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首页> 外文期刊>Journal of Climate >Application of Bayesian Model Averaging in the Reconstruction of Past Climate Change Using PMIP3/CMIP5 Multimodel Ensemble Simulations
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Application of Bayesian Model Averaging in the Reconstruction of Past Climate Change Using PMIP3/CMIP5 Multimodel Ensemble Simulations

机译:贝叶斯模型在使用PMIP3 / CMIP5 Multimodel合奏模拟中过去气候变化重建中的应用

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Climate change simulations based on climate models are inevitably uncertain. This uncertainty typically stems from parametric and structural uncertainties in climate models as well as climate forcings. However, combining model simulations with instrumental observations using appropriate statistical methods is an effective approach for describing this uncertainty. In this study, the authors applied Bayesian model averaging (BMA), a statistical postprocessing method, to an ensemble of climate model simulations from the Paleoclimate Modelling Intercomparison Project phase 3 (PMIP3) and phase 5 of the Coupled Model Intercomparison Project (CMIP5). Uncertainties, weights, and variances of individual model simulations were estimated from a training period using the National Centers for Environmental Prediction-National Center for Atmospheric Research (NCEP-NCAR) reanalysis dataset. The results presented here demonstrate that the BMA method is successful and attains a positive performance in this study. These results show that the selected proxy-based reconstructions and simulations are consistent with BMA estimates regarding climate variability in the past 1000 years, though differences can be found for some periods. The authors conclude that BMA is an effective tool for describing uncertainties associated with individual model simulations, as it accounts for the diverse capabilities of different models and generates a more credible range of past climate change over a relatively long-term period based on multimodel ensemble simulations and training data.
机译:基于气候模型的气候变化模拟不可避免地不确定。这种不确定性通常源于气候模型中的参数和结构性不确定性以及气候迫使。然而,使用适当的统计方法将模型模拟与仪器观测相结合,是描述这种不确定性的有效方法。在本研究中,作者将贝叶斯模型平均(BMA),统计的后处理方法,从耦合模型互通项目(CMIP5)的古老气候建模相互兼容项目阶段3(PMIP3)和第5阶段和第5阶段的气候模型模拟的集合。利用国家预测 - 国家大气研究中心(NCEP-NCAR)Reanalysic DataSet的国家预测中心,各个模型模拟的不确定性,重量和差异估计了各种模型模拟。这里提出的结果表明,BMA方法是成功的,并在这项研究中获得积极的性能。这些结果表明,所选的基于代理的重建和模拟与关于过去1000年的气候变异性的BMA估计,但可以在某个时期找到差异。作者得出结论,BMA是描述与各个模型模拟相关的不确定性的有效工具,因为它占不同模型的不同能力,并在基于多模型集合模拟的相对长期时期产生更可靠的过去的气候变化范围和培训数据。

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