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Quantifying the effect of mixing on the mean age of air in CCMVal-2 and CCMI-1 models

机译:量化CCMVAL-2和CCMI-1模型中的平均空气年龄混合的效果

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The stratospheric age of air (AoA) is a useful measure of the overall capabilities of a general circulation model (GCM) to simulate stratospheric transport. Previous studies have reported a large spread in the simulation of AoA by GCMs and coupled chemistry–climate models (CCMs). Compared to observational estimates, simulated AoA is mostly too low. Here we attempt to untangle the processes that lead to the AoA differences between the models and between models and observations. AoA is influenced by both mean transport by the residual circulation and two-way mixing; we quantify the effects of these processes using data from the CCM inter-comparison projects CCMVal-2 (Chemistry–Climate Model Validation Activity?2) and CCMI-1 (Chemistry–Climate Model Initiative, phase?1). Transport along the residual circulation is measured by the residual circulation transit time (RCTT). We interpret the difference between AoA and RCTT as additional aging by mixing. Aging by mixing thus includes mixing on both the resolved and subgrid scale. We find that the spread in AoA between the models is primarily caused by differences in the effects of mixing and only to some extent by differences in residual circulation strength. These effects are quantified by the mixing efficiency, a measure of the relative increase in AoA by mixing. The mixing efficiency varies strongly between the models from 0.24 to 1.02. We show that the mixing efficiency is not only controlled by horizontal mixing, but by vertical mixing and vertical diffusion as well. Possible causes for the differences in the models' mixing efficiencies are discussed. Differences in subgrid-scale mixing (including differences in advection schemes and model resolutions) likely contribute to the differences in mixing efficiency. However, differences in the relative contribution of resolved versus parameterized wave forcing do not appear to be related to differences in mixing efficiency or AoA.
机译:空气(AOA)的平流层龄是一般循环模型(GCM)的有用措施来模拟平流层运输。以前的研究报告了通过GCMS和耦合的化学气候模型(CCMS)模拟AOA的大规模蔓延。与观察估计相比,模拟的AOA大多低。在这里,我们试图解开导致模型与模型和观察之间的AOA差异的过程。 AOA受到剩余循环和双向混合的平均转运的影响;我们使用来自CCM间比较项目CCMVAL-2(化学 - 气候模型验证活动?2)和CCMI-1(化学 - 气候模型倡议,相1)的数据量化这些过程的影响。沿着残余循环的运输是通过残留循环过渡时间(RCTT)测量的。我们通过混合来解释AOA和RCTT之间的差异。因此,通过混合进行老化包括在分辨和亚级刻度上混合。我们发现模型之间的AOA蔓延主要是由混合效果的差异引起的,并且在某种程度上逐渐通过残留循环强度的差异。通过混合效率量化这些效果,通过混合测量AOA的相对增加。混合效率在0.24至1.02的型号之间变化。我们表明混合效率不仅通过水平混合来控制,而且通过垂直混合和垂直扩散来控制。讨论了模型混合效率的差异可能的原因。划分规模混合的差异(包括平行计划和模型分辨率的差异)可能有助于混合效率的差异。然而,已解决的与参数化波迫使的相对贡献的差异似乎与混合效率或AOA的差异无关。
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