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首页> 外文期刊>Journal of Climate >An objective Bayesian improved approach for applying optimal fingerprint techniques to estimate climate sensitivity.
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An objective Bayesian improved approach for applying optimal fingerprint techniques to estimate climate sensitivity.

机译:一种贝叶斯客观改进方法,用于应用最佳指纹技术估算气候敏感性。

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A detailed reanalysis is presented of a "Bayesian" climate parameter study (as exemplified by Forest et al.) that estimates climate sensitivity (ECS) jointly with effective ocean diffusivity and aerosol forcing, using optimal fingerprints to compare multidecadal observations with simulations by the Massachusetts Institute of Technology 2D climate model at varying settings of the three climate parameters. Use of improved methodology primarily accounts for the 90% confidence bounds for ECS reducing from 2.1-8.9 K to 2.0-3.6 K. The revised methodology uses Bayes's theorem to derive a probability density function (PDF) for the whitened (made independent using an optimal fingerprint transformation) observations, for which a uniform prior is known to be noninformative. A dimensionally reducing change of variables onto the parameter surface is then made, deriving an objective joint PDF for the climate parameters. The PDF conversion factor from the whitened variables space to the parameter surface represents a noninformative joint parameter prior, which is far from uniform. The noninformative prior prevents more probability than data uncertainty distributions warrant being assigned to regions where data respond little to parameter changes, producing better-constrained PDFs. Incorporating 6 years of unused model simulation data and revising the experimental design to improve diagnostic power reduces the best-fit climate sensitivity. Employing the improved methodology, preferred 90% bounds of 1.2-2.2 K for ECS are then derived (mode and median 1.6 K). The mode is identical to those from Aldrin et al. and [using the same Met Office Hadley Centre Climate Research Unit temperature, version 4 (HadCRUT4), observational dataset] from Ring et al. Incorporating nonaerosol forcing and observational surface temperature uncertainties, unlike in the original study, widens the 90% range to 1.0-3.0 K.
机译:对“贝叶斯”气候参数研究(以Forest等人为例)进行了详细的重新分析,该研究结合有效的海洋扩散系数和气溶胶强迫来估算气候敏感性(ECS),使用最佳指纹将马萨诸塞州的多年代观测结果与模拟结果进行比较在三个气候参数的不同设置下,技术学院的二维气候模型。使用改进的方法主要是将ECS的90%置信范围从2.1-8.9 K减少到2.0-3.6K。修订后的方法使用贝叶斯定理来导出白化概率概率函数(PDF)(使用最优方法独立指纹转换)观测,对于这些观测,统一的先验已知是没有信息的。然后进行变量在参数表面上的尺寸减小的变化,从而得出气候参数的客观联合PDF。从变白的变量空间到参数表面的PDF转换因子表示先验的非信息性联合参数,远非统一的。与数据不确定性分布所保证的区域对数据对参数变化的响应不大相比,非信息性先验可以防止产生更大的可能性,从而产生约束性更好的PDF。合并6年未使用的模型仿真数据并修改实验设计以提高诊断能力会降低最适合的气候敏感性。使用改进的方法,然后得出ECS的90%的优选1.2-2.2 K范围(众数和中位数1.6 K)。该模式与Aldrin等人的模式相同。和[使用相同的气象局哈德利中心气候研究室温度,版本4(HadCRUT4),观测数据集],来自Ring等。与原始研究不同,结合非气溶胶强迫和观测表面温度的不确定性将90%的范围扩大到1.0-3.0K。

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