Multiobjective tuning of Grid-enabled Earth System Models using a Non-dominated Sorting Genetic Algorithm (NSGA-II)
Multiobjective tuning of Grid-enabled Earth System Models using a Non-dominated Sorting Genetic Algorithm (NSGA-II)
The tuning of parameters in climate models is essential to provide reliable long-term forecasts of Earth system behaviour. In this paper we present the first application of the multiobjective non-dominated sorting genetic algorithm (NSGA-II) to the GENIE-1 Earth System Model (ESM). Twelve model parameters are tuned to improve four objective measures of fitness to observational data. Grid computing and data handling technology is harnessed to perform the concurrent simulations that comprise the generations of the genetic algorithm. Recent advances in the method exploit Response Surface Modelling to provide surrogate models of each objective. This enables more extensive and efficient searching of the design space. We assess the performance of the NSGA-II using surrogates by repeating a tuning exercise that has been performed using a proximal analytical centre plane cutting method and the Ensemble Kalman Filter on the GENIE-1 model. We find that the multiobjective algorithm locates Pareto-optimal solutions which are of comparable quality to those obtained using the single objective optimisation methods.
0769527345
117
Price, A.R.
15a6667c-60da-42e9-b6dd-4c0e56c33c52
Voutchkov, I. I.
16640210-6d07-49cc-aebd-28bf89c7ac27
Pound, G.E.
04a90e67-652b-4435-8b4b-ac70afb67ca5
Edwards, N.R.
e41b719b-784e-4748-acc4-6ccbc4643c7d
Lenton, T.M.
f2b4fe3d-ef5e-4c85-9677-bfc20c266b65
Cox, S.J.
0e62aaed-24ad-4a74-b996-f606e40e5c55
19 December 2006
Price, A.R.
15a6667c-60da-42e9-b6dd-4c0e56c33c52
Voutchkov, I. I.
16640210-6d07-49cc-aebd-28bf89c7ac27
Pound, G.E.
04a90e67-652b-4435-8b4b-ac70afb67ca5
Edwards, N.R.
e41b719b-784e-4748-acc4-6ccbc4643c7d
Lenton, T.M.
f2b4fe3d-ef5e-4c85-9677-bfc20c266b65
Cox, S.J.
0e62aaed-24ad-4a74-b996-f606e40e5c55
Price, A.R., Voutchkov, I. I., Pound, G.E., Edwards, N.R., Lenton, T.M. and Cox, S.J.
,
The GENIE Team
(2006)
Multiobjective tuning of Grid-enabled Earth System Models using a Non-dominated Sorting Genetic Algorithm (NSGA-II).
In Proceedings of the Second IEEE International Conference on e-Science and Grid Computing.
IEEE.
.
(doi:10.1109/E-SCIENCE.2006.261050).
Record type:
Conference or Workshop Item
(Paper)
Abstract
The tuning of parameters in climate models is essential to provide reliable long-term forecasts of Earth system behaviour. In this paper we present the first application of the multiobjective non-dominated sorting genetic algorithm (NSGA-II) to the GENIE-1 Earth System Model (ESM). Twelve model parameters are tuned to improve four objective measures of fitness to observational data. Grid computing and data handling technology is harnessed to perform the concurrent simulations that comprise the generations of the genetic algorithm. Recent advances in the method exploit Response Surface Modelling to provide surrogate models of each objective. This enables more extensive and efficient searching of the design space. We assess the performance of the NSGA-II using surrogates by repeating a tuning exercise that has been performed using a proximal analytical centre plane cutting method and the Ensemble Kalman Filter on the GENIE-1 model. We find that the multiobjective algorithm locates Pareto-optimal solutions which are of comparable quality to those obtained using the single objective optimisation methods.
This record has no associated files available for download.
More information
Submitted date: 10 July 2006
Published date: 19 December 2006
Venue - Dates:
Second IEEE International Conference on e-Science and Grid Computing, Amsterdam, Netherlands, 2006-12-04 - 2006-12-06
Identifiers
Local EPrints ID: 40847
URI: http://eprints.soton.ac.uk/id/eprint/40847
ISBN: 0769527345
PURE UUID: b3a56591-c777-472b-9fe7-43bb78531914
Catalogue record
Date deposited: 13 Jul 2006
Last modified: 15 Mar 2024 08:23
Export record
Altmetrics
Contributors
Author:
A.R. Price
Author:
G.E. Pound
Author:
N.R. Edwards
Author:
T.M. Lenton
Corporate Author: The GENIE Team
Download statistics
Downloads from ePrints over the past year. Other digital versions may also be available to download e.g. from the publisher's website.
View more statistics