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Heavy precipitation events in the Mediterranean: Sensitivity to cloud physics parameterisation uncertainties

机译:地中海的强降水事件:对云物理参数化不确定性的敏感性

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In autumn, southeastern France is often affected by heavy precipitation events which may result in damaging flash-floods. The 20 October and 1 November 2008 are two archetypes of the meteorological situations under which these events occur: an upper-level trough directing a warm and moist flow from the Mediterranean towards the Cévennes ridge or a quasi stationary meso-scale convective complex developing over the Rhone valley. These two types of events exhibit a contrasting level of predictability; the former being usually better forecast than the latter. Control experiments performed with the Meso-NH model run with a 2.5 km resolution confirm these predictability issues. The deterministic forecast of the November case (Cévennes ridge) is found to be much more skilful than the one for the October case (Rhone valley). These two contrasting situations are used to investigate the sensitivity of the model for cloud physics parameterisation uncertainties. Three 9-member ensembles are constructed. In the first one, the rain distribution intercept parameter is varied within its range of allowed values. In the second one, random perturbations are applied to the rain evaporation rate, whereas in the third one, random perturbations are simultaneously applied to the cloud autoconversion, rain accretion, and rain evaporation rates. Results are assessed by comparing the time and space distribution of the observed and forecasted precipitation. For the Rhone valley case, it is shown that not one of the ensembles is able to drastically improve the skill of the forecast. Taylor diagrams indicate that the microphysical perturbations are more efficient in modulating the rainfall intensities than in altering their localization. Among the three ensembles, the multi-process perturbation ensemble is found to yield the largest spread for most parameters. In contrast, the results of the Cévennes case exhibit almost no sensitivity to the microphysical perturbations. These results clearly show that the usefulness of an ensemble prediction system based upon microphysical perturbations is case dependent. Additional experiments indicate a greater potential for the multi-process ensemble when the model resolution is increased to 500 m.
机译:在秋天,法国东南部经常受到强降水事件的影响,这可能会导致洪水泛滥。 2008年10月20日和11月1日是发生这些事件的两种气象情况的原型:引导地中海从温​​暖湿润的气流进入塞文山脉的上层低谷,或在该岛上发展的准静止的中尺度对流复合体。罗纳河谷。这两种类型的事件表现出不同的可预测性。前者通常比后者更好。使用Meso-NH模型以2.5 km的分辨率运行的对照实验证实了这些可预测性问题。发现对11月案例(塞文山脉)的确定性预测要比对10月案例(罗纳河谷)的预测要熟练得多。这两个相反的情况用于研究模型对云物理参数化不确定性的敏感性。构造了三个9人合奏。在第一个中,降雨分布拦截参数在其允许值范围内变化。在第二种方法中,随机扰动应用于降雨蒸发率,而在第三种方法中,随机扰动同时应用于云的自动转换,积雨和降雨蒸发率。通过比较观测到的和预测的降水的时间和空间分布来评估结果。对于罗纳河谷的情况,表明没有一个乐团能够大大提高预报的技巧。泰勒图表明,微物理扰动在调节降雨强度方面比改变其位置更为有效。在这三个合奏中,发现多过程摄动合奏对于大多数参数产生最大的扩展。相反,塞文斯一案的结果对微物理扰动几乎没有敏感性。这些结果清楚地表明,基于微物理扰动的整体预测系统的有效性取决于情况。额外的实验表明,当模型分辨率提高到500 m时,多进程合奏的潜力更大。

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