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首页> 外文期刊>Environmental Science and Pollution Research >One-way coupling of WRF with a Gaussian dispersion model: a focused fine-scale air pollution assessment on southern Mediterranean
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One-way coupling of WRF with a Gaussian dispersion model: a focused fine-scale air pollution assessment on southern Mediterranean

机译:WRF与高斯分散模型的单向耦合:南部地中海的一项重点细尺空气污染评估

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摘要

Numerous uncertainty factors in dispersion models should be taken into account in order to improve the reliability of predictions. The ability of a mesoscale meteorological model to assimilate observational data is an efficient way to improve operational air quality model forecasts. In this study, local weather data assimilation based on a flux-adjusting surface data assimilation system (FASDAS) is introduced to a Gaussian atmospheric dispersion model for a period with reported stable meteorological conditions. After evaluating the vulnerabilities of FASDAS, a combined data assimilation method is proposed to simultaneously improve the model weather prediction and retrieve the representation of accurate concentration distributions for short-range dispersion modeling against a control run. The two main uncertainty parameters considered are the wind speed and direction. A twin experiment demonstrates that the combined technique effectively improves the distribution of simulated concentrations. Comparison between results before and after the implement of data assimilation demonstrates that discrepancies between the reference simulation and the model forecast are mitigated after introducing the combined method, with more than 70 % of the predictions within a factor of two of the measurements. The errors in wind predictions in the FASDAS influenced the dispersion calculations, and the implementation of wind data assimilation in conjunction with the FASDAS has an indirect effect on further alleviating pollutant transport modeling errors.
机译:应考虑到分散模型中的许多不确定性因素,以提高预测的可靠性。 Mescle气象模型使观测数据的能力是改善运营空气质量模型预测的有效方法。在本研究中,将基于助焊表面数据同化系统(FASDA)的局部天气数据同化引入高斯大气分散模型,呈现出报告的稳定气象条件。在评估FASDA的漏洞之后,提出了一种组合的数据同化方法,同时改进模型天气预报,并检索对控制运行的短距离分散模型的精确集中分布的表示。考虑的两个主要不确定性参数是风速和方向。双实验表明,组合技术有效提高了模拟浓度的分布。在数据同化的实施前和之后的结果之间的比较表明,在引入组合方法之后减轻了参考模拟和模型预测之间的差异,其中超过70%的预测在两个测量值中。 FASDA中的风预测中的错误影响了分散计算,与FASDA一起实现风数据同化的实施对进一步缓解污染物运输建模误差具有间接影响。

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