Evaluation of simulated responses to climate forcings: a flexible statistical framework using confirmatory factor analysis and structural equation modelling – Part 2: Numerical experiment

Q1 Mathematics
Katarina Lashgari, A. Moberg, G. Brattström
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引用次数: 1

Abstract

Abstract. The performance of a new statistical framework, developed for the evaluation of simulated temperature responses to climate forcings against temperature reconstructions derived from climate proxy data for the last millennium, is evaluated in a so-called pseudo-proxy experiment, where the true unobservable temperature is replaced with output data from a selected simulation with a climate model. Being an extension of the statistical model used in many detection and attribution (D&A) studies, the framework under study involves two main types of statistical models, each of which is based on the concept of latent (unobservable) variables: confirmatory factor analysis (CFA) models and structural equation modelling (SEM) models. Within the present pseudo-proxy experiment, each statistical model was fitted to seven continental-scale regional data sets. In addition, their performance for each defined region was compared to the performance of the corresponding statistical model used in D&A studies. The results of this experiment indicated that the SEM specification is the most appropriate one for describing the underlying latent structure of the simulated temperature data in question. The conclusions of the experiment have been confirmed in a cross-validation study, presuming the availability of several simulation data sets within each studied region. Since the experiment is performed only for zero noise level in the pseudo-proxy data, all statistical models, chosen as final regional models, await further investigation to thoroughly test their performance for realistic levels of added noise, similar to what is found in real proxy data for past temperature variations.
对气候强迫的模拟响应的评估:采用验证性因子分析和结构方程模型的灵活统计框架。第2部分:数值实验
摘要在所谓的伪代理实验中,对一个新的统计框架的性能进行了评估,该框架是为评估模拟温度对气候强迫的响应而开发的,该模拟温度响应是根据过去一千年的气候代理数据得出的。在所谓的伪代理实验中,真实的不可观测温度被气候模式模拟的输出数据所取代。作为许多检测和归因(D&A)研究中使用的统计模型的扩展,所研究的框架涉及两种主要类型的统计模型,每一种模型都基于潜在(不可观察)变量的概念:验证性因子分析(CFA)模型和结构方程建模(SEM)模型。在本伪代理实验中,每个统计模型都拟合了七个大陆尺度的区域数据集。此外,他们在每个定义区域的表现与D&A研究中使用的相应统计模型的表现进行了比较。实验结果表明,用扫描电镜描述模拟温度数据的潜在结构是最合适的。实验的结论已经在交叉验证研究中得到证实,假设在每个研究区域内有几个模拟数据集的可用性。由于实验仅在伪代理数据中的零噪声水平下进行,因此所有被选为最终区域模型的统计模型都有待进一步调查,以彻底测试它们在实际添加噪声水平下的性能,类似于在过去温度变化的真实代理数据中发现的性能。
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来源期刊
Advances in Statistical Climatology, Meteorology and Oceanography
Advances in Statistical Climatology, Meteorology and Oceanography Earth and Planetary Sciences-Atmospheric Science
CiteScore
4.80
自引率
0.00%
发文量
9
审稿时长
26 weeks
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