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首页> 外文期刊>Journal of the royal statistical society >Combining outputs from the North American Regional Climate Change Assessment Program by using a Bayesian hierarchical model
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Combining outputs from the North American Regional Climate Change Assessment Program by using a Bayesian hierarchical model

机译:使用贝叶斯层次模型将北美区域气候变化评估计划的输出结果组合起来

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We investigate the 20-year-average boreal winter temperatures generated by an ensemble of six regional climate models (RCMs) in phase I of the North American Regional Climate Change Assessment Program. We use the long-run average (20-year integration) to smooth out variability and to capture the climate properties from the RCM outputs. We find that, although the RCMs capture the large-scale climate variation from coast to coast and from south to north similarly, their outputs can differ substantially in some regions. We propose a Bayesian hierarchical model to synthesize information from the ensemble of RCMs, and we construct a consensus climate signal with each RCM contributing to the consensus according to its own variability parameter. The Bayesian methodology enables us to make posterior inference on all the unknowns, including the large-scale fixed effects and the small-scale random effects in the consensus climate signal and in each RCM. The joint distributions of the consensus climate and the outputs from the RCMs are also investigated through posterior means, posterior variances and posterior spatial quantiles. We use a spatial random-effects model in the Bayesian hierarchical model and, consequently, we can deal with the large data sets of fine resolution outputs from all the RCMs. Additionally, our model allows a flexible spatial covariance structure without assuming stationarity or isotropy.
机译:在北美区域气候变化评估计划的第一阶段,我们调查了六个区域气候模型(RCM)集合产生的20年平均北方冬季温度。我们使用长期平均值(20年积分)来消除变异性并从RCM输出中获取气候特征。我们发现,尽管RCMs类似地捕获了从海岸到海岸以及从南到北的大规模气候变化,但它们的输出在某些地区可能有很大的不同。我们提出了一种贝叶斯分层模型来从RCM集合中综合信息,并构造一个共识气候信号,每个RCM根据其自身的可变性参数对共识做出贡献。贝叶斯方法使我们能够对所有未知数进行后验推断,包括共识气候信号和每个RCM中的大型固定效应和小型随机效应。还通过后验方法,后验方差和后验空间分位数研究了共识气候和RCM产出的联合分布。我们在贝叶斯层次模型中使用空间随机效应模型,因此,我们可以处理所有RCM的高分辨率输出的大型数据集。此外,我们的模型允许采用灵活的空间协方差结构,而无需假设平稳性或各向同性。

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