Constraining climate model properties using optimal fingerprint detection methods

We present a method for constraining key properties of the climate system that are important for climate prediction (climate sensitivity and rate of heat penetration into the deep ocean) by comparing a model's response to known forcings over the twentieth century against climate observations fo...

Full description

Bibliographic Details
Main Authors: Forest, C, Allen, M, Sokolov, A, Stone, P
Format: Journal article
Language:English
Published: 2001
_version_ 1797068137719398400
author Forest, C
Allen, M
Sokolov, A
Stone, P
author_facet Forest, C
Allen, M
Sokolov, A
Stone, P
author_sort Forest, C
collection OXFORD
description We present a method for constraining key properties of the climate system that are important for climate prediction (climate sensitivity and rate of heat penetration into the deep ocean) by comparing a model's response to known forcings over the twentieth century against climate observations for that period. We use the MIT 2D climate model in conjunction with results from the Hadley Centre's coupled atmosphere-ocean general circulation model (AOGCM) to determine these constraints. The MIT 2D model, which is a zonally averaged version of a 3D GCM, can accurately reproduce the global-mean transient response of coupled AOGCMs through appropriate choices of the climate sensitivity and the effective rate of diffusion of heat anomalies into the deep ocean. Vertical patterns of zonal mean temperature change through the troposphere and lower stratosphere also compare favorably with those generated by 3-D GCMs. We compare the height-latitude pattern of temperature changes as simulated by the MIT 2D model with observed changes, using optimal finger-print detection statistics. Using a linear regression model as in Allen and Tett this approach yields an objective measure of model-observation goodness-of-fit (via the residual sum of squares weighted by differences expected due to internal variability). The MIT model permits one to systematically vary the model's climate sensitivity (by varying the strength of the cloud feedback) and rate of mixing of heat into the deep ocean and determine how the goodness-of-fit with observations depends on these factors. This provides an efficient framework for interpreting detection and attribution results in physical terms. With aerosol forcing set in the middle of the IPCC range, two sets of model parameters are rejected as being implausible when the model response is compared with observations. The first set corresponds to high climate sensitivity and slow heat uptake by the deep ocean. The second set corresponds to low sensitivities for all magnitudes of heat uptake. These results demonstrate that fingerprint patterns must be carefully chosen, if their detection is to reduce the uncertainty of physically important model parameters which affect projections of climate change.
first_indexed 2024-03-06T22:06:22Z
format Journal article
id oxford-uuid:504a9b3c-fb7e-4122-b70a-271b3451a6c1
institution University of Oxford
language English
last_indexed 2024-03-06T22:06:22Z
publishDate 2001
record_format dspace
spelling oxford-uuid:504a9b3c-fb7e-4122-b70a-271b3451a6c12022-03-26T16:12:41ZConstraining climate model properties using optimal fingerprint detection methodsJournal articlehttp://purl.org/coar/resource_type/c_dcae04bcuuid:504a9b3c-fb7e-4122-b70a-271b3451a6c1EnglishSymplectic Elements at Oxford2001Forest, CAllen, MSokolov, AStone, PWe present a method for constraining key properties of the climate system that are important for climate prediction (climate sensitivity and rate of heat penetration into the deep ocean) by comparing a model's response to known forcings over the twentieth century against climate observations for that period. We use the MIT 2D climate model in conjunction with results from the Hadley Centre's coupled atmosphere-ocean general circulation model (AOGCM) to determine these constraints. The MIT 2D model, which is a zonally averaged version of a 3D GCM, can accurately reproduce the global-mean transient response of coupled AOGCMs through appropriate choices of the climate sensitivity and the effective rate of diffusion of heat anomalies into the deep ocean. Vertical patterns of zonal mean temperature change through the troposphere and lower stratosphere also compare favorably with those generated by 3-D GCMs. We compare the height-latitude pattern of temperature changes as simulated by the MIT 2D model with observed changes, using optimal finger-print detection statistics. Using a linear regression model as in Allen and Tett this approach yields an objective measure of model-observation goodness-of-fit (via the residual sum of squares weighted by differences expected due to internal variability). The MIT model permits one to systematically vary the model's climate sensitivity (by varying the strength of the cloud feedback) and rate of mixing of heat into the deep ocean and determine how the goodness-of-fit with observations depends on these factors. This provides an efficient framework for interpreting detection and attribution results in physical terms. With aerosol forcing set in the middle of the IPCC range, two sets of model parameters are rejected as being implausible when the model response is compared with observations. The first set corresponds to high climate sensitivity and slow heat uptake by the deep ocean. The second set corresponds to low sensitivities for all magnitudes of heat uptake. These results demonstrate that fingerprint patterns must be carefully chosen, if their detection is to reduce the uncertainty of physically important model parameters which affect projections of climate change.
spellingShingle Forest, C
Allen, M
Sokolov, A
Stone, P
Constraining climate model properties using optimal fingerprint detection methods
title Constraining climate model properties using optimal fingerprint detection methods
title_full Constraining climate model properties using optimal fingerprint detection methods
title_fullStr Constraining climate model properties using optimal fingerprint detection methods
title_full_unstemmed Constraining climate model properties using optimal fingerprint detection methods
title_short Constraining climate model properties using optimal fingerprint detection methods
title_sort constraining climate model properties using optimal fingerprint detection methods
work_keys_str_mv AT forestc constrainingclimatemodelpropertiesusingoptimalfingerprintdetectionmethods
AT allenm constrainingclimatemodelpropertiesusingoptimalfingerprintdetectionmethods
AT sokolova constrainingclimatemodelpropertiesusingoptimalfingerprintdetectionmethods
AT stonep constrainingclimatemodelpropertiesusingoptimalfingerprintdetectionmethods