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Machine Learning to Predict the Global Distribution of Aerosol Mixing State Metrics

机译:机器学习预测气溶胶混合状态度量的全球分布

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Atmospheric aerosols are evolving mixtures of chemical species. In global climate models (GCMs), this “aerosol mixing state” is represented in a highly simplified manner. This can introduce errors in the estimates of climate-relevant aerosol properties, such as the concentration of cloud condensation nuclei. The goal for this study is to determine a global spatial distribution of aerosol mixing state with respect to hygroscopicity, as quantified by the mixing state metric χ . In this way, areas can be identified where the external or internal mixture assumption is more appropriate. We used the output of a large ensemble of particle-resolved box model simulations in conjunction with machine learning techniques to train a model of the mixing state metric χ . This lower-order model for χ uses as inputs only variables known to GCMs, enabling us to create a global map of χ based on GCM data. We found that χ varied between 20% and nearly 100%, and we quantified how this depended on particle diameter, location, and time of the year. This framework demonstrates how machine learning can be applied to bridge the gap between detailed process modeling and a large-scale climate model.
机译:大气气溶胶正在演变为化学物种的混合物。在全球气候模型(GCM)中,以高度简化的方式表示了这种“气溶胶混合状态”。这可能会在与气候相关的气溶胶特性估计中引入误差,例如云凝结核的浓度。这项研究的目的是确定相对于吸湿性的气溶胶混合状态的整体空间分布,并通过混合状态度量χ进行量化。这样,可以确定外部或内部混合假设更合适的区域。我们结合了机器学习技术,使用了大量的粒子分解盒模型模拟输出来训练混合状态度量χ的模型。这种χ的低阶模型仅将GCM已知的变量用作输入,从而使我们能够基于GCM数据创建χ的全局图。我们发现χ在20%到接近100%之间变化,并且我们量化了它如何取决于粒径,位置和一年中的时间。该框架展示了如何应用机器学习来弥合详细过程建模与大规模气候模型之间的鸿沟。

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