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Prospects of Using Bayesian Model Averaging for the Calibration of One-Month Forecasts of Surface Air Temperature over South Korea

机译:利用贝叶斯模型平均法对韩国地面气温的一个月预报进行校准的前景

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In this study, we investigated the prospect of calibrating probabilistic forecasts of surface air temperature (SAT) over South Korea by using Bayesian model averaging (BMA). We used 63 months of simulation results from four regional climate models (RCMs) with two boundary conditions (NCEP-DOE and ERA-interim) over the CORDEX East Asia. Rank histograms and residual quantile-quantile (R-Q-Q) plots showed that the simulation skills of the RCMs differ according to season and geographic location, but the RCMs show a systematic cold bias irrespective of season and geographic location. As a result, the BMA weights are clearly dependent on geographic location, season, and correlations among the models. The one-month equal weighted ensemble (EWE) outputs for the 59 stations over South Korea were calibrated using the BMA method for 48 monthly time periods based on BMA weights obtained from the previous 15 months of training data. The predictive density function was calibrated using BMA and the individual forecasts were weighted according to their performance. The raw ensemble forecasts were assessed using the flatness of the rank histogram and the R-Q-Q plot. The results showed that BMA improves the calibration of the EWE and the other weighted ensemble forecasts irrespective of season, simulation skill of the RCM, and geographic location. In addition, deterministic-style BMA forecasts usually perform better than the deterministic forecast of the single best member.
机译:在这项研究中,我们调查了使用贝叶斯模型平均(BMA)校准韩国地面气温(SAT)概率预报的前景。我们使用了来自CORDEX东亚两个边界条件(NCEP-DOE和ERA-interim)的四个区域气候模型(RCM)的63个月模拟结果。等级直方图和残差分位数(R-Q-Q)图表明,RCM的模拟技巧因季节和地理位置而异,但是RCM显示出系统的冷偏差,而与季节和地理位置无关。结果,BMA权重显然取决于地理位置,季节和模型之间的相关性。根据前15个月训练数据获得的BMA权重,使用BMA方法对韩国59个站点的一个月的等权重合奏(EWE)输出进行了校准,共48个月。使用BMA校准了预测密度函数,并根据其性能对各个预测进行了加权。使用等级直方图和R-Q-Q图的平坦度评估原始集合预报。结果表明,无论季节,RCM的模拟技巧和地理位置如何,BMA均可改进EWE和其他加权集合预报的校准。此外,确定性风格的BMA预测通常比单个最佳成员的确定性预测表现更好。

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