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Evaluating simulated climate patterns from the CMIP archives using satellite and reanalysis datasets using the Climate Model Assessment Tool (CMATv1)

机译:使用气候模型评估工具(CMATV1)使用卫星和再分析数据集来评估来自CMIP档案的模拟气候模式(CMATV1)

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An objective approach is presented for scoring coupled climate simulations through an evaluation against satellite and reanalysis datasets during the satellite era (i.e., since 1979). The approach is motivated, described, and applied to available Coupled Model Intercomparison Project (CMIP) archives and the Community Earth System Model (CESM) Version?1 Large Ensemble archives with the goal of robustly benchmarking model performance and its evolution across CMIP generations. A scoring system is employed that minimizes sensitivity to internal variability, external forcings, and model tuning. Scores are based on pattern correlations of the simulated mean state, seasonal contrasts, and ENSO teleconnections. A broad range of feedback-relevant fields is considered and summarized on discrete timescales (climatology, seasonal, interannual) and physical realms (energy budget, water cycle, dynamics). Fields are also generally chosen for which observational uncertainty is small compared to model structural differences. Highest mean variable scores across models are reported for well-observed fields such as sea level pressure, precipitable water, and outgoing longwave radiation, while the lowest scores are reported for 500hPa vertical velocity, net surface energy flux, and precipitation minus evaporation. The fidelity of models is found to vary widely both within and across CMIP generations. Systematic increases in model fidelity in more recent CMIP generations are identified, with the greatest improvements occurring in dynamic and energetic fields. Such examples include shortwave cloud forcing and 500hPa eddy geopotential height and relative humidity. Improvements in ENSO scores with time are substantially greater than for climatology or seasonal timescales. Analysis output data generated by this approach are made freely available online from a broad range of model ensembles, including the CMIP archives and various single-model large ensembles. These multimodel archives allow for an expeditious analysis of performance across a range of simulations, while the CESM large ensemble archive allows for estimation of the influence of internal variability on computed scores. The entire output archive, updated and expanded regularly, can be accessed at http://webext.cgd.ucar.edu/Multi-Case/CMAT/index.html (last access: 18?August?2020).
机译:通过对卫星时代的卫星和再分析数据集进行评估,提出了一种客观方法,以期间卫星时代的评估(即,自1979年以来)。该方法是有动力的,描述的,并应用于可用的耦合模型互通项目(CMIP)档案和社区地球系统模型(CESM)版本?1个大型集合档案,其目的是跨越CMIP世代的模型性能及其演变。采用评分系统,最大限度地减少对内部可变性,外部强制和模型调整的敏感性。分数基于模拟平均状态,季节性对比和enso拨连接的模式相关性。在离散时间尺度(气候学,季节性,际)和物理领域(能量预算,水循环,动态)上,考虑和总结了广泛的反馈相关领域。与模型结构差异相比,通常选择田间的观察性不确定性较小。跨越模型的最高平均变量分数据了解良好的视野,如海平面压力,可降水和出扬的长波辐射,而据报道了500HPA垂直速度,净表面能量通量和降水减去蒸发的最低分数。发现模型的保真度在CMIP世代内部和跨越CMIP世代都会有所不同。识别在更新最近的CMIP世代模型保真度的系统增加,具有最大的改进,在动态和精力充沛的领域发生。这些实例包括短波云强迫和500HPa涡流高度和相对湿度。随着时间的推移,ENSO评分的改进显着大于气候学或季节性时间尺寸。通过这种方法生成的分析输出数据可以在线在线自由地提供来自广泛的模型集合,包括CMIP档案和各种单型大型集合。这些多模型档案允许在一系列模拟中迅速分析性能,而CESM大集合归档允许估计内部可变性对计算得分的影响。整个输出存档,定期更新和扩展,可以访问http://webext.cgd.ucar.edu/multi-case/cmat/index.html(上次访问:18?8月份?2020)。

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