水,气温和辐射强迫控制累积顺序的一般顺序,而辐射强迫控制累积期间的方差,而气温和长波辐照度控制消融期间的方差, 分别。模型技能对整个冬季的积雪液态水运输方案以及消融期间的反照率表示高度敏感。我们发现稳健平均需要足够长的评估期(> 10年)。揭示了显着的交互作用,表明仅增加一个因素的知识(即减少不确定性)可能不一定会改善模型结果。

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