An efficient climate forecasting method using an intermediate complexity Earth system model and the ensemble Kalman Filter
An efficient climate forecasting method using an intermediate complexity Earth system model and the ensemble Kalman Filter
We present the implementation and results of a model tuning and ensemble forecasting experiment using an ensemble Kalman filter for the simultaneous estimation of 12 parameters in a low resolution coupled atmosphere-ocean Earth System Model by tuning it to realistic data sets consisting of Levitus ocean temperature/salinity climatology, and NCEP/NCAR atmospheric temperature/humidity reanalysis data. The resulting ensemble of tuned model states is validated by comparing various diagnostics, such as mass and heat transports, to observational estimates and other model results. We show that this ensemble has a very reasonable climatology, with the 3-D ocean in particular having comparable realism to much more expensive coupled numerical models, at least in respect of these averaged indicators. A simple global warming experiment is performed to investigate the response and predictability of the climate to a change in radiative forcing, due to 100 years of 1% per annum atmospheric CO2 increase. The equilibrium surface air temperature rise for this CO2 increase is 4.2±0.1°C, which is approached on a time scale of 1,000 years. The simple atmosphere in this version of the model is missing several factors which, if included, would substantially increase the uncertainty of this estimate. However, even within this ensemble, there is substantial regional variability due to the possibility of collapse of the North Atlantic thermohaline circulation (THC), which switches off in more than one third of the ensemble members. For these cases, the regional temperature is not only 3–5°C colder than in the warmed worlds where the THC remains switched on, but is also 1–2°C colder than the current climate. Our results, which illustrate how objective probabilistic projections of future climate change can be efficiently generated, indicate a substantial uncertainty in the long-term future of the THC, and therefore the regional climate of western Europe. However, this uncertainty is only apparent in long-term integrations, with the initial transient response being similar across the entire ensemble. Application of this ensemble Kalman filtering technique to more complete climate models would improve the objectivity of probabilistic forecasts and hence should lead to significantly increased understanding of the uncertainty of our future climate.
745-760
Hargreaves, J.C.
a6d5e120-16b7-4473-a8ac-9c0b96f27939
Annan, J.D.
dfa1bdc7-bf41-409c-960c-1d96adca782e
Edwards, N.R.
e41b719b-784e-4748-acc4-6ccbc4643c7d
Marsh, R.
702c2e7e-ac19-4019-abd9-a8614ab27717
2004
Hargreaves, J.C.
a6d5e120-16b7-4473-a8ac-9c0b96f27939
Annan, J.D.
dfa1bdc7-bf41-409c-960c-1d96adca782e
Edwards, N.R.
e41b719b-784e-4748-acc4-6ccbc4643c7d
Marsh, R.
702c2e7e-ac19-4019-abd9-a8614ab27717
Hargreaves, J.C., Annan, J.D., Edwards, N.R. and Marsh, R.
(2004)
An efficient climate forecasting method using an intermediate complexity Earth system model and the ensemble Kalman Filter.
Climate Dynamics, 23 (7-8), .
(doi:10.1007/s00382-004-0471-4).
Abstract
We present the implementation and results of a model tuning and ensemble forecasting experiment using an ensemble Kalman filter for the simultaneous estimation of 12 parameters in a low resolution coupled atmosphere-ocean Earth System Model by tuning it to realistic data sets consisting of Levitus ocean temperature/salinity climatology, and NCEP/NCAR atmospheric temperature/humidity reanalysis data. The resulting ensemble of tuned model states is validated by comparing various diagnostics, such as mass and heat transports, to observational estimates and other model results. We show that this ensemble has a very reasonable climatology, with the 3-D ocean in particular having comparable realism to much more expensive coupled numerical models, at least in respect of these averaged indicators. A simple global warming experiment is performed to investigate the response and predictability of the climate to a change in radiative forcing, due to 100 years of 1% per annum atmospheric CO2 increase. The equilibrium surface air temperature rise for this CO2 increase is 4.2±0.1°C, which is approached on a time scale of 1,000 years. The simple atmosphere in this version of the model is missing several factors which, if included, would substantially increase the uncertainty of this estimate. However, even within this ensemble, there is substantial regional variability due to the possibility of collapse of the North Atlantic thermohaline circulation (THC), which switches off in more than one third of the ensemble members. For these cases, the regional temperature is not only 3–5°C colder than in the warmed worlds where the THC remains switched on, but is also 1–2°C colder than the current climate. Our results, which illustrate how objective probabilistic projections of future climate change can be efficiently generated, indicate a substantial uncertainty in the long-term future of the THC, and therefore the regional climate of western Europe. However, this uncertainty is only apparent in long-term integrations, with the initial transient response being similar across the entire ensemble. Application of this ensemble Kalman filtering technique to more complete climate models would improve the objectivity of probabilistic forecasts and hence should lead to significantly increased understanding of the uncertainty of our future climate.
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Published date: 2004
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Local EPrints ID: 24075
URI: http://eprints.soton.ac.uk/id/eprint/24075
ISSN: 0930-7575
PURE UUID: b717f0f1-34b3-448d-85a9-72e4ca2db397
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Date deposited: 20 Mar 2006
Last modified: 15 Mar 2024 06:52
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Author:
J.C. Hargreaves
Author:
J.D. Annan
Author:
N.R. Edwards
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