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首页> 外文期刊>Journal of hydrometeorology >Two-Layer Dynamic Recycling Model (2L-DRM): Learning from Moisture Tracking Models of Different Complexity
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Two-Layer Dynamic Recycling Model (2L-DRM): Learning from Moisture Tracking Models of Different Complexity

机译:双层动态回收模型(2L-DRM):从不同复杂性的水分跟踪模型学习

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Atmospheric moisture tracking models are used to identify and quantify sources and sinks of water in the atmospheric branch of the hydrologic cycle. These models are primarily used to investigate the origin of moisture resulting in precipitation for particular regions around the globe. Moisture tracking models vary widely in their level of complexity, depending on the number of physical processes represented. Complex models are comprehensive in their physical representation, but computationally much more expensive than simple models, which only focus on specific physical processes and use simplifying assumptions. We present the mathematical derivation of the new two-layer dynamical recycling model (2L-DRM), a simple analytical moisture tracking model that relaxes the vertically integrated formulation of the original one-layer DRM. By comparing the simple DRM to a very complex moisture tracking model that uses water vapor tracers embedded within the Weather Research and Forecasting regional climate model (WRF-WVT) for the North American monsoon region, we pinpoint the absence of vertical wind shear as the main deficiency in the simple DRM. When comparing both simple models (DRM and 2L-DRM) to the WRF-WVT (which we treat as "truth"), the 2L-DRM better captures the spatial extent, the net amount, and the temporal variability of precipitation that originates from oceanic and local terrestrial sources. The 2L-DRM is well suited to study the large-scale climatological sources of moisture, and for these applications, performs on par with the much more complex and computationally demanding WRF-WVT model.
机译:大气水分跟踪模型用于识别和量化水文循环大气分支中的水源和水槽。这些模型主要用于研究水分的起源,导致全球各地的特定区域降水。湿度跟踪模型的复杂程度差异很大,具体取决于所代表的物理过程的数量。复杂模型在其物理表示中是全面的,但计算得比简单的模型更昂贵,只关注特定的物理流程并使用简化的假设。我们介绍了新的双层动态回收模型(2L-DRM)的数学推导,这是一种简单的分析湿度跟踪模型,其放宽原始单层DRM的垂直整合配方。通过将简单的DRM与天气研究和预测区域气候模型(WRF-WVT)内嵌入的天气研究和预测区域气候模型(WRF-WVT)进行比较,为北美季风地区进行了比较,我们确定了垂直风剪的缺失作为主要的简单的DRM缺乏。在将简单模型(DRM和2L-DRM)与WRF-WVT(我们将其视为“真实”)进行比较时,2L-DRM更好地捕获空间范围,净额,以及发起的降水的时间变化海洋和地方陆地来源。 2L-DRM非常适合研究大规模的气候学水分,以及这些应用程序,与更复杂和计算要求的WRF-WVT模型相比,表现出对此。

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