4.6 Article

Optimisation of an idealised primitive equation ocean model using stochastic parameterization

期刊

OCEAN MODELLING
卷 113, 期 -, 页码 187-200

出版社

ELSEVIER SCI LTD
DOI: 10.1016/j.ocemod.2016.12.010

关键词

Optimisation; Stochastic; Parameterization; Baroclinic; Temperature; Primitive equations

资金

  1. UK NERC [NE/J00586X/1]

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Using a simple parameterization, an idealised low resolution (biharmonic viscosity coefficient of 5 x 10(12) m(4)s(-1), 128 x 128 grid) primitive equation baroclinic ocean gyre model is optimised to have a much more accurate climatological mean, variance and response to forcing, in all model variables, with respect to a high resolution (biharmonic viscosity coefficient of 8 x 10(10) m(4)s(-1), 512 x 512 grid) equivalent. For example, the change in the climatological mean due to a small change in the boundary conditions is more accurate in the model with parameterization. Both the low resolution and high resolution models are strongly chaotic. We also find that long timescales in the model temperature auto-correlation at depth are controlled by the vertical temperature diffusion parameter and time mean vertical advection and are caused by short timescale random forcing near the surface. This paper extends earlier work that considered a shallow water barotropic gyre. Here the analysis is extended to a more turbulent multi-layer primitive equation model that includes temperature as a prognostic variable. The parameterization consists of a constant forcing, applied to the velocity and temperature equations at each grid point, which is optimised to obtain a model with an accurate climatological mean, and a linear stochastic forcing, that is optimised to also obtain an accurate climatological variance and 5 day lag auto-covariance. A linear relaxation (nudging) is not used. Conservation of energy and momentum is discussed in an appendix. (C) 2017 Elsevier Ltd. All rights reserved.

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