ATTRICI v1.1 – counterfactual climate for impact attribution
<p>Attribution in its general definition aims to quantify drivers of change in a system. According to IPCC Working Group II (WGII) a change in a natural, human or managed system is attributed to climate change by quantifying the difference between the observed state of the system and a counter...
Main Authors: | , , , |
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Format: | Article |
Language: | English |
Published: |
Copernicus Publications
2021-08-01
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Series: | Geoscientific Model Development |
Online Access: | https://gmd.copernicus.org/articles/14/5269/2021/gmd-14-5269-2021.pdf |
Summary: | <p>Attribution in its general definition aims to quantify drivers of change in
a system. According to IPCC Working Group II (WGII) a change in a natural, human or managed
system is attributed to climate change by quantifying the difference between
the observed state of the system and a counterfactual baseline that
characterizes the system's behavior in the absence of climate change, where
“climate change refers to any long-term trend in climate, irrespective of
its cause” (IPCC, 2014). Impact attribution following this definition remains a challenge
because the counterfactual baseline, which characterizes the system
behavior in the hypothetical absence of climate change, cannot be observed.
Process-based and empirical impact models can fill this gap as they allow us to
simulate the counterfactual climate impact baseline. In those simulations,
the models are forced by observed direct (human) drivers such as land use
changes, changes in water or agricultural management but a counterfactual
climate without long-term changes. We here present ATTRICI (ATTRIbuting
Climate Impacts), an approach to construct the required counterfactual
stationary climate data from observational (factual) climate data. Our
method identifies the long-term shifts in the considered daily climate
variables that are correlated to global mean temperature change assuming a
smooth annual cycle of the associated scaling coefficients for each day of
the year. The produced counterfactual climate datasets are used as forcing
data within the impact attribution setup of the Inter-Sectoral Impact Model
Intercomparison Project (ISIMIP3a). Our method preserves the internal
variability of the observed data in the sense that factual and
counterfactual data for a given day have the same rank in their respective
statistical distributions. The associated impact model simulations allow for
quantifying the contribution of climate change to observed long-term changes
in impact indicators and for quantifying the contribution of the observed
trend in climate to the magnitude of individual impact events. Attribution
of climate impacts to anthropogenic forcing would need an additional step
separating anthropogenic climate forcing from other sources of climate
trends, which is not covered by our method.</p> |
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ISSN: | 1991-959X 1991-9603 |