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The U.S. Air Force Weather Agency's mesoscale ensemble: scientific description and performance results

机译:美国空军气象局的中尺度集合体:科学描述和性能结果

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摘要

This work evaluates several techniques to account for mesoscale initial-condition (IC) and model uncertainty in a short-range ensemble prediction system based on the Weather Research and Forecast (WRF) model. A scientific description and verification of several candidate methods for implementation in the U.S. Air Force Weather Agency mesoscale ensemble is presented. Model perturbation methods tested include multiple parametrization suites, land-surface property perturbations, perturbations to parameters within physics schemes and stochastic 'backscatter' stream-function perturbations. IC perturbations considered include perturbed observations in 10 independent WRF-3DVar cycles and the ensemble-transform Kalman filter (ETKF). A hybrid of ETKF (for IC perturbations) and WRF-3DVar (to update the ensemble mean) is also tested. Results show that all of the model and IC perturbation methods examined are more skilful than direct dynamical downscaling of the global ensemble. IC perturbations are most helpful during the first 12 h of the forecasts. Physical parametrization diversity appears critical for boundary-layer forecasts. In an effort to reduce system complexity by reducing the number of suites of physical parametrizations, a smaller set of parametrization suites was combined with perturbed parameters and stochastic backscatter, resulting in the most skilful and statistically consistent ensemble predictions.
机译:这项工作评估了几种基于天气研究和预报(WRF)模型的中尺度初始条件(IC)和模型不确定性的短期集成预报系统中的几种技术。本文对在美国空军气象局中尺度集合中实施的几种候选方法进行了科学描述和验证。测试的模型扰动方法包括多个参数化套件,地表属性扰动,物理方案中参数的扰动以及随机的“反向散射”流函数扰动。所考虑的IC扰动包括在10个独立的WRF-3DVar周期中的扰动观测以及集合变换卡尔曼滤波器(ETKF)。还测试了ETKF(用于IC扰动)和WRF-3DVar(用于更新整体平均值)的混合体。结果表明,所研究的所有模型和IC扰动方法都比直接对全局整体进行动态降尺度更熟练。在预测的前12小时,IC扰动最有帮助。物理参数化多样性对于边界层预测显得至关重要。为了通过减少物理参数化套件的数量来降低系统复杂性,将一组较小的参数化套件与扰动参数和随机反向散射结合在一起,从而得出最熟练和统计学上一致的整体预测。

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  • 来源
    《Tellus》 |2011年第3期|p.625-641|共17页
  • 作者单位

    Naval Postgraduate School, Monterey,CA, USA;

    National Center for Atmospheric Research, Boulder, CO, USA;

    National Center for Atmospheric Research, Boulder, CO, USA;

    National Center for Atmospheric Research, Boulder, CO, USA;

    National Weather Service Office of Science and Technology, Silver Spring, MD, USA;

    Air Force Weather Agency, Bellevue, NE, USA;

    National Center for Atmospheric Research, Boulder, CO, USA;

    Air Force Weather Agency, Bellevue, NE, USA;

    National Center for Atmospheric Research, Boulder, CO, USA;

    University of Oklahoma, Norman, OK, USA;

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  • 正文语种 eng
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