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Assimilating remotely sensed cloud optical thickness into a mesoscale model

机译:将远程感测的云光学厚度同化到Mescle模型中

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The Advanced Regional Prediction System, a mesoscale atmospheric model, is applied to simulate the month of June 2006 with a focus on the near surface air temperatures around Paris. To improve the simulated temperatures which show errors up to 10 K during a day on which a cold front passed Paris, a data assimilation procedure to calculate 3-D analysis fields of specific cloud liquid and ice water content is presented. The method is based on the assimilation of observed cloud optical thickness fields into the Advanced Regional Prediction System model and operates on 1-D vertical columns, assuming that the horizontal background error covariance is infinite, i.e. an independent pixel approximation. The rationale behind it is to find vertical profiles of cloud liquid and ice water content that yield the observed cloud optical thickness values and are consistent with the simulated profile. Afterwards, a latent heat adjustment is applied to the temperature in the vertical column. Data from several meteorological stations in the study area are used to verify the model simulations. The results show that the presented assimilation procedure is able to improve the simulated 2 m air temperatures and incoming shortwave radiation significantly during cloudy days. The scheme is able to alter the position of the cloud fields significantly and brings the simulated cloud pattern closer to the observations. As the scheme is rather simple and computationally inexpensive, it is a promising new technique to improve the surface fields of retrospective model simulations for variables that are affected by the position of the clouds.
机译:先进的区域预测系统是一种Mescre大气模型,应用于模拟2006年6月的月份,重点是巴黎附近的近地表空气温度。提出了在冷锋通过巴黎的一天中显示出误差的模拟温度,呈现了计算特定云液和冰水含量的三维分析领域的数据同化过程。该方法基于观察到的云光学厚度字段的同化进入高级区域预测系统模型,并在1-D垂直列上运行,假设水平背景错误协方差是无限的,即独立像素近似。其背后的基本原理是找到云液和冰含量的垂直轮廓,从而产生观察到的云光学厚度值,并且与模拟轮廓一致。然后,将潜热调节施加到垂直柱中的温度。研究区域中的几个气象站的数据用于验证模型仿真。结果表明,呈现的同化程序能够在阴天期间显着改善模拟的2M空气温度和传入的短波辐射。该方案能够显着改变云场的位置,并将模拟云模式更接近观察。随着该方案相当简单和计算廉价,它是一种有希望的新技术,可以改进受云位置影响的变量的回顾模型模拟的表面领域。

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