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A statistical analysis of time trends in atmospheric ethane

Authors :
Friedrich, Marina
Beutner, Eric
Reuvers, Hanno
Smeekes, Stephan
Urbain, Jean-Pierre
Bader, Whitney
Franco, Bruno
Lejeune, Bernard
Mahieu, Emmanuel
Department of Econometrics and Data Science, Vrije Universiteit Amsterdam, 1081HV Amsterdam, The Netherlands
Department of Econometrics, Erasmus University, 3062PA Rotterdam, The Netherlands
Department of Quantitative Economics, Maastricht University, 6200MD Maastricht, The Netherlands
Agence Wallone de l’Air et du Climat, Avenue Prince de Liège, Jambes, Belgium
Spectroscopy, Quantum Chemistry and Atmospheric Remote Sensing (SQUARES), Université libre de Bruxelles (ULB), Brussels, Belgium
Institute of Astrophysics and Geophysics, University of Liège, Liège, Belgium
Econometrics
Econometrics and Data Science
QE Econometrics
RS: GSBE Theme Data-Driven Decision-Making
RS: FSE DACS Mathematics Centre Maastricht
Source :
Climatic Change, 162(1), 105-125. Springer Netherlands, Climatic change, 162 (1, Climatic Change, 162(1), 105-125. Springer Verlag, Friedrich, M, Beutner, E, Reuvers, H, Smeekes, S, Urbain, J P, Bader, W, Franco, B, Lejeune, B & Mahieu, E 2020, ' A statistical analysis of time trends in atmospheric ethane ', Climatic Change, vol. 162, no. 1, pp. 105-125 . https://doi.org/10.1007/s10584-020-02806-2, Climatic Change, 162(1), 105-125. Springer
Publication Year :
2020
Publisher :
Springer Verlag, 2020.

Abstract

Ethane is the most abundant non-methane hydrocarbon in the Earth’s atmosphere and an important precursor of tropospheric ozone through various chemical pathways. Ethane is also an indirect greenhouse gas (global warming potential), influencing the atmospheric lifetime of methane through the consumption of the hydroxyl radical (OH). Understanding the development of trends and identifying trend reversals in atmospheric ethane is therefore crucial. Our dataset consists of four series of daily ethane columns. As with many other decadal time series, our data are characterized by autocorrelation, heteroskedasticity, and seasonal effects. Additionally, missing observations due to instrument failure or unfavorable measurement conditions are common in such series. The goal of this paper is therefore to analyze trends in atmospheric ethane with statistical tools that correctly address these data features. We present selected methods designed for the analysis of time trends and trend reversals. We consider bootstrap inference on broken linear trends and smoothly varying nonlinear trends. In particular, for the broken trend model, we propose a bootstrap method for inference on the break location and the corresponding changes in slope. For the smooth trend model, we construct simultaneous confidence bands around the nonparametrically estimated trend. Our autoregressive wild bootstrap approach, combined with a seasonal filter, is able to handle all issues mentioned above (we provide R code for all proposed methods on https://www.stephansmeekes.nl/code.).<br />Horizon 2020 https://doi.org/10.13039/501100007601<br />Fonds De La Recherche Scientifique - FNRS https://doi.org/10.13039/501100002661

Details

Language :
English
ISSN :
15731480 and 01650009
Volume :
162
Issue :
1
Database :
OpenAIRE
Journal :
Climatic Change
Accession number :
edsair.doi.dedup.....6a566d83dbbc4fa1125a68bc9157ebaf
Full Text :
https://doi.org/10.1007/s10584-020-02806-2