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首页> 外文期刊>Journal of Geophysical Research, D. Atmospheres: JGR >The impact of stochastic physics on tropical rainfall variability in global climate models on daily to weekly time scales
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The impact of stochastic physics on tropical rainfall variability in global climate models on daily to weekly time scales

机译:随机物理在热带的影响全球气候模型的降水变率每天每周的时间尺度

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摘要

Many global atmospheric models have too little precipitation variability in the tropics on daily to weekly time scales and also a poor representation of tropical precipitation extremes associated with intense convection. Stochastic parameterizations have the potential to mitigate this problem by representing unpredictable subgrid variability that is left out of deterministic models. We evaluate the impact on the statistics of tropical rainfall of two stochastic schemes: the stochastically perturbed parameterization tendency scheme (SPPT) and stochastic kinetic energy backscatter scheme (SKEBS), in three climate models: EC-Earth, the Met Office Unified Model, and the Community Atmosphere Model, version 4. The schemes generally improve the statistics of simulated tropical rainfall variability, particularly by increasing the frequency of heavy rainfall events, reducing its persistence and increasing the high-frequency component of its variability. There is a large range in the size of the impact between models, with EC-Earth showing the largest improvements. The improvements are greater than those obtained by increasing horizontal resolution to -20 km. Stochastic physics also strongly affects projections of future changes in the frequency of extreme tropical rainfall in EC-Earth. This indicates that small-scale variability that is unresolved and unpredictable in these models has an important role in determining tropical climate variability statistics. Using these schemes, and improved schemes currently under development, is therefore likely to be important for producing good simulations of tropical variability and extremes in the present day and future. Plain Language Summary Simulations from climate models have been found to lack day-to-day variability in tropical rainfall, with there being too many rainy days and not enough days with very heavy rainfall. A possible contributor to this problem is that the schemes the models use to predict rainfall try to predict the average rainfall that would be expected for given large-scale conditions. In reality, unpredictable small-scale features like eddies and gravity waves may contribute to the formation of severe storms or prevent them from developing. We test whether using stochastic methods to represent the effectively random impact of these small-scale features improves the variability of tropical rainfall simulated by three climate models. We find evidence that it does, and this indicates that treating the prediction of tropical rainfall probabilistically rather than deterministically will give improvements in climate simulations.
机译:许多全球大气模型太少降水变化每天都在热带地区每周的时间尺度和贫穷热带降水极端的代表与强烈的对流。参数化有可能减轻这个问题,代表不可预知排除的次网格变化确定性模型。两个的热带降雨统计随机方案:随机摄动计划(SPPT)和参数化趋势随机动能后向散射的计划(SKEBS),在三个气候模型:EC-Earth,气象局统一模型,和社区大气模型、版本4。通常提高模拟的统计数据热带降雨变化,特别是通过暴雨的频率增加事件,减少其持久性和增加的高频分量的变化。有一个大范围的大小的影响模型之间,EC-Earth显示最大的改进。那些通过增加水平解决-20公里。强烈影响的预测未来的变化极端的热带降雨的频率EC-Earth。未解决的和不可预测的变化在这些模型有重要的作用确定热带气候变化统计数据。方案目前正在开发,因此可能是重要的生产好模拟热带可变性和极端在今天和未来。摘要从气候模型模拟发现缺少日常可变性在热带降雨,有太多的雨天没有足够的天强降雨。这个问题是可能的原因方案模型用来预测降雨尝试预测的平均降雨量预期对于给定大规模的条件。现实,不可预知的小规模等功能漩涡和重力波可能导致的形成严重的风暴或阻止他们发展。代表有效的随机方法这些小规模的功能改善的影响可变性的热带降雨模拟三个气候模型。确实,这表明治疗热带降雨概率的预测而不是确定性会给改善气候模拟。

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