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Using Bayesian Model Averaging to Calibrate Forecast Ensembles

机译:使用贝叶斯平均模型校准预测集合

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Ensembles used for probabilistic weather forecasting often exhibit a spread-error correlation, but they tend to be underdispersive. This paper proposes a statistical method for postprocessing ensembles based on Bayesian model averaging (BMA), which is a standard method for combining predictive distributions from different sources. The BMA predictive probability density function (PDF) of any quantity of interest is a weighted average of PDFs centered on the individual bias-corrected forecasts, where the weights are equal to posterior probabilities of the models generating the forecasts and reflect the models' relative contributions to predictive skill over the training period. The BMA weights can be used to assess the usefulness of ensemble members, and this can be used as a basis for selecting ensemble members; this can be useful given the cost of running large ensembles. The BMA PDF can be represented as an unweighted ensemble of any desired size, by simulating from the BMA predictive distribution. The BMA predictive variance can be decomposed into two components, one corresponding to the between-forecast variability, and the second to the within-forecast variability. Predictive PDFs or intervals based solely on the ensemble spread incorporate the first component but not the second. Thus BMA provides a theoretical explanation of the tendency of ensembles to exhibit a spread-error correlation but yet be underdispersive. The method was applied to 48-h forecasts of surface temperature in the Pacific Northwest in January-June 2000 using the University of Washington fifth-generation Pennsylvania State University-NCAR Me-soscale Model (MM5) ensemble. The predictive PDFs were much better calibrated than the raw ensemble, and the BMA forecasts were sharp in that 90% BMA prediction intervals were 66% shorter on average than those produced by sample climatology. As a by-product, BMA yields a deterministic point forecast, and this had root-mean-square errors 7% lower than the best of the ensemble members and 8% lower than the ensemble mean. Similar results were obtained for forecasts of sea level pressure. Simulation experiments show that BMA performs reasonably well when the underlying ensemble is calibrated, or even overdis-persed.
机译:用于概率天气预报的合奏通常表现出传播误差相关性,但它们往往散布不充分。本文提出了一种基于贝叶斯模型平均(BMA)的后处理合奏统计方法,该方法是组合来自不同来源的预测分布的标准方法。任何关注量的BMA预测概率密度函数(PDF)是以单个偏差校正的预测为中心的PDF的加权平均值,其中权重等于生成预测并反映模型相对贡献的模型的后验概率训练期间的预测技能。 BMA权重可用于评估合奏成员的有用性,并且可以用作选择合奏成员的基础。考虑到运行大型合奏的成本,这可能很有用。通过根据BMA预测分布进行模拟,可以将BMA PDF表示为任何所需大小的未加权集合。 BMA预测方差可分解为两个分量,一个分量对应于预测之间的变异性,第二个对应于预测内的变异性。仅基于整体分布的预测PDF或间隔包含第一个组成部分,而不包含第二个组成部分。因此,BMA为合奏具有展布误差相关性但色散不足的趋势提供了理论解释。使用华盛顿大学第五代宾夕法尼亚州立大学-NCAR中尺度模型(MM5)集合,将该方法应用于2000年1月至6月太平洋西北地区48小时的地面温度预报。与原始合奏相比,预测PDF的校准要好得多,并且BMA预测非常准确,因为90%的BMA预测间隔平均比样本气候学产生的间隔短66%。作为副产品,BMA产生确定性点预测,并且其均方根误差比整体最佳成员低7%,比整体平均值低8%。对于海平面压力的预测也获得了类似的结果。仿真实验表明,当对基础整体进行校准甚至过度分散时,BMA的性能都相当好。

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