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首页> 外文期刊>International Journal of Climatology: A Journal of the Royal Meteorological Society >Bayesian multilevel analysis of variance for relative comparison across sources of global climate model variability
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Bayesian multilevel analysis of variance for relative comparison across sources of global climate model variability

机译:贝叶斯多级方差分析,用于全球气候模型变异性来源之间的相对比较

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Projections of future climate conditions are carried out by many research institutions, each with their own general circulation model to do so. The projections are additionally subjected to distinct anthropogenic forcings, specified by future greenhouse gas emissions scenarios. These two factors, together with their temporal effects and interaction, create several potential sources of variation in final climate projection output. Multilevel statistical models, and specifically multilevel ANOVA, have come to be widely used for many reasons, not least of which is their ability to comprehensively assess many different sources of variation. In this article, a Bayesian multilevel ANOVA approach is applied to climate projections to assess each of these sources of variation, estimate the uncertainty regarding the assessment, and to allow comparison across all sources. The data originate from phase three of the Coupled Model Intercomparison Project (CMIP3), consisting of 11 circulation models and three emissions scenarios over nine decadal time periods for boreal summer and winter. Data from the next phase, CMIP5, is now becoming available. As this approach towards ANOVA is relatively novel, and particularly so for spatial data, a short discussion of conventional ANOVA and the new methodology is provided.
机译:许多研究机构都对未来的气候条件进行了预测,每个研究机构都有自己的总体循环模型。这些预测还受到明显的人为强迫,这由未来的温室气体排放情景确定。这两个因素以及它们的时间影响和相互作用共同构成了最终气候预测产出的几种潜在变化源。多级统计模型,尤其是多级ANOVA,由于许多原因而被广泛使用,其中最重要的原因是它们能够全面评估许多不同的变异源。在本文中,将贝叶斯多级方差分析方法应用于气候预测,以评估这些变化的每个来源,估计评估的不确定性,并允许在所有来源之间进行比较。数据来自耦合模型比对项目(CMIP3)的第三阶段,该阶段由11个循环模型和三个排放情景组成,涉及北方夏季和冬季的九个十年时间段。来自下一阶段CMIP5的数据现在变得可用。由于这种针对ANOVA的方法相对新颖,尤其是对于空间数据而言,因此对常规ANOVA和新方法进行了简短讨论。

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