Multiobjective tuning of GENIE Earth system models

In order to simulate at the multi-decadal time scale and beyond, climate models rely heavily on parameterisations of physical processes that occur on comparatively small time and spatial scales. A key concern in climate modelling is therefore to find appropriate values for these parameters so that a...

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Main Authors: Price, A.R., Voutchkov, I.I., Edwards, N.R., Hughes, J.K., Lunt, D.J., Lenton, T.M., Valdes, P.J., Cox, S.J.
Format: Article in Journal/Newspaper
Language:unknown
Published: 2007
Subjects:
Online Access:https://eprints.soton.ac.uk/44290/
http://www.cosis.net/abstracts/EGU2007/10551/EGU2007-J-10551.pdf
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spelling ftsouthampton:oai:eprints.soton.ac.uk:44290 2023-07-30T04:06:48+02:00 Multiobjective tuning of GENIE Earth system models Price, A.R. Voutchkov, I.I. Edwards, N.R. Hughes, J.K. Lunt, D.J. Lenton, T.M. Valdes, P.J. Cox, S.J. 2007 https://eprints.soton.ac.uk/44290/ http://www.cosis.net/abstracts/EGU2007/10551/EGU2007-J-10551.pdf unknown Price, A.R., Voutchkov, I.I., Edwards, N.R., Hughes, J.K., Lunt, D.J., Lenton, T.M., Valdes, P.J. and Cox, S.J. (2007) Multiobjective tuning of GENIE Earth system models. Geophysical Research Abstracts, 9, 10551. Article PeerReviewed 2007 ftsouthampton 2023-07-09T20:51:02Z In order to simulate at the multi-decadal time scale and beyond, climate models rely heavily on parameterisations of physical processes that occur on comparatively small time and spatial scales. A key concern in climate modelling is therefore to find appropriate values for these parameters so that a reasonable climatology is simulated. This is of particularly importance within the GENIE modelling framework where component codes, that are often developed independently, are coupled together to form new Earth system models. In order to produce stable and sensible model output it is almost always necessary to re-tune the parameters of the coupled system. However, as with many design problems, the nonlinear response of a model to its parameters and the often conflicting tuning objectives make this a difficult problem to solve. The general problem of optimising a set of model parameters in order to improve a number of possibly conflicting design objectives is typically approached in one of two ways. One can create a single objective measure of design quality by computing a weighted sum of the individual objectives and seek to find the set of variables that minimise or maximise this measure. Many sophisticated algorithms can be applied to a single objective problem but the weighting factors can be critical in the performance of the optimisation. Alternatively, multiobjective methods can be employed to seek a Pareto set of non-dominated solutions; designs that are superior when all objective measures are considered but that may be inferior when a subset of those objectives are considered. Such a solution set can inform the user of competition in the design goals and allows domain expertise to be applied to select the most appropriate parameter sets for further study. We present the results of applying a multiobjective Non-dominated Sorting Genetic Algorithm (NSGA-II) to tune two models from the GENIE framework. The genie_eb- go-gs (3D frictional geostrophic ocean model, 2D energy moisture balance model and 2D sea-ice) ... Article in Journal/Newspaper Sea ice University of Southampton: e-Prints Soton
institution Open Polar
collection University of Southampton: e-Prints Soton
op_collection_id ftsouthampton
language unknown
description In order to simulate at the multi-decadal time scale and beyond, climate models rely heavily on parameterisations of physical processes that occur on comparatively small time and spatial scales. A key concern in climate modelling is therefore to find appropriate values for these parameters so that a reasonable climatology is simulated. This is of particularly importance within the GENIE modelling framework where component codes, that are often developed independently, are coupled together to form new Earth system models. In order to produce stable and sensible model output it is almost always necessary to re-tune the parameters of the coupled system. However, as with many design problems, the nonlinear response of a model to its parameters and the often conflicting tuning objectives make this a difficult problem to solve. The general problem of optimising a set of model parameters in order to improve a number of possibly conflicting design objectives is typically approached in one of two ways. One can create a single objective measure of design quality by computing a weighted sum of the individual objectives and seek to find the set of variables that minimise or maximise this measure. Many sophisticated algorithms can be applied to a single objective problem but the weighting factors can be critical in the performance of the optimisation. Alternatively, multiobjective methods can be employed to seek a Pareto set of non-dominated solutions; designs that are superior when all objective measures are considered but that may be inferior when a subset of those objectives are considered. Such a solution set can inform the user of competition in the design goals and allows domain expertise to be applied to select the most appropriate parameter sets for further study. We present the results of applying a multiobjective Non-dominated Sorting Genetic Algorithm (NSGA-II) to tune two models from the GENIE framework. The genie_eb- go-gs (3D frictional geostrophic ocean model, 2D energy moisture balance model and 2D sea-ice) ...
format Article in Journal/Newspaper
author Price, A.R.
Voutchkov, I.I.
Edwards, N.R.
Hughes, J.K.
Lunt, D.J.
Lenton, T.M.
Valdes, P.J.
Cox, S.J.
spellingShingle Price, A.R.
Voutchkov, I.I.
Edwards, N.R.
Hughes, J.K.
Lunt, D.J.
Lenton, T.M.
Valdes, P.J.
Cox, S.J.
Multiobjective tuning of GENIE Earth system models
author_facet Price, A.R.
Voutchkov, I.I.
Edwards, N.R.
Hughes, J.K.
Lunt, D.J.
Lenton, T.M.
Valdes, P.J.
Cox, S.J.
author_sort Price, A.R.
title Multiobjective tuning of GENIE Earth system models
title_short Multiobjective tuning of GENIE Earth system models
title_full Multiobjective tuning of GENIE Earth system models
title_fullStr Multiobjective tuning of GENIE Earth system models
title_full_unstemmed Multiobjective tuning of GENIE Earth system models
title_sort multiobjective tuning of genie earth system models
publishDate 2007
url https://eprints.soton.ac.uk/44290/
http://www.cosis.net/abstracts/EGU2007/10551/EGU2007-J-10551.pdf
genre Sea ice
genre_facet Sea ice
op_relation Price, A.R., Voutchkov, I.I., Edwards, N.R., Hughes, J.K., Lunt, D.J., Lenton, T.M., Valdes, P.J. and Cox, S.J. (2007) Multiobjective tuning of GENIE Earth system models. Geophysical Research Abstracts, 9, 10551.
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