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Evaluation of numerical predictions of boundary layer structure during the lake michigan ozone study

机译:密歇根湖臭氧研究过程中边界层结构数值预测的评价

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The performance of two types of turbulence closures is compared in a 3D numerical investigation of an episode with poor air quality. The first is the Blackadar boundary layer scheme, which has a nonlocal closure for unstable conditions. The second is a 1.5-order scheme, known as Gayno-Seaman (GS). that predicts turbulent kinetic energy and is suitable for simulating foggy as well as dry conditions. In 3D mesoscale simulations of a 5-day air pollution episode over the Midwest, the GS turbulence scheme is found to be effective for reducing model errors in boundary layer depth and surface wind speeds, relative to the Blackadar nonlocal closure. In this case, wind direction and surface temperature simulations have comparable skill with both closures. The 1.5-order GS scheme also is shown to interact well with a four-dimensional data assimilation system that avoids assimilation of smooth analyses below 1500 m. Experiments that combined the 1.5-order boundary layer scheme and a multiscale data assimilation approach produced the lowest model errors overall while producing boundary layer trajectories that are consistent with the observed locations of ozone maxima. The efficiency of the two turbulence schemes was found to be nearly identical, each requiring about 25% of the overall central processing unit computation time.
机译:在空气质量较差的事件的3D数值研究中比较了两种湍流闭合的性能。第一个是Blackadar边界层方案,该方案具有用于不稳定条件的非局部闭合。第二种是1.5阶方案,称为盖诺·西曼(Gayno-Seaman,GS)。可以预测湍流动能,适合模拟有雾和干燥条件。在中西部5天空气污染事件的3D中尺度模拟中,相对于Blackadar非局部封闭,发现GS湍流方案可有效减少边界层深度和表面风速的模型误差。在这种情况下,风向和表面温度模拟在两个封闭件方面具有可比的技能。还显示了1.5阶GS方案可与避免同化1500 m以下平滑分析的4维数据同化系统很好地交互。将1.5阶边界层方案和多尺度数据同化方法相结合的实验产生的模型误差总体最低,同时产生的边界层轨迹与所观测到的臭氧最大值位置一致。发现这两种湍流方案的效率几乎相同,每个方案大约需要整个中央处理单元计算时间的25%。

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