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Application of Object-Based Verification Techniques to Ensemble Precipitation Forecasts

机译:基于对象的验证技术在集合降水预报中的应用

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摘要

Both the Method for Object-based Diagnostic Evaluation (MODE) and contiguous rain area (CRA) object-based verification techniques have been used to analyze precipitation forecasts from two sets of ensembles to determine if spread-skill behavior observed using traditional measures can be seen in the object parameters. One set consisted of two eight-member Weather Research and Forecasting (WRF) model ensembles: one having mixed physics and dynamics with unperturbed initial and lateral boundary conditions (Phys) and another using common physics and a dynamic core but with perturbed initial and lateral boundary conditions (IC/LBC). Traditional measures found that spread grows much faster in IC/LBC than in Phys so that after roughly 24 h, better skill and spread are found in IC/LBC. These measures also reflected a strong diurnal signal of precipitation. The other set of ensembles included five members of a 4-km grid-spacing WRF ensemble (ENS4) and five members of a 20-km WRF ensemble (ENS20). Traditional measures suggested that the diurnal signal was better in ENS4 and spread increased more rapidly than in ENS20. Standard deviations (SDs) of four object parameters computed for the first set of ensembles using MODE and CRA showed the trend of enhanced spread growth in IC/LBC compared to Phys that had been observed in traditional measures, with the areal coverage of precipitation exhibiting the greatest growth in spread with time. The two techniques did not produce identical results; although, they did show the same general trends. A diurnal signal could be seen in the SDs of all parameters, especially rain rate, volume, and areal coverage. MODE results also found evidence of a diurnal signal and faster growth of spread in object parameters in ENS4 than in ENS20. Some forecasting approaches based on MODE and CRA output are also demonstrated. Forecasts based on averages of object parameters from each ensemble member were more skillful than forecasts based on MODE or CRA applied to an ensemble mean computed using the probability matching technique for areal coverage and volume, but differences in the two techniques were less pronounced for rain rate and displacement. The use of a probability threshold to define objects was also shown to be a valid forecasting approach with MODE.
机译:基于对象的诊断评估方法(MODE)和基于连续雨区(CRA)的基于对象的验证技术都已用于分析来自两组集合的降水预报,以确定是否可以看到使用传统方法观测到的传播技能在对象参数中。一组包含两个由八名成员组成的天气研究和预报(WRF)模型集合:一组具有混合的物理和动力学特性,且初始和侧向边界条件(Phys)不受影响,另一组使用通用物理特性和动态核心,但初始和侧向边界均受扰动条件(IC / LBC)。传统措施发现,IC / LBC中的传播速度比Phys中的传播快得多,因此大约24小时后,IC / LBC中发现了更好的技能和传播。这些措施还反映出强烈的昼夜降水信号。另一组合奏包括一个4 km网格间距WRF合奏(ENS4)的五个成员和一个20 km WRF合奏(ENS20)的五个成员。传统措施表明,ENS4的日间信号更好,传播比ENS20更快。使用MODE和CRA为第一组合奏计算的四个对象参数的标准偏差(SD)显示,与传统方法中观察到的Phys相比,IC / LBC的散布增长增强了趋势,降水的面积覆盖率显示出时间传播的最大增长。两种技术未产生相同的结果。尽管它们确实显示了相同的总体趋势。在所有参数的标准差中都可以看到一个昼夜信号,尤其是降雨率,雨量和面积覆盖率。 MODE结果还发现,ENS4中的目标参数比ENS20中的昼夜信号和散布的增长更快。还演示了一些基于MODE和CRA输出的预测方法。基于每个集合成员的目标参数平均值的预测要比基于MODE或CRA的预测的预测更加熟练,该模型使用概率匹配技术针对面积覆盖率和体积计算得出的集合平均值,但是两种方法的差异在降雨率上并不明显和位移。在MODE中,使用概率阈值定义对象也被证明是一种有效的预测方法。

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