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首页> 外文期刊>Journal of Geophysical Research, D. Atmospheres: JGR >Multiconstituent Data Assimilation With WRF‐Chem/ DART: Potential for Adjusting Anthropogenic Emissions and Improving Air Quality Forecasts Over Eastern China
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Multiconstituent Data Assimilation With WRF‐Chem/ DART: Potential for Adjusting Anthropogenic Emissions and Improving Air Quality Forecasts Over Eastern China

机译:WRF-CHEM / DART的多种子间数据同化:调整人为排放和改善中国东部空气质量预测的潜力

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摘要

We use the Weather Research and Forecasting Model with the chemistry/Data Assimilation Research Testbed (WRF‐Chem/DART) chemical weather forecasting/data assimilation system with multiconstituent data assimilation to investigate the improvement of air quality forecasts over eastern China. We assimilate surface in situ observations of sulfur dioxide (SO_2), nitrogen dioxide (NO_2), ozone (O_3), carbon monoxide (CO), particulate matter with diameters less than 2.5 μm (PM2.5) and 10 μm (PM10), and satellite aerosol optical depth to adjust the related anthropogenic emissions as well as the chemical initial conditions. We validate our forecast results out to 72 hr by comparison with the in situ observations. Results show that updated emissions improve the model performance between 10% and 65% root mean square error reduction for the assimilated species except particulate matter with a diameter between 2.5 and 10 μm (PM_(2.5‐10)), which is slightly improved due to the limited anthropogenic contribution to it. In a sensitivity experiment with a different update interval, the CO improvement is found to be sensitive to the cycling time used to update the CO emissions. In another sensitivity experiment when NO_2 observations are not assimilated and nitrogen oxides (NOx) emission are adjusted by only O_3, NO_2 forecasts show similar root mean square error improvement but have lower spatial correlation, indicating the value and limitation of the O_3‐NOx cross‐variable relationship.
机译:我们将天气研究和预测模型与化学/数据同化研究试验台(WRF-CHEM / DART)化学天气预报/数据同化系统进行多元数据同化,以调查中国东部空气质量预测的提高。我们在原位观察中同化表面的二氧化硫(SO_2),二氧化氮(NO_2),臭氧(O_3),一氧化碳(CO),直径小于2.5μm(PM2.5)和10μm(PM10)的颗粒物质,和卫星气溶胶光学深度调整相关的人为发射以及化学初始条件。通过与原位观察相比,我们将预测结果验证为72小时。结果表明,更新的排放改善了除颗粒物质外径为2.5和10μm(PM_(2.5-10))的颗粒物质外的增量物种的10%和65%均方根误差减少的模型性能。由于有限的人为贡献。在具有不同更新间隔的敏感性实验中,发现共同改进对用于更新CO排放的循环时间敏感。在另一个敏感性实验中,当NO_2观察不同化并且仅通过O_3调整氮氧化物(NOx)发射时,NO_2预测显示出类似的根均方误差改善,但具有较低的空间相关性,表明O_3-NOx交叉的值和限制可变关系。

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