1 |
dimitri |
1.1 |
\section{Introduction} |
2 |
|
|
\label{sec:intro} |
3 |
|
|
|
4 |
dimitri |
1.7 |
In recent years, ocean state estimation has matured to the extent that |
5 |
|
|
estimates of the time-evolving ocean circulation, constrained by a multitude |
6 |
|
|
of in-situ and remotely sensed global observations, are now routinely |
7 |
|
|
available and being applied to myriad scientific problems \citep[and |
8 |
|
|
references therein]{wun07}. As formulated by the consortium for Estimating |
9 |
|
|
the Circulation and Climate of the Ocean (ECCO), least-squares methods, i.e., |
10 |
|
|
filter/smoother \citep{fuk02}, Green's functions \citep{men05}, and adjoint |
11 |
|
|
\citep{sta02a}, are used to fit the Massachusetts Institute of Technology |
12 |
|
|
general circulation model |
13 |
|
|
\citep[MITgcm;][]{marshall97:_finit_volum_incom_navier_stokes} to the |
14 |
|
|
available data. Much has been achieved but the existing ECCO estimates lack |
15 |
|
|
interactive sea ice. This limits the ability to utilize satellite data |
16 |
|
|
constraints over sea-ice covered regions. This also limits the usefulness of |
17 |
|
|
the derived ocean state estimates for describing and studying polar-subpolar |
18 |
|
|
interactions. This paper is a first step towards adding sea-ice capability to |
19 |
|
|
the ECCO estimates. That is, we describe a dynamic and thermodynamic sea ice |
20 |
|
|
model that has been coupled to the MITgcm and that has been modified to permit |
21 |
|
|
efficient and accurate forward integration and automatic differentiation. |
22 |
|
|
|
23 |
|
|
Although the ECCO2 optimization problem can be expressed succinctly in |
24 |
|
|
algebra, its numerical implementation for planetary scale problems is |
25 |
|
|
enormously demanding. First, multiple forward integrations are required to |
26 |
|
|
derive approximate filter/smoothers and to compute model Green's functions. |
27 |
|
|
Second, the derivation of the adjoint model, even with the availability of |
28 |
|
|
automatic differentiation tools, is a challenging technical task, which |
29 |
|
|
requires reformulation of some of the model physics to insure |
30 |
|
|
differentiability and the addition of numerous adjoint compiler directives to |
31 |
|
|
improve efficiency \citep{marotzke99}. The MITgcm adjoint typically requires |
32 |
|
|
5--10 times more computations and 10--100 times more storage than the forward |
33 |
|
|
model. Third, every evaluation of the cost function entails a full forward |
34 |
|
|
integration of the assimilation model and multiple forwards (and adjoint for |
35 |
|
|
the adjoint method) iterations are required to achieve satisfactorily |
36 |
|
|
converged solutions. Finally, evaluating the cost function also requires |
37 |
|
|
estimating the error statistics associated with unresolved physics in the |
38 |
|
|
model and with incompatibilities between observed quantities and numerical |
39 |
|
|
model variables. These statistics are obtained from simulations at even |
40 |
|
|
higher resolutions than the assimilation model. For all the above reasons, it |
41 |
|
|
was decided early on that the MITgcm sea ice model would be tightly coupled |
42 |
|
|
with the ocean component as opposed to loosely coupled via a flux coupler. |
43 |
|
|
|
44 |
|
|
|
45 |
dimitri |
1.1 |
|
46 |
|
|
Traditionally, probably for historical reasons and the ease of |
47 |
|
|
treating the Coriolis term, most standard sea-ice models are |
48 |
|
|
discretized on Arakawa-B-grids \citep[e.g.,][]{hibler79, harder99, |
49 |
mlosch |
1.5 |
kreyscher00, zhang98, hunke97}, although there are sea ice models |
50 |
|
|
diretized on a C-grid \citep[e.g.,][]{ip91, tremblay97, |
51 |
|
|
lemieux09}. % |
52 |
|
|
\ml{[there is also MI-IM, but I only found this as a reference: |
53 |
|
|
\url{http://retro.met.no/english/r_and_d_activities/method/num_mod/MI-IM-Documentation.pdf}]} |
54 |
|
|
From the perspective of coupling a sea ice-model to a C-grid ocean |
55 |
|
|
model, the exchange of fluxes of heat and fresh-water pose no |
56 |
|
|
difficulty for a B-grid sea-ice model \citep[e.g.,][]{timmermann02a}. |
57 |
|
|
However, surface stress is defined at velocities points and thus needs |
58 |
|
|
to be interpolated between a B-grid sea-ice model and a C-grid ocean |
59 |
|
|
model. Smoothing implicitly associated with this interpolation may |
60 |
|
|
mask grid scale noise and may contribute to stabilizing the solution. |
61 |
|
|
On the other hand, by smoothing the stress signals are damped which |
62 |
|
|
could lead to reduced variability of the system. By choosing a C-grid |
63 |
|
|
for the sea-ice model, we circumvent this difficulty altogether and |
64 |
|
|
render the stress coupling as consistent as the buoyancy coupling. |
65 |
dimitri |
1.1 |
|
66 |
|
|
A further advantage of the C-grid formulation is apparent in narrow |
67 |
|
|
straits. In the limit of only one grid cell between coasts there is no |
68 |
|
|
flux allowed for a B-grid (with no-slip lateral boundary counditions), |
69 |
mlosch |
1.5 |
and models have used topographies with artificially widened straits to |
70 |
dimitri |
1.1 |
avoid this problem \citep{holloway07}. The C-grid formulation on the |
71 |
|
|
other hand allows a flux of sea-ice through narrow passages if |
72 |
|
|
free-slip along the boundaries is allowed. We demonstrate this effect |
73 |
|
|
in the Candian archipelago. |
74 |
|
|
|
75 |
|
|
Talk about problems that make the sea-ice-ocean code very sensitive and |
76 |
|
|
changes in the code that reduce these sensitivities. |
77 |
|
|
|
78 |
mlosch |
1.5 |
This paper describes the MITgcm sea ice model; it presents example |
79 |
|
|
Arctic and Antarctic results from a realistic, eddy-permitting, global |
80 |
|
|
ocean and sea-ice configuration; it compares B-grid and C-grid dynamic |
81 |
|
|
solvers and investigates further aspects of sea ice modeling in a |
82 |
|
|
regional Arctic configuration; and it presents example results from |
83 |
|
|
coupled ocean and sea-ice adjoint-model integrations. |
84 |
mlosch |
1.3 |
|
85 |
|
|
%%% Local Variables: |
86 |
|
|
%%% mode: latex |
87 |
|
|
%%% TeX-master: "ceaice" |
88 |
|
|
%%% End: |