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Sensitivity of Calibrated Week-2 Probabilistic Forecast Skill to Reforecast Sampling of the NCEP Global Ensemble Forecast System

机译:校准后的第2周概率预报技能对NCEP全球整体预报系统的重新采样的敏感性

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CPC requires the reforecast-calibrated Global Ensemble Forecast System (GEFS) to support the production of their official 6-10- and 8-14-day temperature and precipitation forecasts. While a large sample size of forecast-observation pairs is desirable to generate the necessary model climatology and variances, and covariances to observations, sampling by reforecasts could be done to use available computing resources most efficiently. A series of experiments was done to assess the impact on calibrated forecast skill of using a smaller sample size than the current available reforecast dataset. This study focuses on the skill of week-2 probabilistic forecasts of the 7-day-mean 2-m temperature and accumulated precipitation. The tercile forecasts are expressed as being below-, near-, and above-normal temperature/median precipitation over the continental United States (CONUS). Calibration statistics were calculated using an ensemble regression technique from 25 yr of daily, 11-member GEFS reforecasts for 1986-2010, which were then used to postprocess the GEFS model forecasts for 2011-13. In assessing the skill of calibrated model output using a reforecast dataset with fewer years and ensemble members, and an ensemble run less frequently than daily, it was determined that reductions in the number of ensemble members to six or fewer and reductions in the frequency of reforecast runs from daily to once a week were achievable with minimal loss of skill. However, reducing the number of years of reforecasts to less than 25 resulted in a greater skill degradation. The loss of skill was statistically significant using only 18 yr of reforecasts from 1993 to 2010 to generate model statistics.
机译:CPC要求使用经过重新校准的全球整体预报系统(GEFS)来支持其6-10和8-14天官方温度和降水预报的制作。虽然需要大量的观测-观测对样本来生成必要的模型气候和方差,以及与观测值的协方差,但可以进行重预测采样以最有效地利用可用的计算资源。使用比当前可用的重新预测数据集更小的样本量,进行了一系列实验来评估对校准后的预测技能的影响。这项研究的重点是第7天平均2米温度和累积降水的第2周概率预报的技巧。可怕的预报表示为美国大陆(CONUS)上低于,接近和高于正常的温度/中值降水。使用集合回归技术,从1986-2010年每天25年的11个成员的GEFS重新预测中计算出校准统计数据,然后将其用于对2011-13年的GEFS模型预测进行后处理。在使用具有较少年份和合奏成员的重播数据集评估校准模型输出的技能时,合奏的运行频率比每日少,确定将合奏成员的数量减少到六个或更少,并减少重播的频率从每天到每周一次的运行都可以实现,而将技能损失降至最低。但是,将重新预测的年数减少到少于25年会导致更大的技术降级。从1993年到2010年仅使用18年的重新预测来生成模型统计数据,技能的丧失就具有统计学意义。

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