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Application of Spatial Verification Methods to Idealized and NWP-Gridded Precipitation Forecasts

机译:空间验证方法在理想化和NWP网格化降水预报中的应用

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Several spatial forecast verification methods have been developed that are suited for high-resolution precipitation forecasts. They can account for the spatial coherence of precipitation and give credit to a forecast that does not necessarily match the observation at any particular grid point. The methods were grouped into four broad categories (neighborhood, scale separation, features based, and field deformation) for the Spatial Forecast Verification Methods Intercomparison Project (ICP). Participants were asked to apply their new methods to a set of artificial geometric and perturbed forecasts with prescribed errors, and a set of real forecasts of convective precipitation on a 4-km grid. This paper describes the intercomparison test cases, summarizes results from the geometric cases, and presents subjective scores and traditional scores from the real cases. All the new methods could detect bias error, and the features-based and field deformation methods were also able to diagnose displacement errors of precipitation features. The best approach for capturing errors in aspect ratio was field deformation. When comparing model forecasts with real cases, the traditional verification scores did not agree with the subjective assessment of the forecasts.
机译:已经开发了几种适用于高分辨率降水预报的空间预报验证方法。它们可以解释降水的空间连贯性,并可以归因于不一定与任何特定网格点的观测值相匹配的预测。对于空间预测验证方法比较项目(ICP),这些方法分为四大类(邻域,尺度分离,基于特征和场变形)。要求参与者将其新方法应用于一组具有规定误差的人造几何和扰动预报,以及一组在4 km网格上对流降水的真实预报。本文描述了比较测试用例,总结了几何案例的结果,并提出了真实案例的主观评分和传统评分。所有这些新方法都可以检测偏斜误差,基于特征和场变形的方法也能够诊断降水特征的位移误差。捕获长宽比误差的最佳方法是场变形。在将模型预测与实际案例进行比较时,传统的验证分数与预测的主观评估不一致。

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