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Framework of Forecast Verification of Surface Solar Irradiance From a Numerical Weather Prediction Model Using Classification With a Gaussian Mixture Model

机译:使用高斯混合模型的数值天气预报模型从数值天气预报模型预测验证表面太阳辐照度的框架

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A clustering and classification method using a Gaussian mixture model (GMM) is used to summarize and simplify meteorological data from a numerical weather prediction (NWP) model. Each horizontal grid in the integration domain of the NWP model is characterized by a feature vector, which consists of a multivariable with multiple pressure levels. All horizontal grids at every forecast time are classified based on the GMM clustering. The classification results show that grids are clustered into air masses or disturbances with the same meteorological characteristics. This paper describes application of the proposed classification method as a framework to verify the forecast of surface solar irradiance from the NWP model. Satellite observation data are used as the reference so that verification can be performed over the integration domain of the NWP model for each air mass or disturbance that moves and changes shape over time. The mean square error (MSE) is decomposed into the square of the mean error and the MSE between variables centered on zero, the square root of which is called the centered root mean square error (CRMSE). The analyses are performed for forecast data over a 2?day forecast horizon. The change in mean error is not significant until the second day, whereas the CRMSE is maintained only during the first day. Each air mass has a different forecast error structure. The proposed framework clarifies the structure of the forecast error of the surface solar irradiance.
机译:使用高斯混合模型(GMM)的聚类和分类方法用于总结和简化来自数值天气预报(NWP)模型的气象数据。 NWP模型的集成域中的每个水平网格的特征在于特征向量,该特征向量包括多变量,具有多个压力水平。每个预测时间的所有水平网格都根据GMM群集分类。分类结果表明,网格集聚集成具有相同气象特征的空气肿块或干扰。本文介绍了所提出的分类方法作为框架,以验证来自NWP模型的表面太阳辐照度的预测。卫星观测数据用作参考,以便可以在NWP模型的集成域中进行验证,每个空气质量或随时间移动和改变形状的干扰。均方误差(MSE)被分解成平均误差的平方,并且在零的变量之间的MSE之间,其平方根称为居中的根均方误差(CRMSE)。分析是针对2?日预测地平线的预测数据进行。平均误差的变化在第二天之前没有重要,而CRMSE只在第一天保持。每个空气质量都有一个不同的预测误差结构。所提出的框架阐明了表面太阳辐照度的预测误差的结构。

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