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Limitations of ozone data assimilation with adjustment of NOsubix/i/sub emissions: mixed effects on NOsub2/sub forecasts over Beijing and surrounding areas

机译:调整NO x 排放量后臭氧数据同化的局限性:对北京及周边地区NO 2 预报的混合影响

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This study investigates a cross-variable ozone data assimilation (DA) method based on an ensemble Kalman filter (EnKF) that has been used in the companion study to improve ozone forecasts over Beijing and surrounding areas. The main purpose is to delve into the impacts of the cross-variable adjustment of nitrogen oxide (NOsubix/i/sub) emissions on the nitrogen dioxide (NOsub2/sub) forecasts over this region during the 2008 Beijing Olympic Games. A mixed effect on the NOsub2/sub forecasts was observed through application of the cross-variable assimilation approach in the real-data assimilation (RDA) experiments. The method improved the NOsub2/sub forecasts over almost half of the urban sites with reductions of the root mean square errors (RMSEs) by 15–36?% in contrast to big increases of the RMSEs over other urban stations by 56–239?%. Over the urban stations with negative DA impacts, improvement of the NOsub2/sub forecasts (with 7?% reduction of the RMSEs) was noticed at night and in the morning versus significant deterioration during daytime (with 190?% increase of the RMSEs), suggesting that the negative data assimilation impacts mainly occurred during daytime. Ideal-data assimilation (IDA) experiments with a box model and the same cross-variable assimilation method confirmed the mixed effects found in the RDA experiments. In the same way, NOsubix/i/sub emission estimation was improved at night and in the morning even under large biases in the prior emission, while it deteriorated during daytime (except for the case of minor errors in the prior emission). The mixed effects observed in the cross-variable data assimilation, i.e., positive data assimilation impacts on NOsub2/sub forecasts over some urban sites, negative data assimilation impacts over the other urban sites, and weak data assimilation impacts over suburban sites, highlighted the limitations of the EnKF under strong nonlinear relationships between chemical variables. Under strong nonlinearity between daytime ozone concentrations and NOsubix/i/sub emissions uncertainties (with large biases in the a priori emission), the EnKF may come up with inefficient or wrong adjustments to NOsubix/i/sub emissions. The present findings reveal that bias correction is essential for the application of the EnKF in dealing with the data assimilation problem over strong nonlinear system.
机译:这项研究研究了基于整体卡尔曼滤波(EnKF)的交叉变量臭氧数据同化(DA)方法,该方法已在伴随研究中用于改善北京及周边地区的臭氧预报。主要目的是研究氮氧化物(NO x )排放的交叉变量调节对二氧化氮(NO 2 )在2008年北京奥运会期间对该地区的预测。通过在实际数据同化(RDA)实验中应用交叉变量同化方法,观察到了对NO 2 预测的混合影响。该方法将几乎一半的城市站点的NO 2 预测提高了,均方根误差(RMSE)降低了15–36%,而其他城市站点的RMSE则大大增加减少了56–239%。在具有DA负面影响的城市车站,夜间和早晨发现NO 2 预报有所改善(RMSE降低了7%),而白天则显着恶化(190%) RMSE的增加),表明负面的数据同化影响主要发生在白天。使用盒模型和相同的交叉变量同化方法进行的理想数据同化(IDA)实验证实了RDA实验中发现的混合效应。同样,即使在先有排放存在较大偏差的情况下,夜间和早晨的NO x 排放估算也有所改善,而白天则有所恶化(除非情况如此)先前排放中的微小错误)。在交叉变量数据同化中观察到的混合效应,即对某些城市站点的NO 2 预测有正数据同化影响,对其他城市站点的负数据同化影响,以及对其他城市站点的弱数据同化影响郊区站点,突显了EnKF在化学变量之间强非线性关系下的局限性。在白天臭氧浓度与NO x 排放不确定性之间存在很强的非线性(先验排放有较大偏差)的情况下,EnKF可能会对NO < sub> x 排放。目前的发现表明,偏差校正对于EnKF在处理强非线性系统上的数据同化问题中的应用至关重要。

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