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Tue Feb 26 19:27:26 2008 UTC (17 years, 4 months ago) by dimitri
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split sections into separate files:
ceaice_abstract.tex
ceaice_intro.tex
ceaice_model.tex
ceaice_forward.tex
ceaice_adjoint.tex
ceaice_concl.tex
(because cnh remarked that our authorship system was not sufficiently fancy)

1 dimitri 1.1 \section{Introduction}
2     \label{sec:intro}
3    
4     The availability of an adjoint model as a powerful research tool
5     complementary to an ocean model was a major design requirement early
6     on in the development of the MIT general circulation model (MITgcm)
7     [Marshall et al. 1997a, Marotzke et al. 1999, Adcroft et al. 2002]. It
8     was recognized that the adjoint model permitted computing the
9     gradients of various scalar-valued model diagnostics, norms or,
10     generally, objective functions with respect to external or independent
11     parameters very efficiently. The information associtated with these
12     gradients is useful in at least two major contexts. First, for state
13     estimation problems, the objective function is the sum of squared
14     differences between observations and model results weighted by the
15     inverse error covariances. The gradient of such an objective function
16     can be used to reduce this measure of model-data misfit to find the
17     optimal model solution in a least-squares sense. Second, the
18     objective function can be a key oceanographic quantity such as
19     meridional heat or volume transport, ocean heat content or mean
20     surface temperature index. In this case the gradient provides a
21     complete set of sensitivities of this quantity to all independent
22     variables simultaneously. These sensitivities can be used to address
23     the cause of, say, changing net transports accurately.
24    
25     References to existing sea-ice adjoint models, explaining that they are either
26     for simplified configurations, for ice-only studies, or for short-duration
27     studies to motivate the present work.
28    
29     Traditionally, probably for historical reasons and the ease of
30     treating the Coriolis term, most standard sea-ice models are
31     discretized on Arakawa-B-grids \citep[e.g.,][]{hibler79, harder99,
32     kreyscher00, zhang98, hunke97}. From the perspective of coupling a
33     sea ice-model to a C-grid ocean model, the exchange of fluxes of heat
34     and fresh-water pose no difficulty for a B-grid sea-ice model
35     \citep[e.g.,][]{timmermann02a}. However, surface stress is defined at
36     velocities points and thus needs to be interpolated between a B-grid
37     sea-ice model and a C-grid ocean model. Smoothing implicitly
38     associated with this interpolation may mask grid scale noise and may
39     contribute to stabilizing the solution. On the other hand, by
40     smoothing the stress signals are damped which could lead to reduced
41     variability of the system. By choosing a C-grid for the sea-ice model,
42     we circumvent this difficulty altogether and render the stress
43     coupling as consistent as the buoyancy coupling.
44    
45     A further advantage of the C-grid formulation is apparent in narrow
46     straits. In the limit of only one grid cell between coasts there is no
47     flux allowed for a B-grid (with no-slip lateral boundary counditions),
48     and models have used topographies artificially widened straits to
49     avoid this problem \citep{holloway07}. The C-grid formulation on the
50     other hand allows a flux of sea-ice through narrow passages if
51     free-slip along the boundaries is allowed. We demonstrate this effect
52     in the Candian archipelago.
53    
54     Talk about problems that make the sea-ice-ocean code very sensitive and
55     changes in the code that reduce these sensitivities.
56    
57     This paper describes the MITgcm sea ice
58     model; it presents example Arctic and Antarctic results from a realistic,
59     eddy-permitting, global ocean and sea-ice configuration; it compares B-grid
60     and C-grid dynamic solvers in a regional Arctic configuration; and it presents
61     example results from coupled ocean and sea-ice adjoint-model integrations.

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