...
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
【24h】

The impact of stochastic physics on tropical rainfall variability in global climate models on daily to weekly time scales

机译:随机物理对每日全球气候模型的热带降雨变异性的影响

获取原文
获取原文并翻译 | 示例
           

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:许多全球大气模型每天都会在热带地区的降水变量太少,每周时间尺度和热带降水极端的差,与激烈对流相关。随机参数化有可能通过代表遗留从确定性模型中遗漏的不可预测的底图变异来缓解此问题。我们评估了两种随机方案热带降雨统计数据的影响:三个气候模型中随机扰动的参数化趋势方案(SPPT)和随机动能反向散射方案(SKEBS):EC-eard,符合欧洲议会统一模型社区氛围模型,版本4.该方案普遍改善模拟热带降雨变异性的统计数据,特别是通过增加大雨事件的频率,降低其持久性并增加其变化的高频分量。模型之间的影响的大小范围大,EC地球显示出最大的改进。改进大于通过将水平分辨率提高至-20km而获得的改进。随机物理学也强烈影响EC地球极端热带降雨频率的未来变化的预测。这表明在这些模型中未解决和不可预测的小规模变化在决定热带气候变化统计中具有重要作用。使用这些方案和目前正在开发的改进方案,因此可能对本日和未来产生良好的热带变异性和极端模拟。已经发现从气候模型的简单语言摘要模拟在热带降雨中缺乏日常变异性,有太多的雨天,没有足够的日子,降雨量很大。对此问题的可能贡献者是模型用于预测降雨的方案试图预测给予大规模条件的平均降雨。实际上,令人无法预测的小规模特征,如Eddies和Gravity Waves,可能有助于形成严重风暴或阻止它们发展。我们测试是否使用随机方法代表这些小规模特征有效的随机影响,提高了三种气候模型模拟的热带降雨的可变性。我们发现它确实的证据表明,这表明对热带降雨的预测概率,而不是确定性地将改善气候模拟。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号