首页> 外文期刊>Climate dynamics >Using joint probability distribution functions to evaluate simulations of precipitation, cloud fraction and insolation in the North America Regional Climate Change Assessment Program (NARCCAP)
【24h】

Using joint probability distribution functions to evaluate simulations of precipitation, cloud fraction and insolation in the North America Regional Climate Change Assessment Program (NARCCAP)

机译:使用联合概率分布函数评估北美区域气候变化评估计划(NARCCAP)中的降水,云量和日照模拟

获取原文
获取原文并翻译 | 示例
           

摘要

This study evaluates model fidelity in simulating relationships between seasonally averaged precipitation, cloud fraction and surface insolation from the North American Regional Climate Change Assessment Project (NARCCAP) hindcast using observational data from ground stations and satellites. Model fidelity is measured in terms of the temporal correlation coefficients between these three variables and the similarity between the observed and simulated joint probability distribution functions (JPDFs) in 14 subregions over the conterminous United States. Observations exhibit strong negative correlations between precipitation/cloud fraction and surface insolation for all seasons, whereas the relationship between precipitation and cloud fraction varies according to regions and seasons. The skill in capturing these observed relationships varies widely among the NARCCAP regional climate models, especially in the Midwest and Southeast coast regions where observations show weak (or even negative) correlations between precipitation and cloud fraction in winter due to frequent non-precipitating stratiform clouds. Quantitative comparison of univariate and JPDFs indicates that model performance varies markedly between regions as well as seasons. This study also shows that comparison of JPDFs is useful for summarizing the performance of and highlighting problems with some models in simulating cloud fraction and surface insolation. Our quantitative metric may be useful in improving climate models by highlighting shortcomings in the formulations related with the physical processes involved in precipitation, clouds and radiation or other multivariate processes in the climate system.
机译:这项研究使用来自地面站和卫星的观测数据,模拟了北美地区气候变化评估项目(NARCCAP)后播的季节平均降水量,云量与地表日照之间的关系,从而评估了模型的保真度。模型保真度是根据这三个变量之间的时间相关系数以及在美国本土14个子区域中观察到的和模拟的联合概率分布函数(JPDF)之间的相似性来衡量的。观测结果表明,所有季节的降水/云量分数与地表日照之间都具有很强的负相关性,而降水和云量分数的关系则随地区和季节而变化。在NARCCAP区域气候模式中,获取这些观测关系的技巧差异很大,尤其是在中西部和东南沿海地区,由于频繁的非降水性层状云,冬季观测到的降水与云量之间的相关性较弱(甚至是负相关)。单变量和JPDF的定量比较表明,模型的性能在区域和季节之间显着不同。这项研究还表明,JPDF的比较对于总结某些模型在模拟云量和地表日照方面的性能并突出它们的问题非常有用。通过强调与气候系统中与降水,云和辐射或其他多变量过程有关的物理过程有关的公式中的缺点,我们的定量指标可能对改善气候模型有用。

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