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A joint role for forced and internally-driven variability in the decadal modulation of global warming.


ABSTRACT: Despite the observed monotonic increase in greenhouse-gas concentrations, global mean temperature displays important decadal fluctuations typically attributed to both external forcing and internal variability. Here, we provide a robust quantification of the relative contributions of anthropogenic, natural, and internally-driven decadal variability of global mean sea surface temperature (GMSST) by using a unique dataset consisting of 30-member large initial-condition ensembles with five Earth System Models (ESM-LE). We present evidence that a large fraction (~29-53%) of the simulated decadal-scale variance in individual timeseries of GMSST over 1950-2010 is externally forced and largely linked to the representation of volcanic aerosols. Comparison with the future (2010-2070) period suggests that external forcing provides a source of additional decadal-scale variability in the historical period. Given the unpredictable nature of future volcanic aerosol forcing, it is suggested that a large portion of decadal GMSST variability might not be predictable.

SUBMITTER: Liguori G 

PROVIDER: S-EPMC7395113 | biostudies-literature | 2020 Jul

REPOSITORIES: biostudies-literature

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A joint role for forced and internally-driven variability in the decadal modulation of global warming.

Liguori Giovanni G   McGregor Shayne S   Arblaster Julie M JM   Singh Martin S MS   Meehl Gerald A GA  

Nature communications 20200731 1


Despite the observed monotonic increase in greenhouse-gas concentrations, global mean temperature displays important decadal fluctuations typically attributed to both external forcing and internal variability. Here, we provide a robust quantification of the relative contributions of anthropogenic, natural, and internally-driven decadal variability of global mean sea surface temperature (GMSST) by using a unique dataset consisting of 30-member large initial-condition ensembles with five Earth Sys  ...[more]

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