Data di Pubblicazione:
2017
Abstract:
Attribution studies on recent global warming by Global Climate Model (GCM) ensembles converge
in showing the fundamental role of anthropogenic forcings as primary drivers of temperature in the
last half century. However, despite their differences, all these models pertain to the same dynamical
approach and come from a common ancestor, so that their very similar results in attribution studies
are not surprising and cannot be considered as a clear proof of robustness of the results themselves.
Thus, here we adopt a completely different, non-dynamical, data-driven and fully nonlinear approach
to the attribution problem. By means of neural network (NN) modelling, and analysing the last 160
years, we perform attribution experiments and find that the strong increase in global temperature of
the last half century may be attributed basically to anthropogenic forcings (with details on their specific
contributions), while the Sun considerably influences the period 1910-1975. Furthermore, the role
of sulphate aerosols and Atlantic Multidecadal Oscillation for better catching interannual to decadal
temperature variability is clarified. Sensitivity analyses to forcing changes are also performed. The NN
outcomes both corroborate our previous knowledge from GCMs and give new insight into the relative
contributions of external forcings and internal variability to climate.
Tipologia CRIS:
01.01 Articolo in rivista
Keywords:
climate change; global warming; attribution; neural network modelling
Elenco autori:
Pasini, Antonello
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