首页> 外文期刊>Atmospheric Chemistry and Physics Discussions >Evaluation of a multi-model, multi-constituent assimilation framework for tropospheric chemical reanalysis
【24h】

Evaluation of a multi-model, multi-constituent assimilation framework for tropospheric chemical reanalysis

机译:对对流层化学再分析的多模型,多层组成框架的评价

获取原文
           

摘要

We introduce a Multi-mOdel Multi-cOnstituent Chemical data assimilation (MOMO-Chem) framework that directly accounts for model error in transport and chemistry, and we integrate a portfolio of data assimilation analyses obtained using multiple forward chemical transport models in a state-of-the-art ensemble Kalman filter data assimilation system. The data assimilation simultaneously optimizes both concentrations and emissions of multiple species through ingestion of a suite of measurements (ozone, NO2, CO, HNO3) from multiple satellite sensors. In spite of substantial model differences, the observational density and accuracy was sufficient for the assimilation to reduce the multi-model spread by 20%–85% for ozone and annual mean bias by 39%–97% for ozone in the middle troposphere, while simultaneously reducing the tropospheric NO2 column biases by more than 40% and the negative biases of surface CO in the Northern Hemisphere by 41%–94%. For tropospheric mean OH, the multi-model mean meridional hemispheric gradient was reduced from 1.32±0.03 to 1.19±0.03, while the multi-model spread was reduced by 24%–58% over polluted areas. The uncertainty ranges in the a posteriori emissions due to model errors were quantified in 4%–31% for NOx and 13%–35% for CO regional emissions. Harnessing assimilation increments in both NOx and ozone, we show that the sensitivity of ozone and NO2 surface concentrations to NOx emissions varied by a factor of 2 for end-member models, revealing fundamental differences in the representation of fast chemical and dynamical processes. A systematic investigation of model ozone response and analysis increment in MOMO-Chem could benefit evaluation of future prediction of the chemistry–climate system as a hierarchical emergent constraint.
机译:我们介绍了一种多模型多层化学数据同化(Momo-Chem)框架,直接占运输和化学的模型错误,并且我们整合了在状态下使用多个前向化学传输模型获得的数据同化分析组合 - - 艺术Ensemble Kalman滤波器数据同化系统。数据同化同时通过从多个卫星传感器摄取套件(臭氧,NO2,CO,HNO3)来同时优化多种物种的浓度和排放。尽管模型差异很大,但是观察密度和准确性足以使同化减少20%-85%的臭氧和年平均值在中间对流层中臭氧的39%-97%,而且同时将对流层No2柱偏置的低于40%和北半球表面CO的负偏差减少41%-94%。对于对流层的平均值OH,多模型的均值半球梯度从1.32±0.03降低到1.19±0.03,而多型涂抹在污染区域减少了24%-58%。由于模型误差引起的后验排放中的不确定性范围为NOx的4%-31%,CO区域排放的13%-35%。利用NOx和臭氧中的同化增量,我们表明臭氧和NO2表面浓度对NOx排放的敏感性变化了最终成员模型的2倍,揭示了快速化学和动态过程的代表性的基本差异。 MOMO-Chem模型臭氧响应和分析增量的系统调查可以利用对化学气候系统的未来预测作为分层紧急约束的评估。

著录项

获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号