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首页> 外文期刊>Geophysical Research Letters >A Bayesian hierarchical model for climate change detection and attribution
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A Bayesian hierarchical model for climate change detection and attribution

机译:气候变化检测和归因的贝叶斯分层模型

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Regression-based detection and attribution methods continue to take a central role in the study of climate change and its causes. Here we propose a novel Bayesian hierarchical approach to this problem, which allows us to address several open methodological questions. Specifically, we take into account the uncertainties in the true temperature change due to imperfect measurements, the uncertainty in the true climate signal under different forcing scenarios due to the availability of only a small number of climate model simulations, and the uncertainty associated with estimating the climate variability covariance matrix, including the truncation of the number of empirical orthogonal functions (EOFs) in this covariance matrix. We apply Bayesian model averaging to assign optimal probabilistic weights to different possible truncations and incorporate all uncertainties into the inference on the regression coefficients. We provide an efficient implementation of our method in a software package and illustrate its use with a realistic application.
机译:基于回归的检测和归因方法继续在气候变化研究及其原因研究中作出核心作用。在这里,我们提出了一种新的贝叶斯分层方法来解决这个问题,这使我们能够解决几个开放的方法问题。具体而言,我们考虑了由于不完美的测量而在真正的温度变化中的不确定性,由于只有少量气候模型模拟而在不同的强制方案下的真正气候信号的不确定性以及与估计相关的不确定性气候变异协方差矩阵,包括在这种协方差矩阵中截断经验正交功能(EOF)的数量。我们应用贝叶斯模型平均以为不同可能的截断指定最佳概率权重,并将所有不确定性结合到回归系数上的推断中。我们在软件包中提供了我们的方法,并说明了与现实应用程序的用途。

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