共 2 条
History matching for exploring and reducing climate model parameter space using observations and a large perturbed physics ensemble
被引:0
作者:
Daniel Williamson
Michael Goldstein
Lesley Allison
Adam Blaker
Peter Challenor
Laura Jackson
Kuniko Yamazaki
机构:
[1] Durham University,Department of Mathematical Sciences
[2] University of Reading,NCAS
[3] National Oceanography Centre,Climate, Department of Meteorology
[4] Met Office Hadley Centre,Atmosphere and Ocean Research Institute
[5] The University of Tokyo,undefined
来源:
Climate Dynamics
|
2013年
/
41卷
关键词:
Bayesian uncertainty quantification;
History matching;
Implausibility;
Observations;
NROY space;
D O I:
暂无
中图分类号:
学科分类号:
摘要:
We apply an established statistical methodology called history matching to constrain the parameter space of a coupled non-flux-adjusted climate model (the third Hadley Centre Climate Model; HadCM3) by using a 10,000-member perturbed physics ensemble and observational metrics. History matching uses emulators (fast statistical representations of climate models that include a measure of uncertainty in the prediction of climate model output) to rule out regions of the parameter space of the climate model that are inconsistent with physical observations given the relevant uncertainties. Our methods rule out about half of the parameter space of the climate model even though we only use a small number of historical observations. We explore 2 dimensional projections of the remaining space and observe a region whose shape mainly depends on parameters controlling cloud processes and one ocean mixing parameter. We find that global mean surface air temperature (SAT) is the dominant constraint of those used, and that the others provide little further constraint after matching to SAT. The Atlantic meridional overturning circulation (AMOC) has a non linear relationship with SAT and is not a good proxy for the meridional heat transport in the unconstrained parameter space, but these relationships are linear in our reduced space. We find that the transient response of the AMOC to idealised CO2 forcing at 1 and 2 % per year shows a greater average reduction in strength in the constrained parameter space than in the unconstrained space. We test extended ranges of a number of parameters of HadCM3 and discover that no part of the extended ranges can by ruled out using any of our constraints. Constraining parameter space using easy to emulate observational metrics prior to analysis of more complex processes is an important and powerful tool. It can remove complex and irrelevant behaviour in unrealistic parts of parameter space, allowing the processes in question to be more easily studied or emulated, perhaps as a precursor to the application of further relevant constraints.
引用
收藏
页码:1703 / 1729
页数:26
相关论文