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Skill in forecasting extreme ozone pollution episodes with a global atmospheric chemistry model

机译:利用全球大气化学模型预测极端臭氧污染事件的技能

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pstrongAbstract./strong From the ensemble of stations that monitor surface air quality over the United States and Europe, we identify extreme ozone pollution events and find that they occur predominantly in clustered, multiday episodes with spatial extents of more than 1000 km. Such scales are amenable to forecasting with current global atmospheric chemistry models. We develop an objective mapping algorithm that uses the heterogeneous observations of the individual surface sites to calculate surface ozone averaged over 1?° by 1?° grid cells, matching the resolution of a global model. Air quality extreme (AQX) events are identified locally as statistical extremes of the ozone climatology and not as air quality exceedances. With the University of California, Irvine chemistry-transport model (UCI CTM) we find there is skill in hindcasting these extreme episodes, and thus identify a new diagnostic using global chemistrya??climate models (CCMs) to identify changes in the characteristics of extreme pollution episodes in a warming climate./p.
机译:> >摘要。通过对美国和欧洲的地面空气质量进行监测的站点的集合,我们识别出了严重的臭氧污染事件,发现这些事件主要发生在成簇的多日事件中,其空间范围1000多公里。这样的标度适合用当前的全球大气化学模型进行预测。我们开发了一种客观的制图算法,该算法使用各个表面站点的异质观测值来计算1?°网格单元在1?°上平均得到的表面臭氧,与整体模型的分辨率相匹配。空气质量极端事件(AQX)在当地被确定为臭氧气候统计极端事件,而不是空气质量超标事件。通过加利福尼亚大学尔湾分校的化学运输模型(UCI CTM),我们发现了能够对这些极端事件进行后播的技能,因此,可以使用全球化学气候模型(CCM)来确定一种新的诊断方法,以识别极端特征的变化气候变暖造成的污染事件。

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