首页> 外文期刊>Climate dynamics >Partitioning uncertainty components of mean climate and climate change in a large ensemble of European regional climate model projections
【24h】

Partitioning uncertainty components of mean climate and climate change in a large ensemble of European regional climate model projections

机译:在欧洲区域气候模型预测的大型集合中分区平均气候和气候变化的不确定性组分

获取原文
获取原文并翻译 | 示例
           

摘要

A study of seasonal mean temperature, precipitation, and wind speed has been performed for a set of 19 global climate model (GCM) driven high-resolution regional climate model (RCM) simulations forming a complete 5 x 4 GCM x RCM matrix with only one missing simulation. Differences between single simulations and between groups of simulations forced by a specific GCM or a specific RCM are identified. With the help of an analysis of variance (ANOVA) we split the ensemble variance into linear GCM and RCM contributions and cross terms for both mean climate and climate change for the end of the current century according to the RCP8.5 emission scenario. The results document that the choice of GCM generally has a larger influence on the climate change signal than the choice of RCM, having a significant influence for roughly twice as many points in the area for the fields investigated (temperature, precipitation and wind speed). It is also clear that the RCM influence is generally concentrated close to the eastern and northern boundaries and in mountainous areas, i.e., in areas where the added surface detail of e.g. orography, snow and ice seen by the RCM is expected to have considerable influence on the climate, and in areas where the air in general has spent the most time within the regional domain. The analysis results in estimates of areas where the specific identity of either GCM or RCM is formally significant, hence obtaining an indication about regions, seasons, and fields where linear superpositions of GCM and RCM effects are good approximations to an actual simulation for both the mean fields analysed and their changes. In cases where linear superposition works well, the frequently encountered sparse GCM-RCM matrices may be filled with emulated results, leading to the possibility of giving more fair relative weight between model simulations than simple averaging of existing simulations. An important result of the present study is that properties of the specific GCM-RCM combination are generally important for the mean climate, but negligible for climate change for the seasonal-mean surface fields investigated here.
机译:对一组19个全球气候模型(GCM)驱动的高分辨率区域气候模型(RCM)模拟进行了一套季节性平均温度,降水和风速的研究已经进行了完整的5×4GCM X RCM矩阵,只有一个缺少模拟。识别单个模拟之间的差异以及由特定GCM或特定RCM强制的模拟之间的差异。用方差分析的帮助下(ANOVA)我们分裂合奏方差为线性GCM和RCM贡献和交叉项两者平均气候和气候变化了根据RCP8.5发射方案中的当前世纪末。结果证明,GCM的选择通常对气候变化信号的影响较大,而不是RCM的选择,对于所研究的田地(温度,降水和风速)的区域中的区域大致两倍有显着影响。还显然,RCM影响通常靠近东部和北部边界以及在山区,即在额外的表面细节的区域。预计RCM看到的地理位置,雪和冰对气候有相当大的影响,以及在空气的领域将在区域域内的最多时间度过。分析结果估计了GCM或RCM的特定身份正式显着的区域,因此获得了关于地区,季节和rCM效应的区域,季节和田地的指示以及对平均值的实际模拟的良好近似分析的字段及其变化。在线性叠加良好的情况下,通常遇到的稀疏GCM-RCM矩阵可以填充有仿真结果,导致模拟模拟之间提供比现有模拟的简单平均值在模型模拟之间提供更公平的相对重量的可能性。本研究的一个重要结果是特定GCM-RCM组合的性质通常对平均气候至关重要,但在此处调查的季节性平均表面字段的气候变化可以忽略不计。

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