Climate Change: Linear and Nonlinear Causality Analysis

IF 0.9 Q4 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS
Stats Pub Date : 2023-05-15 DOI:10.3390/stats6020040
Jiecheng Song, Merry H. Ma
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引用次数: 0

Abstract

The goal of this study is to detect linear and nonlinear causal pathways toward climate change as measured by changes in global mean surface temperature and global mean sea level over time using a data-based approach in contrast to the traditional physics-based models. Monthly data on potential climate change causal factors, including greenhouse gas concentrations, sunspot numbers, humidity, ice sheets mass, and sea ice coverage, from January 2003 to December 2021, have been utilized in the analysis. We first applied the vector autoregressive model (VAR) and Granger causality test to gauge the linear Granger causal relationships among climate factors. We then adopted the vector error correction model (VECM) as well as the autoregressive distributed lag model (ARDL) to quantify the linear long-run equilibrium and the linear short-term dynamics. Cointegration analysis has also been adopted to examine the dual directional Granger causalities. Furthermore, in this work, we have presented a novel pipeline based on the artificial neural network (ANN) and the VAR and ARDL models to detect nonlinear causal relationships embedded in the data. The results in this study indicate that the global sea level rise is affected by changes in ice sheet mass (both linearly and nonlinearly), global mean temperature (nonlinearly), and the extent of sea ice coverage (nonlinearly and weakly); whereas the global mean temperature is affected by the global surface mean specific humidity (both linearly and nonlinearly), greenhouse gas concentration as measured by the global warming potential (both linearly and nonlinearly) and the sunspot number (only nonlinearly and weakly). Furthermore, the nonlinear neural network models tend to fit the data closer than the linear models as expected due to the increased parameter dimension of the neural network models. Given that the information criteria are not generally applicable to the comparison of neural network models and statistical time series models, our next step is to examine the robustness and compare the forecast accuracy of these two models using the soon-available 2022 monthly data.
气候变化:线性与非线性因果分析
这项研究的目标是通过与传统的基于物理的模型相比,使用基于数据的方法,通过全球平均地表温度和全球平均海平面随时间的变化来检测气候变化的线性和非线性因果途径。分析中使用了2003年1月至2021年12月关于潜在气候变化因果因素的月度数据,包括温室气体浓度、太阳黑子数量、湿度、冰盖质量和海冰覆盖率。我们首先应用向量自回归模型(VAR)和格兰杰因果检验来衡量气候因素之间的线性格兰杰因果关系。然后,我们采用向量误差校正模型(VECM)和自回归分布滞后模型(ARDL)来量化线性长期均衡和线性短期动态。协整分析也被用来检验双向格兰杰因果关系。此外,在这项工作中,我们提出了一种基于人工神经网络(ANN)、VAR和ARDL模型的新管道,以检测嵌入数据中的非线性因果关系。研究结果表明,全球海平面上升受冰盖质量(线性和非线性)、全球平均温度(非线性)和海冰覆盖范围(非线性和弱)变化的影响;而全球平均温度受全球表面平均比湿度(线性和非线性)、温室气体浓度(线性和线性)和太阳黑子数(仅非线性和微弱)的影响。此外,由于神经网络模型的参数维度增加,非线性神经网络模型往往比线性模型更接近于预期的数据拟合。鉴于信息标准通常不适用于神经网络模型和统计时间序列模型的比较,我们的下一步是使用即将获得的2022年月度数据来检查这两个模型的稳健性并比较预测准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
0.60
自引率
0.00%
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0
审稿时长
7 weeks
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