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Identifying errors in dust models from data assimilation

机译:通过数据同化识别灰尘模型中的错误

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摘要

Airborne mineral dust is an important component of the Earth system and is increasingly predicted prognostically in weather and climate models. The recent development of data assimilation for remotely sensed aerosol optical depths (AODs) into models offers a new opportunity to better understand the characteristics and sources of model error. Here we examine assimilation increments from Moderate Resolution Imaging Spectroradiometer AODs over northern Africa in the Met Office global forecast model. The model underpredicts (overpredicts) dust in light (strong) winds, consistent with (submesoscale) mesoscale processes lifting dust in reality but being missed by the model. Dust is overpredicted in the Sahara and underpredicted in the Sahel. Using observations of lighting and rain, we show that haboobs (cold pool outflows from moist convection) are an important dust source in reality but are badly handled by the model's convection scheme. The approach shows promise to serve as a useful framework for future model development.
机译:空气中的矿物粉尘是地球系统的重要组成部分,在天气和气候模型中,对预测性的预测越来越高。用于遥感气溶胶光学深度(AOD)到模型的数据同化的最新发展为更好地理解模型误差的特征和来源提供了新的机会。在这里,我们在Met Office全球预测模型中检查了北非中分辨率成像光谱仪AOD的同化增量。该模型对微风(强风)中的尘埃预测不足(过度预测),这与现实中扬尘的(亚中尺度)中尺度过程一致,但被模型遗漏了。撒哈拉沙漠中的灰尘被高估,而萨赫勒地区的灰尘被低估。使用照明和雨水的观察结果,我们发现haboobs(潮湿对流引起的冷池流出)实际上是重要的尘埃来源,但是模型的对流方案处理得不好。该方法显示出有望作为将来模型开发的有用框架。

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