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首页> 外文期刊>Journal of Climate >Partitioning Internal Variability and Model Uncertainty Components in a Multimember Multimodel Ensemble of Climate Projections
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Partitioning Internal Variability and Model Uncertainty Components in a Multimember Multimodel Ensemble of Climate Projections

机译:在气候投影的多成员多模型合集中划分内部变异性和模型不确定性分量

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摘要

A simple and robust framework is proposed for the partitioning of the different components of internal variability and model uncertainty in an unbalanced multimember multimodel ensemble (MM2E) of climate projections obtained for a suite of statistical downscaling models (SDMs) and global climate models (GCMs). It is based on the quasi-ergodic assumption for transient climate simulations. Model uncertainty components are estimated from the noise-free signals of the different modeling chains using a two-way analysis of variance (ANOVA) framework. The residuals from the noise-free signals are used to estimate the large- and small-scale internal variability components associated with each considered GCM-SDM configuration. This framework makes it possible to take into account all members available from any climate ensemble of opportunity. Uncertainty is quantified as a function of lead time for projections of changes in temperature and precipitation produced for a mesoscale alpine catchment. Internal variability accounts for more than 80% of total uncertainty in the first decades. This proportion decreases to less than 10% at the end of the century for temperature but remains greater than 50% for precipitation. Small-scale internal variability is negligible for temperature; however, it is similar to the large-scale component for precipitation, whatever the projection lead time. SDM uncertainty is always greater than GCM uncertainty for precipitation. It is also greater for temperature in the middle of the century. The response-to-uncertainty ratio is very high for temperature. For precipitation, it is always less than one, indicating that even the sign of change is uncertain.
机译:提出了一个简单而健壮的框架,用于对一组统计降尺度模型(SDM)和全球气候模型(GCM)获得的气候预测的不平衡多成员多模型集合(MM2E)中内部变异性和模型不确定性的不同部分进行划分。 。它基于瞬态气候模拟的拟遍历假设。使用双向方差分析(ANOVA)框架,根据不同建模链的无噪声信号估计模型不确定性分量。来自无噪声信号的残差用于估计与每个考虑的GCM-SDM配置相关的大型和小型内部可变性分量。该框架可以考虑来自任何气候机会集合体的所有成员。不确定性被量化为提前期的函数,以预测中尺度高山流域产生的温度和降水的变化。在最初的几十年中,内部可变性占总不确定性的80%以上。到本世纪末,温度的比例下降到不足10%,而降水量则保持在50%以上。温度的小范围内部变化可以忽略不计;但是,无论投影提前时间如何,它都类似于大型降水分量。 SDM不确定性总是大于降水的GCM不确定性。本世纪中叶的温度也更高。温度的响应不确定度比率非常高。对于降水,它总是小于一,这表明即使变化的迹象也是不确定的。

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