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首页> 外文期刊>Climate of the past >Combining a pollen and macrofossil synthesis with climate simulations for spatial reconstructions of European climate using Bayesian filtering
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Combining a pollen and macrofossil synthesis with climate simulations for spatial reconstructions of European climate using Bayesian filtering

机译:用贝叶斯滤波结合欧洲气候的空间模拟的花粉和大甲酸合成

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摘要

Probabilistic spatial reconstructions of past climate states are valuable to quantitatively study the climate system under different forcing conditions because they combine the information contained in a proxy synthesis into a comprehensible product. Unfortunately, they are subject to a complex uncertainty structure due to complicated proxy–climate relations and sparse data, which makes interpolation between samples difficult. Bayesian hierarchical models feature promising properties to handle these issues, like the possibility to include multiple sources of information and to quantify uncertainties in a statistically rigorous way. We present a Bayesian framework that combines a network of pollen and macrofossil samples with a spatial prior distribution estimated from a multi-model ensemble of climate simulations. The use of climate simulation output aims at a physically reasonable spatial interpolation of proxy data on a regional scale. To transfer the pollen data into (local) climate information, we invert a forward version of the probabilistic indicator taxa model. The Bayesian inference is performed using Markov chain Monte Carlo methods following a Metropolis-within-Gibbs strategy. Different ways to incorporate the climate simulations into the Bayesian framework are compared using identical twin and cross-validation experiments. Then, we reconstruct the mean temperature of the warmest and mean temperature of the coldest month during the mid-Holocene in Europe using a published pollen and macrofossil synthesis in combination with the Paleoclimate Modelling Intercomparison Project Phase III mid-Holocene ensemble. The output of our Bayesian model is a spatially distributed probability distribution that facilitates quantitative analyses that account for uncertainties.
机译:过去气候状态的概率空间重建是有价值的,可以在不同的迫使条件下定量研究气候系统,因为它们将包含在代理合成中的信息组合成可理解的产品。不幸的是,由于复杂的代理 - 气候关系和稀疏数据,它们受到复杂的不确定性结构的影响,这使得样本之间的插值难以实现。 Bayesian等级模型具有承诺的属性来处理这些问题,例如包括多个信息来源的可能性,并以统计上严谨的方式量化不确定性。我们提出了一种贝叶斯框架,将花粉和宏观样本的网络结合在气候模拟的多模型集合中估计的空间前提分布。使用气候模拟输出的使用旨在在区域规模上进行物理上合理的代理数据空间插值。要将花粉数据转移到(本地)气候信息中,我们反转了概率指标分类达模型的前向版本。贝叶斯推动使用Markov Chain Monte Carlo方法进行,在GIBBS策略之后。使用相同的双胞胎和交叉验证实验将纳入贝叶斯框架中的不同方式将气候模拟纳入贝叶斯框架。然后,我们使用公开的花粉和大甲酸合成在欧洲中全新世核和大甲酸合成中重建了最热敏和平均温度的平均温度,与古古典建模相互熟悉的项目阶段III中全新世企合并。我们的贝叶斯模型的输出是空间分布的概率分布,便于定量分析,该分析考虑了不确定性。

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