An investigation of weighting schemes suitable for incorporating large ensembles into multi-model ensembles

A. Merrifield, L. Brunner, R. Lorenz, I. Medhaug, R. Knutti
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引用次数: 43

Abstract

Abstract. Multi-model ensembles can be used to estimate uncertainty in projections of regional climate, but this uncertainty often depends on the constituents of the ensemble. The dependence of uncertainty on ensemble composition is clear when single-model initial condition large ensembles (SMILEs) are included within a multi-model ensemble. SMILEs allow for the quantification of internal variability, a non-negligible component of uncertainty on regional scales, but may also serve to inappropriately narrow uncertainty by giving a single model many additional votes. In advance of the mixed multi-model, the SMILE Coupled Model Intercomparison version 6 (CMIP6) ensemble, we investigate weighting approaches to incorporate 50 members of the Community Earth System Model (CESM1.2.2-LE), 50 members of the Canadian Earth System Model (CanESM2-LE), and 100 members of the MPI Grand Ensemble (MPI-GE) into an 88-member Coupled Model Intercomparison Project Phase 5 (CMIP5) ensemble. The weights assigned are based on ability to reproduce observed climate (performance) and scaled by a measure of redundancy (dependence). Surface air temperature (SAT) and sea level pressure (SLP) predictors are used to determine the weights, and relationships between present and future predictor behavior are discussed. The estimated residual thermodynamic trend is proposed as an alternative predictor to replace 50-year regional SAT trends, which are more susceptible to internal variability. Uncertainty in estimates of northern European winter and Mediterranean summer end-of-century warming is assessed in a CMIP5 and a combined SMILE–CMIP5 multi-model ensemble. Five different weighting strategies to account for the mix of initial condition (IC) ensemble members and individually represented models within the multi-model ensemble are considered. Allowing all multi-model ensemble members to receive either equal weight or solely a performance weight (based on the root mean square error (RMSE) between members and observations over nine predictors) is shown to lead to uncertainty estimates that are dominated by the presence of SMILEs. A more suitable approach includes a dependence assumption, scaling either by  1∕N , the number of constituents representing a “model”, or by the same RMSE distance metric used to define model performance. SMILE contributions to the weighted ensemble are smallest (  %) when a model is defined as an IC ensemble and increase slightly (  %) when the definition of a model expands to include members from the same institution and/or development stream. SMILE contributions increase further when dependence is defined by RMSE (over nine predictors) amongst members because RMSEs between SMILE members can be as large as RMSEs between SMILE members and other models. We find that an alternative RMSE distance metric, derived from global SAT and hemispheric SLP climatology, is able to better identify IC members in general and SMILE members in particular as members of the same model. Further, more subtle dependencies associated with resolution differences and component similarities are also identified by the global predictor set.
适用于将大系统集成到多模型系统中的加权方案的研究
摘要多模式组合可用于估计区域气候预估的不确定性,但这种不确定性往往取决于组合的组成部分。当单模型初始条件大系综(SMILEs)包含在一个多模型系综中时,不确定性对系综组成的依赖是明显的。smile允许内部变异性的量化,这是区域尺度上不确定性的一个不可忽略的组成部分,但也可能通过给单个模型提供许多额外的投票来不适当地缩小不确定性。在SMILE耦合模式比对第6阶段(CMIP5)混合多模式集合之前,我们研究了将50个社区地球系统模型(CESM1.2.2-LE)成员、50个加拿大地球系统模型(CanESM2-LE)成员和100个MPI大集合(MPI- ge)成员纳入88个成员的耦合模式比对第5阶段(CMIP5)集合的加权方法。所分配的权重基于再现观测气候的能力(性能),并根据冗余度(依赖性)进行缩放。使用地表气温(SAT)和海平面压力(SLP)预测因子来确定权重,并讨论了现在和未来预测因子行为之间的关系。估计的剩余热力趋势被提议作为替代50年区域SAT趋势的预测因子,后者更容易受到内部变率的影响。在CMIP5和SMILE-CMIP5联合多模式总集中评估了北欧冬季和地中海夏季世纪末变暖估计的不确定性。考虑了五种不同的加权策略,以考虑初始条件集成成员和多模型集成中单独表示的模型的混合。允许所有多模型集成成员获得相等的权重或仅仅是一个性能权重(基于成员和九个预测因子之间的均方根误差(RMSE))被证明会导致由smile的存在主导的不确定性估计。一个更合适的方法包括一个依赖假设,用1∕N(代表一个“模型”的组成部分的数量)来缩放,或者用同样的RMSE距离度量来定义模型性能。当模型被定义为集成电路集成时,SMILE对加权集成的贡献最小(%),当模型的定义扩展到包括来自同一机构和/或开发流程的成员时,SMILE对加权集成的贡献稍微增加(%)。当成员之间的依赖关系由RMSE(超过9个预测因子)定义时,SMILE的贡献进一步增加,因为SMILE成员之间的RMSE可以与SMILE成员和其他模型之间的RMSE一样大。我们发现,基于全球SAT和半球SLP气候学的另一种RMSE距离度量,能够更好地将IC成员和SMILE成员识别为同一模式的成员。此外,与分辨率差异和组件相似性相关的更微妙的依赖关系也由全局预测集确定。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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