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首页> 外文期刊>International Journal of Climatology: A Journal of the Royal Meteorological Society >Evaluation of snow cover fraction for regional climate simulations in the Sierra Nevada
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Evaluation of snow cover fraction for regional climate simulations in the Sierra Nevada

机译:内华达山脉区域气候模拟的积雪覆盖率评估

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摘要

Mountain snow cover plays an important role in regional climate due to its high albedo, its effects on atmospheric convection, and its influence on runoff. Snowpack water storage is also a critical water resource and understanding how it varies is of great social value. Models are often employed to reconstruct snowpack and explore and understand snow cover variability. Here, we use a new, accurate satellite-derived snow product to evaluate the ability of the Weather Research and Forecasting (WRF) regional climate model, combined with the Noah land surface model with multi-parameterization options (Noah-MP), to simulate snow cover fraction (SCF) and snow water equivalent (SWE) in a 3-km domain over the central Sierra Nevada. WRF/Noah-MP SWE simulations improve on previous versions of the Noah land surface model by removing an early bias in snow melt, though a 2-day positive melt bias in SWE timing remains significant at the 90% confidence level. In addition, WRF/Noah-MP identifies the areas where snow is present to within 94.3% and captures large-scale variability in SCF. Temporal root mean squared error (RMSE) of the domain-average SCF was 1938.6km(2) (24%). However, our study shows that WRF/Noah-MP struggles to simulate SCF at finer spatial scales. The parameterization for SCF fails to produce temporal variations in grid-scale SCF, and depletion occurs too rapidly. As a result, the WRF/Noah-MP SCF parameterization reduces to a binary function in mountain environments. Sensitivity tests show that adjustment of the parameterization may improve simulation of SCF during accumulation or melt but does not remove the bias for the entire snow season. Although WRF/Noah-MP accurately simulates the presence or absence of snow, high-resolution, reliable SCF estimates may only be attainable if snow depletion parameterizations are designed specifically for complex topographical areas.
机译:高山积雪由于其高反照率,对大气对流的影响以及对径流的影响,在区域气候中起着重要作用。积雪堆蓄水也是重要的水资源,了解积雪如何变化具有很大的社会价值。通常使用模型来重建积雪,并探索和了解积雪的变异性。在这里,我们使用一种新的,精确的卫星雪产品来评估天气研究和预报(WRF)区域气候模型的能力,并结合具有多参数化选项的Noah地表模型(Noah-MP)进行模拟内华达山脉中部3公里范围内的积雪覆盖率(SCF)和雪水当量(SWE)。 WRF / Noah-MP SWE模拟通过消除积雪融化的早期偏差而对Noah陆地表面模型的早期版本进行了改进,尽管在90%的置信度水平下,SWE时间的2天正融化偏差仍然很明显。此外,WRF / Noah-MP可以识别出积雪在94.3%以内的区域,并捕获了SCF的大规模变化。域平均SCF的时间均方根误差(RMSE)为1938.6km(2)(24%)。但是,我们的研究表明,WRF / Noah-MP难以在更精细的空间尺度上模拟SCF。 SCF的参数化无法产生网格规模SCF的时间变化,并且耗损发生得太快。结果,WRF / Noah-MP SCF参数化在山区环境中简化为二进制函数。敏感性测试表明,参数化的调整可以改善积雪或融雪过程中SCF的模拟,但不能消除整个雪季的偏差。尽管WRF / Noah-MP可以准确模拟雪的存在或不存在,但是只有专门针对复杂地形区域设计降雪参数设置时,才能获得高分辨率,可靠的SCF估计。

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