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A data-driven method for the stochastic parametrisation of subgrid-scale tropical convective area fraction

机译:一种用于子网格热带对流面积分数随机参数化的数据驱动方法

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摘要

Observations of tropical convection from precipitation radar and the concurring large-scale atmospheric state at two locations (Darwin and Kwajalein) are used to establish effective stochastic models to parameterise subgrid-scale tropical convective activity. Two approaches are presented which rely on the assumption that tropical convection induces a stationary equilibrium distribution. In the first approach we parameterise convection variables such as convective area fraction as an instantaneous random realisation conditioned on the large-scale vertical velocities according to a probability density function estimated from the observations. In the second approach convection variables are generated in a Markov process conditioned on the large-scale vertical velocity, allowing for non-trivial temporal correlations. Despite the different prevalent atmospheric and oceanic regimes at the two locations, with Kwajalein being exposed to a purely oceanic weather regime and Darwin exhibiting land-sea interaction, we establish that the empirical measure for the convective variables conditioned on large-scale mid-level vertical velocities for the two locations are close. This allows us to train the stochastic models at one location and then generate time series of convective activity at the other location. The proposed stochastic subgrid-scale models adequately reproduce the statistics of the observed convective variables and we discuss how they may be used in future scale-independent mass-flux convection parameterisations © 2015 Royal Meteorological Society.
机译:来自降水雷达的热带对流观测和在两个地点(达尔文和夸贾林)同时出现的大规模大气状态被用来建立有效的随机模型,以参数化亚网格规模的热带对流活动。提出了两种方法,它们基于热带对流引起平稳平衡分布的假设。在第一种方法中,我们根据从观测值估计的概率密度函数,将对流变量(例如对流面积分数)参数化为基于大规模垂直速度的瞬时随机实现。在第二种方法中,对流变量是在以大型垂直速度为条件的马尔可夫过程中生成的,允许进行非平凡的时间相关。尽管两个地区普遍存在不同的大气和海洋状况,夸贾林处于纯海洋天气状况,达尔文表现出海陆相互作用,但我们建立了对流变量的经验测度,其条件是大型中层垂直两个位置的速度接近。这使我们能够在一个位置训练随机模型,然后在另一位置生成对流活动的时间序列。拟议的随机亚网格规模模型可以充分再现观测到的对流变量的统计数据,我们讨论了如何将其用于未来与规模无关的质量通量对流参数设置©2015 Royal Meteorological Society。

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