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Data assimilation in atmospheric chemistry models: current status and future prospects for coupled chemistry meteorology models

机译:大气化学模型中的数据同化:耦合化学气象学模型的现状和未来展望

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pstrongAbstract./strong Data assimilation is used in atmospheric chemistry models to improve air quality forecasts, construct re-analyses of three-dimensional chemical (including aerosol) concentrations and perform inverse modeling of input variables or model parameters (e.g., emissions). Coupled chemistry meteorology models (CCMM) are atmospheric chemistry models that simulate meteorological processes and chemical transformations jointly. They offer the possibility to assimilate both meteorological and chemical data; however, because CCMM are fairly recent, data assimilation in CCMM has been limited to date. We review here the current status of data assimilation in atmospheric chemistry models with a particular focus on future prospects for data assimilation in CCMM. We first review the methods available for data assimilation in atmospheric models, including variational methods, ensemble Kalman filters, and hybrid methods. Next, we review past applications that have included chemical data assimilation in chemical transport models (CTM) and in CCMM. Observational data sets available for chemical data assimilation are described, including surface data, surface-based remote sensing, airborne data, and satellite data. Several case studies of chemical data assimilation in CCMM are presented to highlight the benefits obtained by assimilating chemical data in CCMM. A case study of data assimilation to constrain emissions is also presented. There are few examples to date of joint meteorological and chemical data assimilation in CCMM and potential difficulties associated with data assimilation in CCMM are discussed. As the number of variables being assimilated increases, it is essential to characterize correctly the errors; in particular, the specification of error cross-correlations may be problematic. In some cases, offline diagnostics are necessary to ensure that data assimilation can truly improve model performance. However, the main challenge is likely to be the paucity of chemical data available for assimilation in CCMM./p.
机译:> >摘要。大气化学模型中使用数据同化来改善空气质量预报,对三维化学物质(包括气溶胶)浓度进行重新分析并对输入变量或模型参数进行逆向建模(例如,排放)。耦合化学气象学模型(CCMM)是共同模拟气象过程和化学转化的大气化学模型。它们提供了同化气象和化学数据的可能性。但是,由于CCMM是最近才出现的,因此CCMM中的数据同化迄今受到限制。我们在这里回顾了大气化学模型中数据同化的现状,特别关注了CCMM中数据同化的未来前景。我们首先回顾一下可用于大气模型中数据同化的方法,包括变分方法,集成卡尔曼滤波器和混合方法。接下来,我们回顾过去的应用,这些应用在化学传输模型(CTM)和CCMM中包括化学数据同化。描述了可用于化学数据同化的观测数据集,包括地面数据,基于地面的遥感,机载数据和卫星数据。介绍了CCMM中化学数据同化的几个案例研究,以突出显示通过CCMM中化学数据同化获得的好处。还介绍了数据同化以限制排放的案例研究。迄今为止,在CCMM中很少有联合气象和化学数据同化的例子,并且讨论了与CCMM中数据同化相关的潜在困难。随着被同化的变量数量的增加,正确地描述错误是必不可少的。特别地,错误互相关的规范可能是有问题的。在某些情况下,必须进行离线诊断以确保数据同化能真正改善模型性能。但是,主要的挑战可能是CCMM中可用于同化的化学数据不足。

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