2008
DOI: 10.1175/2008jcli1869.1
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Constraints on Model Response to Greenhouse Gas Forcing and the Role of Subgrid-Scale Processes

Abstract: A climate model emulator is developed using neural network techniques and trained with the data from the multithousand-member climateprediction.net perturbed physics GCM ensemble. The method recreates nonlinear interactions between model parameters, allowing a simulation of a much larger ensemble that explores model parameter space more fully.The emulated ensemble is used to search for models closest to observations over a wide range of equilibrium response to greenhouse gas forcing. The relative discrepancies… Show more

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Cited by 62 publications
(67 citation statements)
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“…to climate and ocean models (Sanderson et al, 2008;Goldstein and Rougier, 2006). The mathematics behind the Gaussian process emulator is explained in Appendix A1 and in Sect.…”
Section: Choose Model Parametersmentioning
confidence: 99%
See 1 more Smart Citation
“…to climate and ocean models (Sanderson et al, 2008;Goldstein and Rougier, 2006). The mathematics behind the Gaussian process emulator is explained in Appendix A1 and in Sect.…”
Section: Choose Model Parametersmentioning
confidence: 99%
“…The climateprediction.net ensemble was used in Ackerley et al (2009) to study the climate responses to changes in atmospheric aerosol, albeit with a simpler aerosol scheme than we use here. In Sanderson et al (2008) an emulator was used together with the many climateprediction.net runs to carry out sensitivity analysis. The number of ensembles produced by climateprediction.net is seldom possible in practice.…”
Section: Introductionmentioning
confidence: 99%
“…This is illustrated graphically in Sanderson et al (2008Sanderson et al ( , 2010, where nominally similar parameters were varied over nominally similar ranges in two GCMs obtaining a very broad distribution of responses in one case and a relatively narrow one in the second case.…”
Section: Overviewmentioning
confidence: 99%
“…Instead, atmospheric parameters were chosen by interpolation. A combined root mean square error (RMSE) was derived from three different observation types: surface temperatures; top of atmosphere radiative fluxes; and total precipitation (Sanderson et al 2008). For each observation, Empirical Orthogonal Functions (EOFs) were taken in the space defined by the area weighted Giorgi regions in the 'spatial' dimension and the ensemble in the 'temporal' dimension.…”
Section: (A ) Forcings In the Bbc Ccementioning
confidence: 99%
“…Each model in the ensemble is associated with three sets of errors-each set comprising the difference between the amplitude of each mode in the truncated EOF set in that model and the reanalysis projection of that mode. These numbers were then used to train a neural network (Sanderson et al 2008), where the input was the perturbed parameters for each model and the output was the set of observational errors described above. The neural network was also trained to predict the climate sensitivity.…”
Section: (A ) Forcings In the Bbc Ccementioning
confidence: 99%