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Revision 1.14 - (show annotations) (download) (as text)
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1 % $Header: /u/gcmpack/MITgcm_contrib/articles/ceaice/ceaice.tex,v 1.13 2008/02/25 23:45:46 dimitri Exp $
2 % $Name: $
3 \documentclass[12pt]{article}
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5 \usepackage[]{graphicx}
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8 \usepackage[round,comma]{natbib}
9 \bibliographystyle{bib/agu04}
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11 \usepackage{amsmath,amssymb}
12 \newcommand\bmmax{10} \newcommand\hmmax{10}
13 \usepackage{bm}
14
15 % math abbreviations
16 \newcommand{\vek}[1]{\ensuremath{\mathbf{#1}}}
17 \newcommand{\mat}[1]{\ensuremath{\mathbf{#1}}}
18 \newcommand{\vtau}{\bm{{\tau}}}
19
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26
27 % cross reference scheme
28 \newcommand{\reffig}[1]{Figure~\ref{fig:#1}}
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30 \newcommand{\refapp}[1]{Appendix~\ref{app:#1}}
31 \newcommand{\refsec}[1]{Section~\ref{sec:#1}}
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33 \newcommand{\refeqs}[2]{\,(\ref{eq:#1})--(\ref{eq:#2})}
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42 % commenting scheme
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44
45 \title{A Dynamic-Thermodynamic Sea ice Model for Ocean Climate
46 Estimation on an Arakawa C-Grid}
47
48 \author{Martin Losch, Dimitris Menemenlis, Patrick Heimbach, \\
49 Jean-Michel Campin, and Chris Hill}
50 \begin{document}
51
52 \maketitle
53
54 \begin{abstract}
55 As part of ongoing efforts to obtain a best possible synthesis of most
56 available, global-scale, ocean and sea ice data, a dynamic and thermodynamic
57 sea-ice model has been coupled to the Massachusetts Institute of Technology
58 general circulation model (MITgcm). Ice mechanics follow a viscous plastic
59 rheology and the ice momentum equations are solved numerically using either
60 line successive relaxation (LSR) or elastic-viscous-plastic (EVP) dynamic
61 models. Ice thermodynamics are represented using either a zero-heat-capacity
62 formulation or a two-layer formulation that conserves enthalpy. The model
63 includes prognostic variables for snow and for sea-ice salinity. The above
64 sea ice model components were borrowed from current-generation climate models
65 but they were reformulated on an Arakawa C-grid in order to match the MITgcm
66 oceanic grid and they were modified in many ways to permit efficient and
67 accurate automatic differentiation. This paper describes the MITgcm sea ice
68 model; it presents example Arctic and Antarctic results from a realistic,
69 eddy-permitting, global ocean and sea-ice configuration; it compares B-grid
70 and C-grid dynamic solvers in a regional Arctic configuration; and it presents
71 example results from coupled ocean and sea-ice adjoint-model integrations.
72
73 \end{abstract}
74
75 \section{Introduction}
76 \label{sec:intro}
77
78 The availability of an adjoint model as a powerful research
79 tool complementary to an ocean model was a major design
80 requirement early on in the development of the MIT general
81 circulation model (MITgcm) [Marshall et al. 1997a,
82 Marotzke et al. 1999, Adcroft et al. 2002]. It was recognized
83 that the adjoint permitted very efficient computation
84 of gradients of various scalar-valued model diagnostics,
85 norms or, generally, objective functions with respect
86 to external or independent parameters. Such gradients
87 arise in at least two major contexts. If the objective function
88 is the sum of squared model vs. obervation differences
89 weighted by e.g. the inverse error covariances, the gradient
90 of the objective function can be used to optimize this measure
91 of model vs. data misfit in a least-squares sense. One
92 is then solving a problem of statistical state estimation.
93 If the objective function is a key oceanographic quantity
94 such as meridional heat or volume transport, ocean heat
95 content or mean surface temperature index, the gradient
96 provides a complete set of sensitivities of this quantity
97 with respect to all independent variables simultaneously.
98
99 References to existing sea-ice adjoint models, explaining that they are either
100 for simplified configurations, for ice-only studies, or for short-duration
101 studies to motivate the present work.
102
103 Traditionally, probably for historical reasons and the ease of
104 treating the Coriolis term, most standard sea-ice models are
105 discretized on Arakawa-B-grids \citep[e.g.,][]{hibler79, harder99,
106 kreyscher00, zhang98, hunke97}. From the perspective of coupling a
107 sea ice-model to a C-grid ocean model, the exchange of fluxes of heat
108 and fresh-water pose no difficulty for a B-grid sea-ice model
109 \citep[e.g.,][]{timmermann02a}. However, surface stress is defined at
110 velocities points and thus needs to be interpolated between a B-grid
111 sea-ice model and a C-grid ocean model. While the smoothing implicitly
112 associated with this interpolation may mask grid scale noise, it may
113 in two-way coupling lead to a computational mode as will be shown. By
114 choosing a C-grid for the sea-ice model, we circumvent this difficulty
115 altogether and render the stress coupling as consistent as the
116 buoyancy coupling.
117
118 A further advantage of the C-grid formulation is apparent in narrow
119 straits. In the limit of only one grid cell between coasts there is no
120 flux allowed for a B-grid (with no-slip lateral boundary counditions),
121 whereas the C-grid formulation allows a flux of sea-ice through this
122 passage for all types of lateral boundary conditions. We
123 demonstrate this effect in the Candian archipelago.
124
125 Talk about problems that make the sea-ice-ocean code very sensitive and
126 changes in the code that reduce these sensitivities.
127
128 This paper describes the MITgcm sea ice
129 model; it presents example Arctic and Antarctic results from a realistic,
130 eddy-permitting, global ocean and sea-ice configuration; it compares B-grid
131 and C-grid dynamic solvers in a regional Arctic configuration; and it presents
132 example results from coupled ocean and sea-ice adjoint-model integrations.
133
134 \section{Model}
135 \label{sec:model}
136
137 \subsection{Dynamics}
138 \label{sec:dynamics}
139
140 The momentum equation of the sea-ice model is
141 \begin{equation}
142 \label{eq:momseaice}
143 m \frac{D\vek{u}}{Dt} = -mf\vek{k}\times\vek{u} + \vtau_{air} +
144 \vtau_{ocean} - mg \nabla{\phi(0)} + \vek{F},
145 \end{equation}
146 where $m=m_{i}+m_{s}$ is the ice and snow mass per unit area;
147 $\vek{u}=u\vek{i}+v\vek{j}$ is the ice velocity vector;
148 $\vek{i}$, $\vek{j}$, and $\vek{k}$ are unit vectors in the $x$, $y$, and $z$
149 directions, respectively;
150 $f$ is the Coriolis parameter;
151 $\vtau_{air}$ and $\vtau_{ocean}$ are the wind-ice and ocean-ice stresses,
152 respectively;
153 $g$ is the gravity accelation;
154 $\nabla\phi(0)$ is the gradient (or tilt) of the sea surface height;
155 $\phi(0)$ is the sea surface height potential in response to ocean dynamics
156 and to atmospheric pressure loading;
157 and $\vek{F}=\nabla\cdot\sigma$ is the divergence of the internal ice stress
158 tensor $\sigma_{ij}$.
159 When using the rescaled vertical coordinate system, z$^\ast$, of
160 \citet{cam08}, $\phi(0)$ also includes a term due to snow and ice loading, $mg$.
161 Advection of sea-ice momentum is neglected. The wind and ice-ocean stress
162 terms are given by
163 \begin{align*}
164 \vtau_{air} = & \rho_{air} C_{air} |\vek{U}_{air} -\vek{u}|
165 R_{air} (\vek{U}_{air} -\vek{u}), \\
166 \vtau_{ocean} = & \rho_{ocean}C_{ocean} |\vek{U}_{ocean}-\vek{u}|
167 R_{ocean}(\vek{U}_{ocean}-\vek{u}), \\
168 \end{align*}
169 where $\vek{U}_{air/ocean}$ are the surface winds of the atmosphere
170 and surface currents of the ocean, respectively; $C_{air/ocean}$ are
171 air and ocean drag coefficients; $\rho_{air/ocean}$ are reference
172 densities; and $R_{air/ocean}$ are rotation matrices that act on the
173 wind/current vectors.
174
175 For an isotropic system this stress tensor can be related to the ice
176 strain rate and strength by a nonlinear viscous-plastic (VP)
177 constitutive law \citep{hibler79, zhang98}:
178 \begin{equation}
179 \label{eq:vpequation}
180 \sigma_{ij}=2\eta(\dot{\epsilon}_{ij},P)\dot{\epsilon}_{ij}
181 + \left[\zeta(\dot{\epsilon}_{ij},P) -
182 \eta(\dot{\epsilon}_{ij},P)\right]\dot{\epsilon}_{kk}\delta_{ij}
183 - \frac{P}{2}\delta_{ij}.
184 \end{equation}
185 The ice strain rate is given by
186 \begin{equation*}
187 \dot{\epsilon}_{ij} = \frac{1}{2}\left(
188 \frac{\partial{u_{i}}}{\partial{x_{j}}} +
189 \frac{\partial{u_{j}}}{\partial{x_{i}}}\right).
190 \end{equation*}
191 The maximum ice pressure $P_{\max}$, a measure of ice strength, depends on
192 both thickness $h$ and compactness (concentration) $c$:
193 \begin{equation}
194 P_{\max} = P^{*}c\,h\,e^{[C^{*}\cdot(1-c)]},
195 \label{eq:icestrength}
196 \end{equation}
197 with the constants $P^{*}$ and $C^{*}$. The nonlinear bulk and shear
198 viscosities $\eta$ and $\zeta$ are functions of ice strain rate
199 invariants and ice strength such that the principal components of the
200 stress lie on an elliptical yield curve with the ratio of major to
201 minor axis $e$ equal to $2$; they are given by:
202 \begin{align*}
203 \zeta =& \min\left(\frac{P_{\max}}{2\max(\Delta,\Delta_{\min})},
204 \zeta_{\max}\right) \\
205 \eta =& \frac{\zeta}{e^2} \\
206 \intertext{with the abbreviation}
207 \Delta = & \left[
208 \left(\dot{\epsilon}_{11}^2+\dot{\epsilon}_{22}^2\right)
209 (1+e^{-2}) + 4e^{-2}\dot{\epsilon}_{12}^2 +
210 2\dot{\epsilon}_{11}\dot{\epsilon}_{22} (1-e^{-2})
211 \right]^{-\frac{1}{2}}
212 \end{align*}
213 The bulk viscosities are bounded above by imposing both a minimum
214 $\Delta_{\min}=10^{-11}\text{\,s}^{-1}$ (for numerical reasons) and a
215 maximum $\zeta_{\max} = P_{\max}/\Delta^*$, where
216 $\Delta^*=(5\times10^{12}/2\times10^4)\text{\,s}^{-1}$. For stress
217 tensor computation the replacement pressure $P = 2\,\Delta\zeta$
218 \citep{hibler95} is used so that the stress state always lies on the
219 elliptic yield curve by definition.
220
221 In the so-called truncated ellipse method the shear viscosity $\eta$
222 is capped to suppress any tensile stress \citep{hibler97, geiger98}:
223 \begin{equation}
224 \label{eq:etatem}
225 \eta = \min(\frac{\zeta}{e^2}
226 \frac{\frac{P}{2}-\zeta(\dot{\epsilon}_{11}+\dot{\epsilon}_{22})}
227 {\sqrt{(\dot{\epsilon}_{11}+\dot{\epsilon}_{22})^2
228 +4\dot{\epsilon}_{12}^2}}
229 \end{equation}
230
231 In the current implementation, the VP-model is integrated with the
232 semi-implicit line successive over relaxation (LSOR)-solver of
233 \citet{zhang98}, which allows for long time steps that, in our case,
234 is limited by the explicit treatment of the Coriolis term. The
235 explicit treatment of the Coriolis term does not represent a severe
236 limitation because it restricts the time step to approximately the
237 same length as in the ocean model where the Coriolis term is also
238 treated explicitly.
239
240 \citet{hunke97}'s introduced an elastic contribution to the strain
241 rate elastic-viscous-plastic in order to regularize
242 Eq.\refeq{vpequation} in such a way that the resulting
243 elastic-viscous-plastic (EVP) and VP models are identical at steady
244 state,
245 \begin{equation}
246 \label{eq:evpequation}
247 \frac{1}{E}\frac{\partial\sigma_{ij}}{\partial{t}} +
248 \frac{1}{2\eta}\sigma_{ij}
249 + \frac{\eta - \zeta}{4\zeta\eta}\sigma_{kk}\delta_{ij}
250 + \frac{P}{4\zeta}\delta_{ij}
251 = \dot{\epsilon}_{ij}.
252 \end{equation}
253 %In the EVP model, equations for the components of the stress tensor
254 %$\sigma_{ij}$ are solved explicitly. Both model formulations will be
255 %used and compared the present sea-ice model study.
256 The EVP-model uses an explicit time stepping scheme with a short
257 timestep. According to the recommendation of \citet{hunke97}, the
258 EVP-model is stepped forward in time 120 times within the physical
259 ocean model time step (although this parameter is under debate), to
260 allow for elastic waves to disappear. Because the scheme does not
261 require a matrix inversion it is fast in spite of the small timestep
262 \citep{hunke97}. For completeness, we repeat the equations for the
263 components of the stress tensor $\sigma_{1} =
264 \sigma_{11}+\sigma_{22}$, $\sigma_{2}= \sigma_{11}-\sigma_{22}$, and
265 $\sigma_{12}$. Introducing the divergence $D_D =
266 \dot{\epsilon}_{11}+\dot{\epsilon}_{22}$, and the horizontal tension
267 and shearing strain rates, $D_T =
268 \dot{\epsilon}_{11}-\dot{\epsilon}_{22}$ and $D_S =
269 2\dot{\epsilon}_{12}$, respectively, and using the above abbreviations,
270 the equations can be written as:
271 \begin{align}
272 \label{eq:evpstresstensor1}
273 \frac{\partial\sigma_{1}}{\partial{t}} + \frac{\sigma_{1}}{2T} +
274 \frac{P}{2T} &= \frac{P}{2T\Delta} D_D \\
275 \label{eq:evpstresstensor2}
276 \frac{\partial\sigma_{2}}{\partial{t}} + \frac{\sigma_{2} e^{2}}{2T}
277 &= \frac{P}{2T\Delta} D_T \\
278 \label{eq:evpstresstensor12}
279 \frac{\partial\sigma_{12}}{\partial{t}} + \frac{\sigma_{12} e^{2}}{2T}
280 &= \frac{P}{4T\Delta} D_S
281 \end{align}
282 Here, the elastic parameter $E$ is redefined in terms of a damping timescale
283 $T$ for elastic waves \[E=\frac{\zeta}{T}.\]
284 $T=E_{0}\Delta{t}$ with the tunable parameter $E_0<1$ and
285 the external (long) timestep $\Delta{t}$. \citet{hunke97} recommend
286 $E_{0} = \frac{1}{3}$.
287
288 For details of the spatial discretization, the reader is referred to
289 \citet{zhang98, zhang03}. Our discretization differs only (but
290 importantly) in the underlying grid, namely the Arakawa C-grid, but is
291 otherwise straightforward. The EVP model in particular is discretized
292 naturally on the C-grid with $\sigma_{1}$ and $\sigma_{2}$ on the
293 center points and $\sigma_{12}$ on the corner (or vorticity) points of
294 the grid. With this choice all derivatives are discretized as central
295 differences and averaging is only involved in computing $\Delta$ and
296 $P$ at vorticity points.
297
298 For a general curvilinear grid, one needs in principle to take metric
299 terms into account that arise in the transformation of a curvilinear grid
300 on the sphere. For now, however, we can neglect these metric terms
301 because they are very small on the cubed sphere grids used in this
302 paper; in particular, only near the edges of the cubed sphere grid, we
303 expect them to be non-zero, but these edges are at approximately
304 35\degS\ or 35\degN\ which are never covered by sea-ice in our
305 simulations. Everywhere else the coordinate system is locally nearly
306 cartesian. However, for last-glacial-maximum or snowball-earth-like
307 simulations the question of metric terms needs to be reconsidered.
308 Either, one includes these terms as in \citet{zhang03}, or one finds a
309 vector-invariant formulation for the sea-ice internal stress term that
310 does not require any metric terms, as it is done in the ocean dynamics
311 of the MITgcm \citep{adcroft04:_cubed_sphere}.
312
313 Moving sea ice exerts a stress on the ocean which is the opposite of
314 the stress $\vtau_{ocean}$ in Eq.\refeq{momseaice}. This stess is
315 applied directly to the surface layer of the ocean model. An
316 alternative ocean stress formulation is given by \citet{hibler87}.
317 Rather than applying $\vtau_{ocean}$ directly, the stress is derived
318 from integrating over the ice thickness to the bottom of the oceanic
319 surface layer. In the resulting equation for the \emph{combined}
320 ocean-ice momentum, the interfacial stress cancels and the total
321 stress appears as the sum of windstress and divergence of internal ice
322 stresses: $\delta(z) (\vtau_{air} + \vek{F})/\rho_0$, \citep[see also
323 Eq.\,2 of][]{hibler87}. The disadvantage of this formulation is that
324 now the velocity in the surface layer of the ocean that is used to
325 advect tracers, is really an average over the ocean surface
326 velocity and the ice velocity leading to an inconsistency as the ice
327 temperature and salinity are different from the oceanic variables.
328
329 Sea ice distributions are characterized by sharp gradients and edges.
330 For this reason, we employ a positive 3rd-order advection scheme
331 \citep{hundsdorfer94} for the thermodynamic variables discussed in the
332 next section.
333
334 \subparagraph{boundary conditions: no-slip, free-slip, half-slip}
335
336 \begin{itemize}
337 \item transition from existing B-Grid to C-Grid
338 \item boundary conditions: no-slip, free-slip, half-slip
339 \item fancy (multi dimensional) advection schemes
340 \item VP vs.\ EVP \citep{hunke97}
341 \item ocean stress formulation \citep{hibler87}
342 \end{itemize}
343
344 \subsection{Thermodynamics}
345 \label{sec:thermodynamics}
346
347 In the original formulation the sea ice model \citep{menemenlis05}
348 uses simple thermodynamics following the appendix of
349 \citet{semtner76}. This formulation does not allow storage of heat
350 (heat capacity of ice is zero, and this type of model is often refered
351 to as a ``zero-layer'' model). Upward heat flux is parameterized
352 assuming a linear temperature profile and together with a constant ice
353 conductivity. It is expressed as $(K/h)(T_{w}-T_{0})$, where $K$ is
354 the ice conductivity, $h$ the ice thickness, and $T_{w}-T_{0}$ the
355 difference between water and ice surface temperatures. The surface
356 heat budget is computed in a similar way to that of
357 \citet{parkinson79} and \citet{manabe79}.
358
359 There is considerable doubt about the reliability of such a simple
360 thermodynamic model---\citet{semtner84} found significant errors in
361 phase (one month lead) and amplitude ($\approx$50\%\,overestimate) in
362 such models---, so that today many sea ice models employ more complex
363 thermodynamics. A popular thermodynamics model of \citet{winton00} is
364 based on the 3-layer model of \citet{semtner76} and treats brine
365 content by means of enthalphy conservation. This model requires in
366 addition to ice-thickness and compactness (fractional area) additional
367 state variables to be advected by ice velocities, namely enthalphy of
368 the two ice layers and the thickness of the overlying snow layer.
369
370
371 \subsection{C-grid}
372 \begin{itemize}
373 \item no-slip vs. free-slip for both lsr and evp;
374 "diagnostics" to look at and use for comparison
375 \begin{itemize}
376 \item ice transport through Fram Strait/Denmark Strait/Davis
377 Strait/Bering strait (these are general)
378 \item ice transport through narrow passages, e.g.\ Nares-Strait
379 \end{itemize}
380 \item compare different advection schemes (if lsr turns out to be more
381 effective, then with lsr otherwise I prefer evp), eg.
382 \begin{itemize}
383 \item default 2nd-order with diff1=0.002
384 \item 1st-order upwind with diff1=0.
385 \item DST3FL (SEAICEadvScheme=33 with diff1=0., should work, works for me)
386 \item 2nd-order wit flux limiter (SEAICEadvScheme=77 with diff1=0.)
387 \end{itemize}
388 That should be enough. Here, total ice mass and location of ice edge
389 is interesting. However, this comparison can be done in an idealized
390 domain, may not require full Arctic Domain?
391 \item
392 Do a little study on the parameters of LSR and EVP
393 \begin{enumerate}
394 \item convergence of LSR, how many iterations do you need to get a
395 true elliptic yield curve
396 \item vary deltaTevp and the relaxation parameter for EVP and see when
397 the EVP solution breaks down (relative to the forcing time scale).
398 For this, it is essential that the evp solver gives use "stripeless"
399 solutions, that is your dtevp = 1sec solutions/or 10sec solutions
400 with SEAICE\_evpDampC = 615.
401 \end{enumerate}
402 \end{itemize}
403
404 \section{Forward sensitivity experiments}
405 \label{sec:forward}
406
407 A second series of forward sensitivity experiments have been carried out on an
408 Arctic Ocean domain with open boundaries. Once again the objective is to
409 compare the old B-grid LSR dynamic solver with the new C-grid LSR and EVP
410 solvers. One additional experiment is carried out to illustrate the
411 differences between the two main options for sea ice thermodynamics in the MITgcm.
412
413 \subsection{Arctic Domain with Open Boundaries}
414 \label{sec:arctic}
415
416 The Arctic domain of integration is illustrated in Fig.~\ref{fig:arctic1}. It
417 is carved out from, and obtains open boundary conditions from, the
418 global cubed-sphere configuration of the Estimating the Circulation
419 and Climate of the Ocean, Phase II (ECCO2) project
420 \citet{menemenlis05}. The domain size is 420 by 384 grid boxes
421 horizontally with mean horizontal grid spacing of 18 km.
422
423 \begin{figure}
424 %\centerline{{\includegraphics*[width=0.44\linewidth]{\fpath/arctic1.eps}}}
425 \caption{Bathymetry of Arctic Domain.\label{fig:arctic1}}
426 \end{figure}
427
428 There are 50 vertical levels ranging in thickness from 10 m near the surface
429 to approximately 450 m at a maximum model depth of 6150 m. Bathymetry is from
430 the National Geophysical Data Center (NGDC) 2-minute gridded global relief
431 data (ETOPO2) and the model employs the partial-cell formulation of
432 \citet{adcroft97:_shaved_cells}, which permits accurate representation of the bathymetry. The
433 model is integrated in a volume-conserving configuration using a finite volume
434 discretization with C-grid staggering of the prognostic variables. In the
435 ocean, the non-linear equation of state of \citet{jackett95}. The ocean model is
436 coupled to a sea-ice model described hereinabove.
437
438 This particular ECCO2 simulation is initialized from rest using the
439 January temperature and salinity distribution from the World Ocean
440 Atlas 2001 (WOA01) [Conkright et al., 2002] and it is integrated for
441 32 years prior to the 1996--2001 period discussed in the study. Surface
442 boundary conditions are from the National Centers for Environmental
443 Prediction and the National Center for Atmospheric Research
444 (NCEP/NCAR) atmospheric reanalysis [Kistler et al., 2001]. Six-hourly
445 surface winds, temperature, humidity, downward short- and long-wave
446 radiations, and precipitation are converted to heat, freshwater, and
447 wind stress fluxes using the \citet{large81, large82} bulk formulae.
448 Shortwave radiation decays exponentially as per Paulson and Simpson
449 [1977]. Additionally the time-mean river run-off from Large and Nurser
450 [2001] is applied and there is a relaxation to the monthly-mean
451 climatological sea surface salinity values from WOA01 with a
452 relaxation time scale of 3 months. Vertical mixing follows
453 \citet{large94} with background vertical diffusivity of
454 $1.5\times10^{-5}\text{\,m$^{2}$\,s$^{-1}$}$ and viscosity of
455 $10^{-3}\text{\,m$^{2}$\,s$^{-1}$}$. A third order, direct-space-time
456 advection scheme with flux limiter is employed \citep{hundsdorfer94}
457 and there is no explicit horizontal diffusivity. Horizontal viscosity
458 follows \citet{lei96} but
459 modified to sense the divergent flow as per Fox-Kemper and Menemenlis
460 [in press]. Shortwave radiation decays exponentially as per Paulson
461 and Simpson [1977]. Additionally, the time-mean runoff of Large and
462 Nurser [2001] is applied near the coastline and, where there is open
463 water, there is a relaxation to monthly-mean WOA01 sea surface
464 salinity with a time constant of 45 days.
465
466 Open water, dry
467 ice, wet ice, dry snow, and wet snow albedo are, respectively, 0.15, 0.85,
468 0.76, 0.94, and 0.8.
469
470 \begin{itemize}
471 \item Configuration
472 \item OBCS from cube
473 \item forcing
474 \item 1/2 and full resolution
475 \item with a few JFM figs from C-grid LSR no slip
476 ice transport through Canadian Archipelago
477 thickness distribution
478 ice velocity and transport
479 \end{itemize}
480
481 \begin{itemize}
482 \item Arctic configuration
483 \item ice transport through straits and near boundaries
484 \item focus on narrow straits in the Canadian Archipelago
485 \end{itemize}
486
487 \begin{itemize}
488 \item B-grid LSR no-slip
489 \item C-grid LSR no-slip
490 \item C-grid LSR slip
491 \item C-grid EVP no-slip
492 \item C-grid EVP slip
493 \item C-grid LSR + TEM (truncated ellipse method, no tensile stress, new flag)
494 \item C-grid LSR no-slip + Winton
495 \item speed-performance-accuracy (small)
496 ice transport through Canadian Archipelago differences
497 thickness distribution differences
498 ice velocity and transport differences
499 \end{itemize}
500
501 We anticipate small differences between the different models due to:
502 \begin{itemize}
503 \item advection schemes: along the ice-edge and regions with large
504 gradients
505 \item C-grid: less transport through narrow straits for no slip
506 conditons, more for free slip
507 \item VP vs.\ EVP: speed performance, accuracy?
508 \item ocean stress: different water mass properties beneath the ice
509 \end{itemize}
510
511 \section{Adjoint sensiivities of the MITsim}
512
513 \subsection{The adjoint of MITsim}
514
515 The ability to generate tangent linear and adjoint model components
516 of the MITsim has been a main design task.
517 For the ocean the adjoint capability has proven to be an
518 invaluable tool for sensitivity analysis as well as state estimation.
519 In short, the adjoint enables very efficient computation of the gradient
520 of scalar-valued model diagnostics (called cost function or objective function)
521 with respect to many model "variables".
522 These variables can be two- or three-dimensional fields of initial
523 conditions, model parameters such as mixing coefficients, or
524 time-varying surface or lateral (open) boundary conditions.
525 When combined, these variables span a potentially high-dimensional
526 (e.g. O(10$^8$)) so-called control space. Performing parameter perturbations
527 to assess model sensitivities quickly becomes prohibitive at these scales.
528 Alternatively, (time-varying) sensitivities of the objective function
529 to any element of the control space can be computed very efficiently in
530 one single adjoint
531 model integration, provided an efficient adjoint model is available.
532
533 [REFERENCES]
534
535
536 The adjoint operator (ADM) is the transpose of the tangent linear operator (TLM)
537 of the full (in general nonlinear) forward model, i.e. the MITsim.
538 The TLM maps perturbations of elements of the control space
539 (e.g. initial ice thickness distribution)
540 via the model Jacobian
541 to a perturbation in the objective function
542 (e.g. sea-ice export at the end of the integration interval).
543 \textit{Tangent} linearity ensures that the derivatives are evaluated
544 with respect to the underlying model trajectory at each point in time.
545 This is crucial for nonlinear trajectories and the presence of different
546 regimes (e.g. effect of the seaice growth term at or away from the
547 freezing point of the ocean surface).
548 Ensuring tangent linearity can be easily achieved by integrating
549 the full model in sync with the TLM to provide the underlying model state.
550 Ensuring \textit{tangent} adjoints is equally crucial, but much more
551 difficult to achieve because of the reverse nature of the integration:
552 the adjoint accumulates sensitivities backward in time,
553 starting from a unit perturbation of the objective function.
554 The adjoint model requires the model state in reverse order.
555 This presents one of the major complications in deriving an
556 exact, i.e. \textit{tangent} adjoint model.
557
558 Following closely the development and maintenance of TLM and ADM
559 components of the MITgcm we have relied heavily on the
560 autmomatic differentiation (AD) tool
561 "Transformation of Algorithms in Fortran" (TAF)
562 developed by Fastopt (Giering and Kaminski, 1998)
563 to derive TLM and ADM code of the MITsim.
564 Briefly, the nonlinear parent model is fed to the AD tool which produces
565 derivative code for the specified control space and objective function.
566 Following this approach has (apart from its evident success)
567 several advantages:
568 (1) the adjoint model is the exact adjoint operator of the parent model,
569 (2) the adjoint model can be kept up to date with respect to ongoing
570 development of the parent model, and adjustments to the parent model
571 to extend the automatically generated adjoint are incremental changes
572 only, rather than extensive re-developments,
573 (3) the parallel structure of the parent model is preserved
574 by the adjoint model, ensuring efficient use in high performance
575 computing environments.
576
577 Some initial code adjustments are required to support dependency analysis
578 of the flow reversal and certain language limitations which may lead
579 to irreducible flow graphs (e.g. GOTO statements).
580 The problem of providing the required model state in reverse order
581 at the time of evaluating nonlinear or conditional
582 derivatives is solved via balancing
583 storing vs. recomputation of the model state in a multi-level
584 checkpointing loop.
585 Again, an initial code adjustment is required to support TAFs
586 checkpointing capability.
587 The code adjustments are sufficiently simple so as not to cause
588 major limitations to the full nonlinear parent model.
589 Once in place, an adjoint model of a new model configuration
590 may be derived in about 10 minutes.
591
592 [HIGHLIGHT COUPLED NATURE OF THE ADJOINT!]
593
594 \subsection{Special considerations}
595
596 * growth term(?)
597
598 * small active denominators
599
600 * dynamic solver (implicit function theorem)
601
602 * approximate adjoints
603
604
605 \subsection{An example: sensitivities of sea-ice export through Fram Strait}
606
607 We demonstrate the power of the adjoint method
608 in the context of investigating sea-ice export sensitivities through Fram Strait
609 (for details of this study see Heimbach et al., 2007).
610 %\citep[for details of this study see][]{heimbach07}. %Heimbach et al., 2007).
611 The domain chosen is a coarsened version of the Arctic face of the
612 high-resolution cubed-sphere configuration of the ECCO2 project
613 \citep[see][]{menemenlis05}. It covers the entire Arctic,
614 extends into the North Pacific such as to cover the entire
615 ice-covered regions, and comprises parts of the North Atlantic
616 down to XXN to enable analysis of remote influences of the
617 North Atlantic current to sea-ice variability and export.
618 The horizontal resolution varies between XX and YY km
619 with 50 unevenly spaced vertical levels.
620 The adjoint models run efficiently on 80 processors
621 (benchmarks have been performed both on an SGI Altix as well as an
622 IBM SP5 at NASA/ARC).
623
624 Following a 1-year spinup, the model has been integrated for four
625 years between 1992 and 1995. It is forced using realistic 6-hourly
626 NCEP/NCAR atmospheric state variables. Over the open ocean these are
627 converted into air-sea fluxes via the bulk formulae of
628 \citet{large04}. Derivation of air-sea fluxes in the presence of
629 sea-ice is handled by the ice model as described in \refsec{model}.
630 The objective function chosen is sea-ice export through Fram Strait
631 computed for December 1995. The adjoint model computes sensitivities
632 to sea-ice export back in time from 1995 to 1992 along this
633 trajectory. In principle all adjoint model variable (i.e., Lagrange
634 multipliers) of the coupled ocean/sea-ice model are available to
635 analyze the transient sensitivity behaviour of the ocean and sea-ice
636 state. Over the open ocean, the adjoint of the bulk formula scheme
637 computes sensitivities to the time-varying atmospheric state. Over
638 ice-covered parts, the sea-ice adjoint converts surface ocean
639 sensitivities to atmospheric sensitivities.
640
641 \reffig{4yradjheff}(a--d) depict sensitivities of sea-ice export
642 through Fram Strait in December 1995 to changes in sea-ice thickness
643 12, 24, 36, 48 months back in time. Corresponding sensitivities to
644 ocean surface temperature are depicted in
645 \reffig{4yradjthetalev1}(a--d). The main characteristics is
646 consistency with expected advection of sea-ice over the relevant time
647 scales considered. The general positive pattern means that an
648 increase in sea-ice thickness at location $(x,y)$ and time $t$ will
649 increase sea-ice export through Fram Strait at time $T_e$. Largest
650 distances from Fram Strait indicate fastest sea-ice advection over the
651 time span considered. The ice thickness sensitivities are in close
652 correspondence to ocean surface sentivitites, but of opposite sign.
653 An increase in temperature will incur ice melting, decrease in ice
654 thickness, and therefore decrease in sea-ice export at time $T_e$.
655
656 The picture is fundamentally different and much more complex
657 for sensitivities to ocean temperatures away from the surface.
658 \reffig{4yradjthetalev10??}(a--d) depicts ice export sensitivities to
659 temperatures at roughly 400 m depth.
660 Primary features are the effect of the heat transport of the North
661 Atlantic current which feeds into the West Spitsbergen current,
662 the circulation around Svalbard, and ...
663
664 \begin{figure}[t!]
665 \centerline{
666 \subfigure[{\footnotesize -12 months}]
667 {\includegraphics*[width=0.44\linewidth]{\fpath/run_4yr_ADJheff_arc_lev1_tim072_cmax2.0E+02.eps}}
668 %\includegraphics*[width=.3\textwidth]{H_c.bin_res_100_lev1.pdf}
669 %
670 \subfigure[{\footnotesize -24 months}]
671 {\includegraphics*[width=0.44\linewidth]{\fpath/run_4yr_ADJheff_arc_lev1_tim145_cmax2.0E+02.eps}}
672 }
673
674 \centerline{
675 \subfigure[{\footnotesize
676 -36 months}]
677 {\includegraphics*[width=0.44\linewidth]{\fpath/run_4yr_ADJheff_arc_lev1_tim218_cmax2.0E+02.eps}}
678 %
679 \subfigure[{\footnotesize
680 -48 months}]
681 {\includegraphics*[width=0.44\linewidth]{\fpath/run_4yr_ADJheff_arc_lev1_tim292_cmax2.0E+02.eps}}
682 }
683 \caption{Sensitivity of sea-ice export through Fram Strait in December 2005 to
684 sea-ice thickness at various prior times.
685 \label{fig:4yradjheff}}
686 \end{figure}
687
688
689 \begin{figure}[t!]
690 \centerline{
691 \subfigure[{\footnotesize -12 months}]
692 {\includegraphics*[width=0.44\linewidth]{\fpath/run_4yr_ADJtheta_arc_lev1_tim072_cmax5.0E+01.eps}}
693 %\includegraphics*[width=.3\textwidth]{H_c.bin_res_100_lev1.pdf}
694 %
695 \subfigure[{\footnotesize -24 months}]
696 {\includegraphics*[width=0.44\linewidth]{\fpath/run_4yr_ADJtheta_arc_lev1_tim145_cmax5.0E+01.eps}}
697 }
698
699 \centerline{
700 \subfigure[{\footnotesize
701 -36 months}]
702 {\includegraphics*[width=0.44\linewidth]{\fpath/run_4yr_ADJtheta_arc_lev1_tim218_cmax5.0E+01.eps}}
703 %
704 \subfigure[{\footnotesize
705 -48 months}]
706 {\includegraphics*[width=0.44\linewidth]{\fpath/run_4yr_ADJtheta_arc_lev1_tim292_cmax5.0E+01.eps}}
707 }
708 \caption{Same as \reffig{4yradjheff} but for sea surface temperature
709 \label{fig:4yradjthetalev1}}
710 \end{figure}
711
712
713
714 \section{Discussion and conclusion}
715 \label{sec:concl}
716
717 The story of the paper could be:
718 B-grid ice model + C-grid ocean model does not work properly for us,
719 therefore C-grid ice model with advantages:
720 \begin{enumerate}
721 \item stress coupling simpler (no interpolation required)
722 \item different boundary conditions
723 \item advection schemes carry over trivially from main code
724 \end{enumerate}
725 LSR/EVP solutions are similar with appropriate bcs, evp parameters as
726 a function of forcing time scale (when does VP solution break
727 down). Same for LSR solver, provided that it works (o:
728 Which scheme is more efficient for the resolution/time stepping
729 parameters that we use here. What about other resolutions?
730
731 \paragraph{Acknowledgements}
732 We thank Jinlun Zhang for providing the original B-grid code and many
733 helpful discussions. ML thanks Elizabeth Hunke for multiple explanations.
734
735 \bibliography{bib/journal_abrvs,bib/seaice,bib/genocean,bib/maths,bib/mitgcmuv,bib/fram}
736
737 \end{document}
738
739 %%% Local Variables:
740 %%% mode: latex
741 %%% TeX-master: t
742 %%% End:
743
744
745 A Dynamic-Thermodynamic Sea ice Model for Ocean Climate
746 Estimation on an Arakawa C-Grid
747
748 Introduction
749
750 Ice Model:
751 Dynamics formulation.
752 B-C, LSR, EVP, no-slip, slip
753 parallellization
754 Thermodynamics formulation.
755 0-layer Hibler salinity + snow
756 3-layer Winton
757
758 Idealized tests
759 Funnel Experiments
760 Downstream Island tests
761 B-grid LSR no-slip
762 C-grid LSR no-slip
763 C-grid LSR slip
764 C-grid EVP no-slip
765 C-grid EVP slip
766
767 Arctic Setup
768 Configuration
769 OBCS from cube
770 forcing
771 1/2 and full resolution
772 with a few JFM figs from C-grid LSR no slip
773 ice transport through Canadian Archipelago
774 thickness distribution
775 ice velocity and transport
776
777 Arctic forward sensitivity experiments
778 B-grid LSR no-slip
779 C-grid LSR no-slip
780 C-grid LSR slip
781 C-grid EVP no-slip
782 C-grid EVP slip
783 C-grid LSR no-slip + Winton
784 speed-performance-accuracy (small)
785 ice transport through Canadian Archipelago differences
786 thickness distribution differences
787 ice velocity and transport differences
788
789 Adjoint sensitivity experiment on 1/2-res setup
790 Sensitivity of sea ice volume flow through Fram Strait
791 *** Sensitivity of sea ice volume flow through Canadian Archipelago
792
793 Summary and conluding remarks

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