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Evaluation of boundary-layer type in a weather forecast model utilising long-term Doppler lidar observations

机译:利用长期多普勒激光雷达观测评估天气预报模型中的边界层类型

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摘要

Many studies evaluating model boundary-layer schemes focus either on near-surface parameters or on short-term observational campaigns. This reflects the observational datasets that are widely available for use in model evaluation. In this paper we show how surface and long-term Doppler lidar observations, combined in a way to match model representation of the boundary layer as closely as possible, can be used to evaluate the skill of boundary-layer forecasts. We use a 2-year observational dataset from a rural site in the UK to evaluate a climatology of boundary layer type forecast by the UK Met Office Unified Model. In addition, we demonstrate the use of a binary skill score (Symmetric Extremal Dependence Index) to investigate the dependence of forecast skill on season, horizontal resolution and forecast leadtime. A clear diurnal and seasonal cycle can be seen in the climatology of both the model and observations, with the main discrepancies being the model overpredicting cumulus capped and decoupled stratocumulus capped boundary-layers and underpredicting well mixed boundary-layers. Using the SEDI skill score the model is most skillful at predicting the surface stability. The skill of the model in predicting cumulus capped and stratocumulus capped stable boundary layer forecasts is low but greater than a 24 hr persistence forecast. In contrast, the prediction of decoupled boundary-layers and boundary-layers with multiple cloud layers is lower than persistence. This process based evaluation approach has the potential to be applied to other boundary-layer parameterisation schemes with similar decision structures.
机译:许多评估模型边界层方案的研究都集中在近地表参数或短期观测活动上。这反映了可广泛用于模型评估的观测数据集。在本文中,我们展示了如何将地面和长期多普勒激光雷达观测结果结合起来,以尽可能紧密地匹配边界层的模型表示形式,来评估边界层预报的技巧。我们使用来自英国农村站点的两年观测数据集来评估英国气象局统一模型预测的边界层类型的气候。此外,我们演示了使用二进制技能评分(对称极端依赖指数)来调查预测技能对季节,水平分辨率和预测提前期的依赖性。在模型和观测资料的气候中都可以看到一个清晰的昼夜和季节周期,主要差异是该模型高估了积云上限和解耦的平积层上限边界层,而预测不到充分混合的边界层。使用SEDI技能评分,模型在预测表面稳定性方面最熟练。该模型在预测积云上限和平流积云上限的稳定边界层预报中的技巧较低,但大于24小时持续性预报。相反,解耦边界层和具有多个云层的边界层的预测低于持久性。这种基于过程的评估方法有可能应用于具有类似决策结构的其他边界层参数化方案。

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