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Analysis of an extreme weather event in a hyper-arid region using WRF-Hydro coupling, station, and satellite data

机译:使用WRF-Hydro耦合,站和卫星数据分析超干旱地区的极端天气事件

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This study investigates an extreme weather event that impacted the United Arab Emirates (UAE) in March 2016, using the Weather Research and Forecasting (WRF) model version 3.7.1 coupled with its hydrological modeling extension package (WRF-Hydro). Six-hourly forecasted forcing records at 0.5 degrees spatial resolution, obtained from the National Center for Environmental Prediction (NCEP) Global Forecast System (GFS), are used to drive the three nested downscaling domains of both standalone WRF and coupled WRF-WRF-Hydro configurations for the recent flood-triggering storm. Ground and satellite observations over the UAE are employed to validate the model results. The model performance was assessed using precipitation from the Global Precipitation Measurement (GPM) mission (30 min, 0.1 degrees product), soil moisture from the Advanced Microwave Scanning Radiometer 2 (AMSR2; daily, 0.1 degrees product) and the NOAA Soil Moisture Operational Products System (SMOPS; 6-hourly, 0.25 degrees product), and cloud fraction retrievals from the Moderate Resolution Imaging Spectroradiometer Atmosphere product (MODATM; daily, 5 km product). The Pearson correlation coefficient (PCC), relative bias (rBIAS), and root-mean-square error (RMSE) are used as performance measures. Results show reductions of 24 % and 13 % in RMSE and rBIAS measures, respectively, in precipitation forecasts from the coupled WRF-WRF-Hydro model configuration, when compared to standalone WRF. The coupled system also shows improvements in global radiation forecasts, with reductions of 45 % and 12 % for RMSE and rBIAS, respectively. Moreover, WRF-Hydro was able to simulate the spatial distribution of soil moisture reasonably well across the study domain when compared to AMSR2 derived soil moisture estimates, despite a noticeable dry and wet bias in areas where soil moisture is high and low. Temporal and spatial variabilities of simulated soil moisture compare well to estimates from the NOAA SMOPS product, which i
机译:本研究调查了一项极端的天气事件,影响了2016年3月的阿拉伯联合酋长国(阿联酋),使用天气研究和预测(WRF)模型3.7.1版与其水文建模延伸包(WRF-Hydro)相结合。从国家环境预测中心(NCEP)全球预测系统(GFS)获得的六小时预测营造出来的速度为0.5度空间分辨率,用于驱动独立WRF和耦合WRF-WRF-Hydro的三个嵌套缩小域最近洪水触发风暴的配置。对阿联酋的地面和卫星观测用于验证模型结果。通过从全球降水测量(GPM)任务(30分钟,0.1度产品),从先进的微波扫描辐射计2(AMSR2; Doying,0.1度,0.1度)和Noaa土壤水分运营产品的土壤水分进行评估模型性能系统(SMOP; 6小时,0.25度),以及来自中等分辨率的成像光谱辐射计大气产品的云分数检索(Modatm;每日,5km产品)。 Pearson相关系数(PCC),相对偏置(RBIAS)和根均方误差(RMSE)用作性能测量。结果分别显示RMSE和RBIAS措施中的24%和13%的减少,与独立WRF相比,在耦合的WRF-WRF-Wydro-Wydro-Wydro-Model模型配置中降水预测。耦合系统还显示出全球辐射预测的改进,分别减少了45%和12%的RMSE和RBIA。此外,与AMSR2衍生的土壤水分估算相比,WRF-Hydro能够在研究领域相比,在研究领域的情况下,尽管土壤水分高且较低的区域。模拟土壤水分的时间和空间变化比较来自NOAA SMOP产品的估算,我

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    Khalifa Univ Sci &

    Technol Dept Civil Infrastruct &

    Environm Engn POB 54224 Abu Dhabi U Arab Emirates;

    Khalifa Univ Sci &

    Technol Dept Civil Infrastruct &

    Environm Engn POB 54224 Abu Dhabi U Arab Emirates;

    Khalifa Univ Sci &

    Technol Dept Civil Infrastruct &

    Environm Engn POB 54224 Abu Dhabi U Arab Emirates;

    CUNY NOAA Crest Inst 160 Convent Ave New York NY 10031 USA;

    Univ Hohenheim Inst Phys &

    Meteorol Garbenstr 30 D-70599 Stuttgart Germany;

    Univ Hohenheim Inst Phys &

    Meteorol Garbenstr 30 D-70599 Stuttgart Germany;

    Univ Hohenheim Inst Phys &

    Meteorol Garbenstr 30 D-70599 Stuttgart Germany;

    5NOAA NESDIS Ctr Satellite Applicat &

    Res STAR 5830 Univ Res Court College Pk MD 20740 USA;

    5NOAA NESDIS Ctr Satellite Applicat &

    Res STAR 5830 Univ Res Court College Pk MD 20740 USA;

    NCM POB 4815 Abu Dhabi U Arab Emirates;

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  • 正文语种 eng
  • 中图分类 地球物理学;
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