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Prediction of the Diurnal Change Using a Multimodel Superensemble. Part I: Precipitation

机译:使用Multimodel Superensemble预测日变化。第一部分:降水

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Modeling the geographical distribution of the phase and amplitude of the diurnal change is a challenging problem. This paper addresses the issues of modeling the diurnal mode of precipitation over the Tropics. Largely an early morning precipitation maximum over the oceans and an afternoon rainfall maximum over land areas describe the first-order diurnal variability. However, large variability in phase and amplitude prevails even within the land and oceanic areas. This paper addresses the importance of a multimodel superensemble for much improved prediction of the diurnal mode as compared to what is possible from individual models. To begin this exercise, the skills of the member models, the ensemble mean of the member models, a unified cloud model, and the superensemble for the prediction of total rain as well as its day versus night distribution were examined. Here it is shown that the distributions of total rain over the earth (tropical belt) and over certain geographical regions are predicted reasonably well (RMSE less than 18%) from the construction of a multimodel superensemble. This dataset is well suited for addressing the diurnal change. The large errors in phase of the diurnal modes in individual models usually stem from numerous physical processes such as the cloud radiation, shallow and deep cumulus convection, and the physics of the planetary boundary layer. The multimodel superensemble is designed to reduce such systematic errors and provide meaningful forecasts. That application for the diurnal mode appears very promising. This paper examines some of the regions such as the Tibetan Plateau, the eastern foothills of the Himalayas, and the Amazon region of South America that are traditionally difficult for modeling the diurnal change. In nearly all of these regions, errors in phase and amplitude of the diurnal mode of precipitation increase with the increased length of forecasts. Model forecast errors on the order of 6-12 h for phase and 50% for the amplitude are often seen from the member models. The multimodel superensemble reduces these errors and provides a close match (RMSE < 6 h) to the observed phase. The percent of daily rain and their phases obtained from the multimodel superensemble at 3-hourly intervals for different regions of the Tropics showed a closer match (pattern correlation about 0.4) with the satellite estimates. This is another area where the individual member models conveyed a much lower skill.
机译:对日变化的相位和幅度的地理分布进行建模是一个具有挑战性的问题。本文讨论了对热带地区降水的昼夜模式进行建模的问题。在很大程度上,海洋上的清晨最大降水量和陆地区域的下午最大降水量描述了一阶的日变化。但是,即使在陆地和海洋区域内,相位和幅度的变化也很大。与单个模型可能的模型相比,本文讨论了多模型超级集成对于日模式预测的极大改进的重要性。为了开始本练习,研究了成员模型的技能,成员模型的集合均值,统一的云模型以及用于预测总降雨及其昼夜分布的超级合奏。此处显示,从多模型超级集合的构建中,可以很好地预测地球(热带带)和某些地理区域上的总雨量分布(RMSE小于18%)。该数据集非常适合解决日变化。在单个模型中,昼夜模式相位的较大误差通常源于众多物理过程,例如云辐射,浅层和深层积云对流以及行星边界层的物理学。多模型超级集合旨在减少此类系统误差并提供有意义的预测。这种用于日间模式的应用看来很有希望。本文研究了一些传统上难以模拟日变化的地区,例如青藏高原,喜马拉雅山的东部山麓和南美的亚马逊地区。在几乎所有这些地区,降水的昼夜模式的相位和幅度误差随着预报时间的增加而增加。从成员模型中经常可以看到相位预测为6-12 h,幅度为50%的模型预测误差。多模型超级集成减少了这些误差,并提供了与观测阶段的紧密匹配(RMSE <6 h)。在热带地区的不同区域,以3小时为间隔,从多模式超级集合中获得的每日降雨百分比及其阶段显示与卫星估计值更接近(模式相关性约为0.4)。这是单个成员模型传达的技能低得多的另一个领域。

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