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Evaluations of WRF Sensitivities in Surface Simulations with an Ensemble Prediction System

机译:使用集成预测系统评估表面模拟中的WRF灵敏度

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This paper investigates the sensitivities of the Weather Research and Forecasting (WRF) model simulations to different parameterization schemes (atmospheric boundary layer, microphysics, cumulus, longwave and shortwave radiations and other model configuration parameters) on a domain centered over the inter-mountain western United States (U.S.). Sensitivities are evaluated through a multi-model, multi-physics and multi-perturbation operational ensemble system based on the real-time four-dimensional data assimilation (RTFDDA) forecasting scheme, which was developed at the National Center for Atmospheric Research (NCAR) in the United States. The modeling system has three nested domains with horizontal grid intervals of 30 km, 10 km and 3.3 km. Each member of the ensemble system is treated as one of 48 sensitivity experiments. Validation with station observations is done with simulations on a 3.3-km domain from a cold period (January) and a warm period (July). Analyses and forecasts were run every 6 h during one week in each period. Performance metrics, calculated station-by-station and as a grid-wide average, are the bias, root mean square error (RMSE), mean absolute error (MAE), normalized standard deviation and the correlation between the observation and model. Across all members, the 2-m temperature has domain-average biases of ?1.5–0.8 K; the 2-m specific humidity has biases from ?0.5–?0.05 g/kg; and the 10-m wind speed and wind direction have biases from 0.2–1.18 m/s and ?0.5–4 degrees, respectively. Surface temperature is most sensitive to the microphysics and atmospheric boundary layer schemes, which can also produce significant differences in surface wind speed and direction. All examined variables are sensitive to data assimilation.
机译:本文研究了以美国西部山脉之间为中心的区域上的天气研究和预测(WRF)模型模拟​​对不同参数化方案(大气边界层,微物理,积云,长波和短波辐射以及其他模型配置参数)的敏感性。国家(美国)。灵敏度是通过基于实时四维数据同化(RTFDDA)预测方案的多模型,多物理场和多扰动操作集成系统进行评估的,该系统是由美国国家大气研究中心(NCAR)在2000年开发的美国。该建模系统具有三个嵌套域,其水平网格间隔分别为30 km,10 km和3.3 km。集成系统的每个成员都被视为48个敏感性实验之一。在寒冷期(一月)和暖期(七月)的3.3公里范围内,通过站观测的验证进行了模拟。在每个期间的一周内,每6小时进行一次分析和预测。逐个站点计算并作为网格范围内平均值的性能指标包括偏差,均方根误差(RMSE),平均绝对误差(MAE),归一化标准偏差以及观测值与模型之间的相关性。在所有成员中,2 m温度的磁畴平均偏置为1.5-0.8K。 2 m比湿的偏差在0.5-0.05 g / kg之间; 10-m风速和风向的偏差分别为0.2-1.18 m / s和?0.5-4度。表面温度对微观物理学和大气边界层方案最敏感,这也会在表面风速和风向上产生显着差异。所有检查的变量都对数据同化敏感。

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