Internal variability of a 3-D ocean model
The Defence Centre for Operational Oceanography runs operational forecasts for the Danish waters. The core setup is a 60-layer baroclinic circulation model based on the General Estuarine Transport Model code. At intervals, the model setup is tuned to improve ‘model skill’ and overall performance. It...
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2016-11-01
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doaj-925ab990df3e4e328214e6bc196999d02020-11-25T01:38:54ZengTaylor & Francis GroupTellus: Series A, Dynamic Meteorology and Oceanography1600-08702016-11-0168011710.3402/tellusa.v68.3041730417Internal variability of a 3-D ocean modelBjarne Büchmann0Johan Söderkvist1 Defence Centre for Operational Oceanography, The Danish Defence Acquisition and Logistics Organization, Ballerup, Copenhagen, Denmark Defence Centre for Operational Oceanography, The Danish Defence Acquisition and Logistics Organization, Ballerup, Copenhagen, DenmarkThe Defence Centre for Operational Oceanography runs operational forecasts for the Danish waters. The core setup is a 60-layer baroclinic circulation model based on the General Estuarine Transport Model code. At intervals, the model setup is tuned to improve ‘model skill’ and overall performance. It has been an area of concern that the uncertainty inherent to the stochastical/chaotic nature of the model is unknown. Thus, it is difficult to state with certainty that a particular setup is improved, even if the computed model skill increases. This issue also extends to the cases, where the model is tuned during an iterative process, where model results are fed back to improve model parameters, such as bathymetry.An ensemble of identical model setups with slightly perturbed initial conditions is examined. It is found that the initial perturbation causes the models to deviate from each other exponentially fast, causing differences of several PSUs and several kelvin within a few days of simulation. The ensemble is run for a full year, and the long-term variability of salinity and temperature is found for different regions within the modelled area. Further, the developing time scale is estimated for each region, and great regional differences are found – in both variability and time scale. It is observed that periods with very high ensemble variability are typically short-term and spatially limited events.A particular event is examined in detail to shed light on how the ensemble ‘behaves’ in periods with large internal model variability. It is found that the ensemble does not seem to follow any particular stochastic distribution: both the ensemble variability (standard deviation or range) as well as the ensemble distribution within that range seem to vary with time and place. Further, it is observed that a large spatial variability due to mesoscale features does not necessarily correlate to large ensemble variability. These findings bear impact on the way data assimilation should be addressed – especially in relation to operational forecasts.http://www.tellusa.net/index.php/tellusa/article/view/30417/49872Baroclinicensemble modellingsalinitytemperatureelevationSkagerrakBaltic Sea |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Bjarne Büchmann Johan Söderkvist |
spellingShingle |
Bjarne Büchmann Johan Söderkvist Internal variability of a 3-D ocean model Tellus: Series A, Dynamic Meteorology and Oceanography Baroclinic ensemble modelling salinity temperature elevation Skagerrak Baltic Sea |
author_facet |
Bjarne Büchmann Johan Söderkvist |
author_sort |
Bjarne Büchmann |
title |
Internal variability of a 3-D ocean model |
title_short |
Internal variability of a 3-D ocean model |
title_full |
Internal variability of a 3-D ocean model |
title_fullStr |
Internal variability of a 3-D ocean model |
title_full_unstemmed |
Internal variability of a 3-D ocean model |
title_sort |
internal variability of a 3-d ocean model |
publisher |
Taylor & Francis Group |
series |
Tellus: Series A, Dynamic Meteorology and Oceanography |
issn |
1600-0870 |
publishDate |
2016-11-01 |
description |
The Defence Centre for Operational Oceanography runs operational forecasts for the Danish waters. The core setup is a 60-layer baroclinic circulation model based on the General Estuarine Transport Model code. At intervals, the model setup is tuned to improve ‘model skill’ and overall performance. It has been an area of concern that the uncertainty inherent to the stochastical/chaotic nature of the model is unknown. Thus, it is difficult to state with certainty that a particular setup is improved, even if the computed model skill increases. This issue also extends to the cases, where the model is tuned during an iterative process, where model results are fed back to improve model parameters, such as bathymetry.An ensemble of identical model setups with slightly perturbed initial conditions is examined. It is found that the initial perturbation causes the models to deviate from each other exponentially fast, causing differences of several PSUs and several kelvin within a few days of simulation. The ensemble is run for a full year, and the long-term variability of salinity and temperature is found for different regions within the modelled area. Further, the developing time scale is estimated for each region, and great regional differences are found – in both variability and time scale. It is observed that periods with very high ensemble variability are typically short-term and spatially limited events.A particular event is examined in detail to shed light on how the ensemble ‘behaves’ in periods with large internal model variability. It is found that the ensemble does not seem to follow any particular stochastic distribution: both the ensemble variability (standard deviation or range) as well as the ensemble distribution within that range seem to vary with time and place. Further, it is observed that a large spatial variability due to mesoscale features does not necessarily correlate to large ensemble variability. These findings bear impact on the way data assimilation should be addressed – especially in relation to operational forecasts. |
topic |
Baroclinic ensemble modelling salinity temperature elevation Skagerrak Baltic Sea |
url |
http://www.tellusa.net/index.php/tellusa/article/view/30417/49872 |
work_keys_str_mv |
AT bjarnebuchmann internalvariabilityofa3doceanmodel AT johansoderkvist internalvariabilityofa3doceanmodel |
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