Cold-Season Precipitation Sensitivity to Microphysical Parameterizations: Hydrologic Evaluations Leveraging Snow Lidar Datasets

IF 3.1 3区 地球科学 Q2 METEOROLOGY & ATMOSPHERIC SCIENCES Journal of Hydrometeorology Pub Date : 2023-10-30 DOI:10.1175/jhm-d-22-0217.1
W.J. Rudisill, A.N. Flores, H.P. Marshall, E. Siirila-Woodburn, D.R. Feldman, A.M. Rhoades, Z. Xu, A. Morales
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Abstract

Abstract Cloud microphysical processes are an important facet of atmospheric modeling, as they can control the initiation and rates of snowfall. Thus, parameterizations of these processes have important implications for modeling seasonal snow accumulation. We conduct experiments with the Weather Research and Forecasting (WRF V4.3.3) model using three different microphysics parameterizations, including a sophisticated new scheme (ISHMAEL). Simulations are conducted for two cold-seasons (2018 and 2019) centered on the Colorado Rockies’ ∼750 km 2 East River Watershed. Precipitation efficiencies are quantified using a drying-ratio mass budget approach and point evaluations are performed against three NRCS SNOTEL stations. Precipitation and meteorological outputs from each are used to force a land-surface model (Noah-MP) so that peak snow accumulation can be compared against airborne snow lidar products. We find that microphysical parameterization choice alone has a modest impact on total precipitation on the order of ± 3% watershed-wide, and as high as 15% for certain regions, similar to other studies comparing the same parameterizations. Precipitation biases evaluated against SNOTEL are 15 ± 13%. WRF Noah-MP configurations produced snow water equivalents with good correlations with airborne lidar products at a 1-km spatial resolution: Pearson’s r values of 0.9, RMSEs between 8-17 cm and percent-biases of 3-15%. Noah-MP with precipitation from the PRISM geostatistical precipitation product leads to a peak SWE underestimation of 32% in both years examined, and a weaker spatial correlation than the WRF configurations. We fall short of identifying a clearly superior microphysical parameterization, but conclude that snow lidar is a valuable non-traditional indicator of model performance.
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冷季降水对微物理参数化的敏感性:利用雪激光雷达数据集的水文评估
云微物理过程是大气模拟的一个重要方面,因为它们可以控制降雪的开始和速率。因此,这些过程的参数化对模拟季节积雪具有重要意义。我们对天气研究与预报(WRF V4.3.3)模型进行了实验,使用了三种不同的微物理参数化,包括一个复杂的新方案(ISHMAEL)。以科罗拉多落基山脉约750公里的东河流域为中心,对两个寒冷季节(2018年和2019年)进行了模拟。降水效率采用干比质量预算方法进行量化,并对三个NRCS SNOTEL站进行了点评价。每个区域的降水和气象输出都被用于陆地表面模式(Noah-MP),以便将峰值积雪量与机载雪激光雷达产品进行比较。我们发现,微物理参数化选择本身对总降水的影响不大,约为流域宽度的±3%,在某些地区高达15%,与比较相同参数化的其他研究相似。根据SNOTEL评估的降水偏差为15±13%。WRF Noah-MP配置产生的雪水当量与机载激光雷达产品在1公里空间分辨率下具有良好的相关性:Pearson的r值为0.9,rmse在8-17厘米之间,百分比偏差为3-15%。Noah-MP与PRISM地统计降水产品的降水导致两个年份的SWE峰值低估了32%,且空间相关性弱于WRF配置。我们没有确定一个明显优越的微物理参数化,但得出结论,雪激光雷达是一个有价值的非传统模式性能指标。
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来源期刊
Journal of Hydrometeorology
Journal of Hydrometeorology 地学-气象与大气科学
CiteScore
7.40
自引率
5.30%
发文量
116
审稿时长
4-8 weeks
期刊介绍: The Journal of Hydrometeorology (JHM) (ISSN: 1525-755X; eISSN: 1525-7541) publishes research on modeling, observing, and forecasting processes related to fluxes and storage of water and energy, including interactions with the boundary layer and lower atmosphere, and processes related to precipitation, radiation, and other meteorological inputs.
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