Comparison and assessment of large-scale surface temperature in climate model simulations
<p>We present a data-driven approach to assess and compare the behavior of large-scale spatial averages of surface temperature in climate model simulations and in observational products. We rely on univariate and multivariate dynamic linear model (DLM) techniques to estimate both long-term and...
Main Authors: | , , |
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Format: | Article |
Language: | English |
Published: |
Copernicus Publications
2019-05-01
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Series: | Advances in Statistical Climatology, Meteorology and Oceanography |
Online Access: | https://www.adv-stat-clim-meteorol-oceanogr.net/5/67/2019/ascmo-5-67-2019.pdf |
Summary: | <p>We present a data-driven approach to assess and compare the behavior of
large-scale spatial averages of surface temperature in climate model
simulations and in observational products. We rely on univariate and
multivariate dynamic linear model (DLM) techniques to estimate both long-term
and seasonal changes in temperature. The residuals from the DLM analyses
capture the internal variability of the climate system and exhibit complex
temporal autocorrelation structure. To characterize this internal
variability, we explore the structure of these residuals using univariate and
multivariate autoregressive (AR) models. As a proof of concept that can
easily be extended to other climate models, we apply our approach to one
particular climate model (MIROC5). Our results illustrate model versus
data differences in both
long-term and seasonal changes in temperature. Despite differences in the
underlying factors contributing to variability, the different types of
simulation yield very similar spectral estimates of internal temperature
variability. In general, we find that there is no evidence that the MIROC5
model systematically underestimates the amplitude of observed surface
temperature variability on multi-decadal timescales – a finding that has
considerable relevance regarding efforts to identify anthropogenic
“fingerprints” in observational surface temperature data. Our methodology
and results present a novel approach to obtaining data-driven estimates of
climate variability for purposes of model evaluation.</p> |
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ISSN: | 2364-3579 2364-3587 |