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首页> 外文期刊>Journal of Applied Meteorology and Climatology >An Empirical Latent Heat Flux Parameterization for the Noah Land Surface Model
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An Empirical Latent Heat Flux Parameterization for the Noah Land Surface Model

机译:诺亚陆面模型的经验潜热通量参数化

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Proper partitioning of the surface energy fluxes that drive the evolution of the planetary boundary layer in numerical weather prediction models requires an accurate representation of initial land surface conditions. Unfortunately, soil temperature and moisture observations are unavailable in most areas and routine daily estimates of vegetation coverage and biomass are not easily available. This gap in observational capabilities seriously hampers the evaluation and improvement of land surface parameterizations, since model errors likely relate to improper initial conditions as much as to inaccuracies in the parameterizations. Two unique datasets help to overcome these difficulties. First, 1-km fractional vegetation coverage and leaf area index values can be derived from biweekly maximum normalized difference vegetation index composites obtained from daily observations by the Advanced Very High Resolution Radiometer onboard NOAA satellites. Second, the Oklahoma Mesonet supplies multiple soil temperature and moisture measurements at various soil depths each hour. Combined, these two datasets provide significantly improved initial conditions for a land surface model and allow an evaluation of the accuracy of the land surface model with much greater confidence than previously. Forecasts that both include and neglect these unique land surface observations are used to evaluate the value of these two data sources to land surface initializations. The dense network of surface observations afforded by theOklahoma Mesonet, including surface flux data derived from special sensors, provides verification of the model results, which indicate that predicted latent heat fluxes still differ from observations by as much as 150 W m~2. This result provides a springboard for assessing parameterization errors within the model. A new empirical parameterization developed using principal-component regression reveals simple relationships between latent heat flux and other surface observations. Periods of very dry conditions observed across Oklahoma are used advantageously to derive a parameterization for evaporation from bare soil. Combining this parameterization with an empirical canopy transpiration scheme yields improved sensible and latent heat flux forecasts and better partitioning of the surface energy budget. Surface temperature and mixing ratio forecasts show improvement when compared with observations.
机译:在数值天气预报模型中正确分配驱动行星边界层演化的表面能通量,需要对初始陆地表面状况的准确表示。不幸的是,在大多数地区都无法获得土壤温度和湿度的观测数据,而且日常不容易获得植被覆盖率和生物量的日常估算。这种观测能力的差距严重阻碍了对地表参数化的评估和改进,因为模型误差可能与不适当的初始条件以及参数化的不准确性有关。两个独特的数据集有助于克服这些困难。首先,可以从NOAA卫星上的超甚高分辨率高分辨率辐射计每日观测获得的双周最大归一化差异植被指数合成物,得出1 km的分数植被覆盖率和叶面积指数值。其次,俄克拉荷马州Mesonet每小时提供不同土壤深度的多种土壤温度和湿度测量。结合起来,这两个数据集为陆面模型提供了显着改善的初始条件,并允许以比以往更大的信心对陆面模型的准确性进行评估。包含和忽略这两个独特的地表观测的预测用于评估这两个数据源对地表初始化的价值。俄克拉荷马气象台提供的密集的表面观测网络,包括从特殊传感器获得的表面通量数据,提供了对模型结果的验证,这表明预测的潜热通量仍与观测值相差高达150 W m〜2。该结果为评估模型中的参数化错误提供了跳板。使用主成分回归开发的新的经验参数化揭示了潜热通量与其他表面观测值之间的简单关系。整个俄克拉荷马州观测到的非常干燥的时期有利地用于得出从裸露土壤蒸发的参数化。将此参数化与经验性树冠蒸腾方案相结合,可以产生更合理的潜热通量预报,并更好地分配表面能预算。与观测值相比,地表温度和混合比的预测值有所改善。

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