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Evaluating and improving modeled turbulent heat fluxes across the North American Great Lakes

机译:评估和改善北美大湖河流的模型湍流热量

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摘要

Turbulent fluxes of latent and sensible heat are important physical processes that influence the energy and water budgets of the North American Great Lakes. These fluxes can be measured in situ using eddy covariance techniques and are regularly included as a component of lake-atmosphere models. To help ensure accurate projections of lake temperature, circulation, and regional meteorology, we validated the output of five algorithms used in three popular models to calculate surface heat fluxes: the Finite Volume Community Ocean Model (FVCOM, with three different options for heat flux algorithm), the Weather Research and Forecasting (WRF) model, and the Large Lake Thermodynamic Model. These models are used in research and operational environments and concentrate on different aspects of the Great Lakes' physical system. We isolated only the code for the heat flux algorithms from each model and drove them using meteorological data from four over-lake stations within the Great Lakes Evaporation Network (GLEN), where eddy covariance measurements were also made, enabling colocated comparison. All algorithms reasonably reproduced the seasonal cycle of the turbulent heat fluxes, but all of the algorithms except for the Coupled Ocean-Atmosphere Response Experiment (COARE) algorithm showed notable overestimation of the fluxes in fall and winter. Overall, COARE had the best agreement with eddy covariance measurements. The four algorithms other than COARE were altered by updating the parameterization of roughness length scales for air temperature and humidity to match those used in COARE, yielding improved agreement between modeled and observed sensible and latent heat fluxes.
机译:潜伏和明智的热量的湍流势态是影响北美大湖泊的能量和水预算的重要物理过程。这些助熔剂可以使用涡流协方差技术原位测量,并且经常包括作为湖泊大气模型的组件。为了帮助确保湖泊温度,循环和区域气象的准确投影,我们验证了三种流行模型中使用的五种算法的输出来计算表面热量通量:有限卷社区海洋模型(FVCOM,具有三种不同的热通量算法选择),天气研究和预测(WRF)模型,以及大型湖泊热力学模型。这些型号用于研究和运营环境,并专注于大湖泊物理系统的不同方面。我们仅隔离每个模型的热通量算法的代码,并使用来自大湖泊蒸发网络(Glen)内的四个过湖站的气象数据推动它们,其中还进行了涡旋协方差测量,从而实现了光环的比较。所有算法合理地复制了湍流热通量的季节性循环,但除了耦合的海洋气氛反应实验(CoARA)算法外的所有算法都显示出秋季和冬季势态的显着高估。总体而言,CoARE具有与Eddy Covariance测量的最佳协议。通过更新用于空气温度和湿度的粗糙度长度尺度的参数化来改变除CoARA之外的四种算法,以匹配成分中的那些,在建模和观察的明智和潜热通量之间产生改善的协议。

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