TY - JOUR
T1 - The Value of Initial Condition Large Ensembles to Robust Adaptation Decision-Making
AU - Mankin, Justin S.
AU - Lehner, Flavio
AU - Coats, Sloan
AU - McKinnon, Karen A.
N1 - Publisher Copyright:
©2020. The Authors. Earth's Future published by Wiley Periodicals LLC on behalf of American Geophysical Union
PY - 2020/10/1
Y1 - 2020/10/1
N2 - The origins of uncertainty in climate projections have major consequences for the scientific and policy decisions made in response to climate change. Internal climate variability, for example, is an inherent uncertainty in the climate system that is undersampled by the multimodel ensembles used in most climate impacts research. Because of this, decision makers are left with the question of whether the range of climate projections across models is due to structural model choices, thus requiring more scientific investment to constrain, or instead is a set of equally plausible outcomes consistent with the same warming world. Similarly, many questions faced by scientists require a clear separation of model uncertainty and that arising from internal variability. With this as motivation and the renewed attention to large ensembles given planning for Phase 7 of the Coupled Model Intercomparison Project (CMIP7), we illustrate the scientific and policy value of the attribution and quantification of uncertainty from initial condition large ensembles, particularly when analyzed in conjunction with multimodel ensembles. We focus on how large ensembles can support regional-scale robust adaptation decision-making in ways multimodel ensembles alone cannot. We also acknowledge several recently identified problems associated with large ensembles, namely, that they are (1) resource intensive, (2) redundant, and (3) biased. Despite these challenges, we show, using examples from hydroclimate, how large ensembles provide unique information for the scientific and policy communities and can be analyzed appropriately for regional-scale climate impacts research to help inform risk management in a warming world.
AB - The origins of uncertainty in climate projections have major consequences for the scientific and policy decisions made in response to climate change. Internal climate variability, for example, is an inherent uncertainty in the climate system that is undersampled by the multimodel ensembles used in most climate impacts research. Because of this, decision makers are left with the question of whether the range of climate projections across models is due to structural model choices, thus requiring more scientific investment to constrain, or instead is a set of equally plausible outcomes consistent with the same warming world. Similarly, many questions faced by scientists require a clear separation of model uncertainty and that arising from internal variability. With this as motivation and the renewed attention to large ensembles given planning for Phase 7 of the Coupled Model Intercomparison Project (CMIP7), we illustrate the scientific and policy value of the attribution and quantification of uncertainty from initial condition large ensembles, particularly when analyzed in conjunction with multimodel ensembles. We focus on how large ensembles can support regional-scale robust adaptation decision-making in ways multimodel ensembles alone cannot. We also acknowledge several recently identified problems associated with large ensembles, namely, that they are (1) resource intensive, (2) redundant, and (3) biased. Despite these challenges, we show, using examples from hydroclimate, how large ensembles provide unique information for the scientific and policy communities and can be analyzed appropriately for regional-scale climate impacts research to help inform risk management in a warming world.
KW - climate adaptation
KW - initial conditions
KW - internal variability
KW - large ensembles
KW - robust decision-making
UR - https://www.scopus.com/pages/publications/85093978925
U2 - 10.1029/2020EF001610
DO - 10.1029/2020EF001610
M3 - Article
AN - SCOPUS:85093978925
SN - 2328-4277
VL - 8
JO - Earth's Future
JF - Earth's Future
IS - 10
M1 - e2012EF001610
ER -