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Probabilistic wind speed forecasting using Bayesian model averaging with truncated normal components

机译:使用截断正态分量的贝叶斯模型平均进行概率风速预测

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摘要

Bayesian model averaging (BMA) is a statistical method for post-processing forecast ensembles of atmospheric variables, obtained from multiple runs of numerical weather prediction models, in order to create calibrated predictive probability density functions (PDFs). TheBMApredictive PDF of the future weather quantity is the mixture of the individual PDFs corresponding to the ensemble members and the weights and model parameters are estimated using forecast ensembles and validating observations from a given training period. A BMA model for calibrating wind speed forecasts is introduced using truncated normal distributions as conditional PDFs and the method is applied to the ALADIN-HUNEPS ensemble of the Hungarian Meteorological Service and to the University of Washington Mesoscale Ensemble. Three parameter estimation methods are proposed and each of the corresponding models outperforms the traditional gamma BMA model both in calibration and in accuracy of predictions.
机译:贝叶斯模型平均(BMA)是一种统计方法,用于对大气变量进行后处理的预报集合,该预报集合是从多次运行的数值天气预报模型获得的,以便创建校准的预测概率密度函数(PDF)。 BMA对未来天气量的预测PDF是与集合成员相对应的各个PDF的混合物,权重和模型参数是通过使用预测集合和验证给定训练期间的观测值进行估计的。使用截断正态分布作为条件PDF引入了用于校准风速预报的BMA模型,并将该方法应用于匈牙利气象局的ALADIN-HUNEPS合奏和华盛顿大学中尺度乐团。提出了三种参数估计方法,并且在校准和预测准确性方面,每个相应的模型均优于传统的伽马BMA模型。

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