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Ensemble forecasts of air quality in eastern China – Part 2: Evaluation of the MarcoPolo–Panda prediction system, version 1

机译:华东地区空气质量预测 - 第2部分:Marcopolo-Panda预测系统的评估,版本1

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An operational multimodel forecasting system for air quality has been developed to provide air quality services for urban areas of China. The initial forecasting system included seven state-of-the-art computational models developed and executed in Europe and China (CHIMERE, IFS, EMEP MSC-W, WRF-Chem-MPIM, WRF-Chem-SMS, LOTOS-EUROS, and SILAMtest). Several other models joined the prediction system recently, but are not considered in the present analysis. In addition to the individual models, a simple multimodel ensemble was constructed by deriving statistical quantities such as the median and the mean of the predicted concentrations. The prediction system provides daily forecasts and observational data of surface ozone, nitrogen dioxides, and particulate matter for the 37?largest urban agglomerations in China (population higher than 3million in 2010). These individual forecasts as well as the multimodel ensemble predictions for the next 72h are displayed as hourly outputs on a publicly accessible web site (http://www.marcopolo-panda.eu, last access: 27?March 2019). In this paper, the performance of the prediction system (individual models and the multimodel ensemble) for the first operational year (April 2016 until June 2017) has been analyzed through statistical indicators using the surface observational data reported at Chinese national monitoring stations. This evaluation aims to investigate (a)?the seasonal behavior, (b)?the geographical distribution, and (c)?diurnal variations of the ensemble and model skills. Statistical indicators show that the ensemble product usually provides the best performance compared to the individual model forecasts. The ensemble product is robust even if occasionally some individual model results are missing. Overall, and in spite of some discrepancies, the air quality forecasting system is well suited for the prediction of air pollution events and has the ability to provide warning alerts (binary prediction) of air pollution events if bias corrections are applied to improve the ozone predictions.
机译:已经开发出用于空气质量的运营多模型预测系统,为中国市区提供空气质量服务。初始预测系统包括在欧洲和中国开发和执行的七种最先进的计算模型(Chimere,Ifs,EMEP MSC-W,WRF-Chem-MPIM,WRF-Chem-SMS,Lotos-Euros和Silamtest )。几种其他型号最近加入了预测系统,但在本分析中不考虑。除了各个模型之外,通过导出统计量如中值和预测浓度的平均值来构建简单的多模型集合。预测系统提供了37个最大的城市集群的表面臭氧,氮二氧化氮和颗粒物的每日预测和观察数据,以便在中国最大的城市集群(2010年的人口高于300万)。这些个别预测以及接下来的72h的多模型集合预测在公开访问的网站上显示为每小时输出(http://www.marcopolo-panda.eu,上次访问:27?2019年3月)。在本文中,通过使用在中国国家监测站报告的表面观察数据的统计指标分析了第一次运营年度(2016年4月至2017年6月至2017年6月至2017年6月)的预测系统(2016年4月)的性能。该评估旨在调查(a)?季节性行为,(b)?地理分布,(c)?集合和模型技能的昼夜变化。统计指标表明,与各个模型预测相比,该集合产品通常提供最佳性能。即使偶尔,整体产品也是坚固的,即使偶尔一些单独的模型结果丢失。总的来说,尽管有一些差异,空气质量预测系统非常适合预测空气污染事件,如果应用偏压校正以改善臭氧预测,则能够提供空气污染事件的警告警报(二进制预测) 。
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