首页> 外文期刊>Journal of Applied Meteorology and Climatology >Using Continuous Ground-Based Radar and Lidar Measurements for Evaluating the Representation of Clouds in Four Operational Models
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Using Continuous Ground-Based Radar and Lidar Measurements for Evaluating the Representation of Clouds in Four Operational Models

机译:使用连续的地基雷达和激光雷达测量评估四种运行模型中的云表示

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The ability of four operational weather forecast models [ECMWF, Action de Recherche Petite Echelle Grande Echelle model (ARPEGE), Regional Atmospheric Climate Model (RACMO), and Met Office] to generate a cloud at the right location and time (the cloudfrequency of occurrence) is assessed in the present paper using a two-year time series of observations collected by profiling ground-based active remote sensors (cloud radar and lidar) located at three different sites in western Europe (Cabauw, Netherlands; Chilbolton, United Kingdom; and Palaiseau, France). Particular attention is given to potential biases that may arise from instrumentation differences (especially sensitivity) from one site to another and intermittent sampling. In a second step the statistical properties of the cloud variables involved in most advanced cloud schemes of numerical weather forecast models (ice water content and cloud fraction) are characterized and compared with their counterparts in the models. The two years of observations are first considered as a whole in order to evaluate the accuracy of the statistical representation of the cloud variables in each model. It is shown that all models tend to produce too many high-level clouds, with too-high cloud fraction and icewater content. The midlevel and low-level cloud occurrence is also generally overestimated, with too-low cloud fraction but a correct ice water content. The dataset is then divided into seasons to evaluate the potential of the models to generate different cloud situations in response to different large-scale forcings. Strong variations in cloud occurrence are found in the observations from one season to the same season the following year as well as in the seasonal cycle. Overall, the model biases observed using the whole dataset are still found at seasonal scale, but the models generally manage to well reproduce the observed seasonal variations in cloud occurrence. Overall, models do not generate the same cloud fraction distributions and these distributions do not agree with the observations. Another general conclusion is that the use of continuous ground-based radar and lidar observations is definitely a powerful tool for evaluating model cloud schemes and for a responsive assessment of the benefit achieved by changing or tuning a model cloud parameterization.
机译:四种运行天气预报模型[ECMWF,Action de Recherche Petite Echelle Grande Echelle模型(ARPEGE),区域大气气候模型(RACMO)和Met Office]在正确的位置和时间生成云的能力(发生的云频率) )是通过使用两年时间序列的观测值进行评估的,该观测值是通过对位于西欧三个不同地点(荷兰卡波夫,英国奇尔伯顿;以及法国Palaiseau)。特别要注意的是,从一个站点到另一个站点的仪器差异(尤其是灵敏度)和间歇采样可能引起的潜在偏差。第二步,表征数值天气预报模型的最高级云方案(冰水含量和云量)所涉及的云变量的统计属性,并与模型中的对应变量进行比较。为了评估每个模型中云变量的统计表示的准确性,首先将这两年的观察作为一个整体考虑。结果表明,所有模型都倾向于产生太多的高云,云含量和冰水含量都过高。通常也高估了中低层云的发生,云量太低但冰水含量正确。然后将数据集划分为季节,以评估模型响应不同的大规模强迫而生成不同云情况的潜力。从一个季节到第二年的同一季节以及季节周期的观测中发现云的发生有很大变化。总体而言,使用整个数据集观察到的模型偏差仍在季节性范围内发现,但是模型通常可以很好地重现观察到的云发生季节变化。总体而言,模型不会生成相同的云分数分布,并且这些分布与观测值不一致。另一个普遍的结论是,使用连续的地面雷达和激光雷达观测绝对是评估模型云方案以及对通过更改或调整模型云参数化实现的效益做出响应性评估的强大工具。

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