Published June 9, 2017
| Version v1
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Estimating trends in the global mean temperature record
- 1. Carleton College
- 2. University of Chicago
Description
Given uncertainties in physical theory and numerical climate simulations, the historical temperature record is often used as a source of empirical information about climate change. Many historical trend analyses appear to de-emphasize physical and statistical assumptions: examples include regression models that treat time rather than radiative forcing as the relevant covariate, and time series methods that account for internal variability in nonparametric rather than parametric ways. However, given a limited data record and the presence of internal variability, estimating radiatively forced temperature trends in the historical record necessarily requires some assumptions. Ostensibly empirical methods can also involve an inherent conflict in assumptions: they require data records that are short enough for naive trend models to be applicable, but long enough for long-timescale internal variability to be accounted for. In the context of global mean temperatures, empirical methods that appear to de-emphasize assumptions can therefore produce misleading inferences, because the trend over the twentieth century is complex and the scale of temporal correlation is long relative to the length of the data record. We illustrate here how a simple but physically motivated trend model can provide better-fitting and more broadly applicable trend estimates and can allow for a wider array of questions to be addressed. In particular, the model allows one to distinguish, within a single statistical framework, between uncertainties in the shorter-term vs. longer-term response to radiative forcing, with implications not only on historical trends but also on uncertainties in future projections. We also investigate the consequence on inferred uncertainties of the choice of a statistical description of internal variability. While nonparametric methods may seem to avoid making explicit assumptions, we demonstrate how even misspecified parametric statistical methods, if attuned to the important characteristics of internal variability, can result in more accurate uncertainty statements about trends.
Data availability
The NASA GISS Land–Ocean Temperature index is updated periodically; the data we analyze were accessed on the date 2016-02-03. The current version is available at http://data. giss.nasa.gov/gistemp/. The HADCRUT4 data, used in Sect. 4.5, is available at http://www.metoffice.gov.uk/hadobs/hadcrut4/data/ current/download.html.
Historical radiative forcings until 2011 are available in IPCC (2013) Table AII.1.2. Forcings corresponding to the RCP 8.5 scenario can be found at http://tntcat.iiasa.ac.at/RcpDb. NOAA CO2 concentrations are available at ftp://aftp.cmdl.noaa.gov/products/ trends/co2/co2_annmean_gl.txt.
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Additional details
Identifiers
- DOI
- 10.5194/ascmo-3-33-2017
- Other
- oai:uchicago.tind.io:13724
Funding
- National Science Foundation
- 1106862
- National Science Foundation
- 1106974
- National Science Foundation
- 1107046
- National Science Foundation
- SES-0951576