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Short-Range Ensemble Predictions of 2-m Temperature and Dewpoint Temperature over New England

机译:新英格兰地区2 m温度和露点温度的短距离集合预报

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摘要

A multimodel short-range ensemble forecasting system created as part of a National Oceanic and Atmospheric Administration pilot program on temperature and air quality forecasting over New England during the summer of 2002 is evaluated. A simple 7-day running mean bias correction is applied individually to each of the 23 ensemble members. Various measures of accuracy are used to compare these bias-corrected ensemble predictions of 2-m temperature and dewpoint temperature with those available from the nested grid model (NGM) model output statistics (MOS). Results indicate that the bias-corrected ensemble mean prediction is as accurate as the NGM MOS for temperature predictions, and is more accurate than the NGM MOS for dewpoint temperature predictions, for the 48 days studied during the warm season. When the additional probabilistic information from the ensemble is examined, results indicate that the ensemble clearly provides value above that of NGM MOS for both variables, especially as the events become more unlikely. Results also indicate that the ensemble has some ability to predict forecast skill for temperature with a correlation between ensemble spread and the error of the ensemble mean of greater than 0.7 for some forecast periods. The use of a multimodel ensemble clearly helps to improve the spread-skill relationship.
机译:评估了多模式短程总体预报系统,该系统是美国国家海洋与大气管理局(National Oceano and Atmospheric Administration)2002年夏季在新英格兰进行的温度和空气质量预报试点计划的一部分。对23个合奏成员分别单独应用一个简单的7天连续平均偏差校正。各种精度度量用于将这些2 m温度和露点温度的偏差校正的集成预测与可从嵌套网格模型(NGM)模型输出统计信息(MOS)获得的预测进行比较。结果表明,在暖季研究的48天中,偏差校正后的集合平均预测与NGM MOS的温度预测一样准确,比NGM MOS的露点温度预测更准确。当检查来自集成体的其他概率信息时,结果表明,对于两个变量,集成体显然提供了高于NGM MOS的值,尤其是在事件变得不太可能的情况下。结果还表明,该集合体具有一些预测温度预报技能的能力,在某些预测期内,集合体散布与集合平均误差之间的相关性大于0.7。多模型合奏的使用显然有助于改善传播与技能的关系。

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