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1 heimbach 1.15 %---------------------------------------------------------------------------
2 dimitri 1.17 \section{MITgcm adjoint code generation}
3 heimbach 1.1 \label{sec:adjoint}
4 heimbach 1.15 %---------------------------------------------------------------------------
5 heimbach 1.1
6 heimbach 1.3 There is now a growing body of literature on adjoint applications
7 heimbach 1.45 in oceanography and adjoint code generation via AD.
8 heimbach 1.3 We therefore limit the description of the method to a brief summary.
9 heimbach 1.38 For discrete problems as considered here,
10     the adjoint model operator (ADM) is the transpose of the
11 heimbach 1.11 Jacobian or tangent
12 heimbach 1.1 linear model operator (TLM) of the full (in general nonlinear) forward
13 heimbach 1.45 model (NLM), in this case, the MITgcm coupled ocean and sea ice model.
14 heimbach 1.37 Consider a scalar-valued model diagnostics, referred to as
15     objective function,
16 heimbach 1.45 and an $m$-dimensional control space
17     (referred to as space of independent variables)
18 heimbach 1.37 whose elements we may wish to perturb to assess their impact on the
19     objective function.
20     In the context of data assimilation the objective function may be the
21     least-square model vs. data misfit, whereas here, we may choose almost
22     any function that is (at least piece-wise) differentiable with respect to
23     the control variables. Here, we shall be focusing on the
24 heimbach 1.40 solid freshwater export through Lancaster Sound.
25    
26     \begin{table}[t!]
27     \caption{List of control variables used.
28     The controls are either part of the oceanic (O) or sea-ice (I) state,
29     or time-varying elements of the atmospheric (A) boundary conditions.}
30     \label{tab:controlvars}
31     \begin{tabular}{cccc}
32     \hline
33     component & variable & dim. & time \\
34     \hline \hline
35     O & temperature & 3-D & init. \\
36     O & salinity & 3-D & init. \\
37     O & vertical diffusivity & 3-D & const. \\
38     I & concentration & 2-D & init. \\
39     I & thickness & 2-D & init. \\
40     A & air temperature & 2-D & 2-day \\
41     A & specific humidity & 2-D & 2-day \\
42     A & shortwave radiation & 2-D & 2-day \\
43     A & precipitation & 2-D & 2-day \\\
44     A & zonal windspeed & 2-D & 2-day \\
45     A & merid. windspeed & 2-D & 2-day \\
46     \hline
47     \end{tabular}
48     \end{table}
49    
50 heimbach 1.45 Two- and three-dimensional control variables used in the present
51     study are listed in Table \ref{tab:controlvars}.
52     They consist of two- or
53 heimbach 1.1 three-dimensional fields of initial conditions of the ocean or sea-ice
54 heimbach 1.40 state, ocean vertical mixing coefficients, and time-varying
55     surface boundary conditions (surface air temperature,
56     specific humidity, shortwave radiation, precipitation,
57     zonal and meridional wind speed).
58 heimbach 1.45 The TLM computes the objective functions's directional derivatives
59 heimbach 1.37 for a given perturbation direction.
60     In contrast, the ADM computes the the full gradient
61     of the objective function with respect to all control variables.
62     When combined, the control
63     variables may span a potentially high-dimensional, e.g., O(10$^8$),
64 heimbach 1.6 control space. At this problem dimension, perturbing
65 dimitri 1.17 individual parameters to assess model sensitivities is
66 heimbach 1.1 prohibitive. By contrast, transient sensitivities of the objective
67     function to any element of the control and model state space can be
68     computed very efficiently in one single adjoint model integration,
69     provided an adjoint model is available.
70    
71 heimbach 1.38 Conventionally, adjoint models are developed ``by hand'' through
72     implementing code which solves the adjoint equations
73 dimitri 1.47 \citep[e.g.,][]{marc:95,wuns:96} of the given forward equations.
74 mlosch 1.9 The burden of developing ``by hand''
75 heimbach 1.3 an adjoint model in general matches that of
76     the forward model development. The substantial extra investment
77 dimitri 1.17 often prevents serious attempts at making available adjoint
78 heimbach 1.38 components of sophisticated models. Furthermore, the work of keeping
79     the adjoint model up-to-date with its forward parent model matches the
80     work of forward model development.
81     The alternative route of rigorous application of AD tools has proven
82 heimbach 1.3 very successful in the context of MITgcm ocean modeling applications.
83 heimbach 1.38
84     Certain limitations regarding coding standards apply.
85     Although they vary from tool to tool, they are similar across various
86     tools and are related to the ability to efficiently reverse the flow
87     through the model.
88     Work is thus required initially to make the model amenable to
89     efficient adjoint code generation for a given AD tool.
90     This part of the adjoint code generation is not automatic
91 heimbach 1.40 (we sometimes refer to it as semi-automatic)
92 heimbach 1.38 and can be substantial for legacy code, in particular if the code
93     is badly modularized and contains many irreducible control flows
94 dimitri 1.47 (e.g., GO TO statements, which are considered bad coding practice anyways).
95 heimbach 1.38
96     It is important to note, nevertheless, that once the tailoring of the
97     model code to the AD code is in place, any further forward model
98     development can be easily incorporated in the adjoint model via AD.
99     Furthermore, the notion of \textit{the adjoint} is misleading, since the
100     structure of the adjoint depends critically on the control problem posed
101     (a passive tracer sensitivity yields a very different Jacobian
102     to an active tracer sensitivity). A clear example of the dependence
103 dimitri 1.47 of the structure of the adjoint model on the control problem is the
104     extension of the MITgcm adjoint model to a configuration that uses bottom
105     topography as a control variable \citep{losc-heim:07}.
106 heimbach 1.38 The AD approach enables a much more thorough and smoother
107     adjoint model extension than would be possible via hand-coding.
108    
109 heimbach 1.3 The adjoint model of the MITgcm has become an invaluable
110 dimitri 1.17 tool for sensitivity analysis as well as for state estimation \citep[for a
111 heimbach 1.3 recent overview and summary, see][]{heim:08}.
112 dimitri 1.17 AD also enables a large variety of configurations
113     and studies to be conducted with adjoint methods without the onerous task of
114     modifying the adjoint of each new configuration by hand.
115 heimbach 1.45 \cite{gier-kami:98} discuss in detail the advantages of AD.
116 heimbach 1.3
117     The AD route was also taken in developing and adapting the sea-ice
118 dimitri 1.17 component of the MITgcm, so that tangent linear and adjoint components can be
119     obtained and kept up to date without excessive effort.
120     As for the TLM and ADM components of the MITgcm ocean model, we rely on the
121 heimbach 1.45 AD tool ``Transformation of Algorithms in
122 heimbach 1.1 Fortran'' (TAF) developed by Fastopt \citep{gier-kami:98} to generate
123 dimitri 1.17 TLM and ADM code of the MITgcm sea ice model \citep[for details
124     see][]{maro-etal:99,heim-etal:05}.
125     Note that for the ocean component, we are now also able to generate
126 heimbach 1.7 efficient derivative code using the new open-source tool OpenAD
127 heimbach 1.15 \citep{utke-etal:08}.
128 heimbach 1.7 Appendix \ref{app:adissues} provides details of
129 dimitri 1.17 adjoint code generation for the coupled ocean and sea ice MITgcm
130     configuration.
131 heimbach 1.1
132 dimitri 1.17 Since conducting this study, further changes to the
133     thermodynamic formulation have been implemented, which improve certain
134     aspects of forward and adjoint model behavior.
135 heimbach 1.45 These changes are discussed in detail in \cite{fent:10} along with application
136 dimitri 1.17 of the coupled ocean and sea ice MITgcm adjoint to estimating the state of the
137 dimitri 1.33 Labrador Sea during 1996--1997.
138 dimitri 1.17
139 heimbach 1.37 To conclude this section, we emphasize the coupled nature of the MITgcm
140     ocean and sea ice adjoint.
141 dimitri 1.24 \reffigure{couplingschematic}
142 heimbach 1.37 illustrates the relationship between control variables and the
143 heimbach 1.41 objective function $J$ when using the tangent linear model
144     (TLM, left diagram), or the adjoint model (ADM, right diagram).
145 mlosch 1.43 %ML The left diagram depicts how
146     %ML each perturbation of an element of the control space
147     %ML which consists of atmospheric perturbations
148     %ML (surface air temperature $\delta T_a$, precipitation $\delta p$),
149     %ML sea-ice perturbations
150 dimitri 1.47 %ML (e.g., ice concentration $\delta c$, ice thickness $\delta h$),
151 mlosch 1.43 %ML and oceanic perturbations
152 dimitri 1.47 %ML (e.g., potential temperature $\delta \Theta$, salinity $\delta S$)
153 mlosch 1.43 %ML leads to a perturbed objective function $\delta J$).
154     % easier to read?
155     The control space consists of atmospheric perturbations
156 dimitri 1.47 (e.g., surface air temperature $\delta T_a$ and precipitation $\delta p$),
157 heimbach 1.41 sea-ice perturbations
158 dimitri 1.47 (e.g., ice concentration $\delta c$ and ice thickness $\delta h$),
159 heimbach 1.41 and oceanic perturbations
160 dimitri 1.47 (e.g., potential temperature $\delta \Theta$ and salinity $\delta S$).
161 mlosch 1.43 The left diagram depicts how
162     each perturbation of an element of the control space
163 heimbach 1.45 leads to a perturbed objective function $\delta J$
164     via the TLM.
165 mlosch 1.43 %ML end
166 heimbach 1.37 In contrast, the right diagram shows the reverse propagation of
167 heimbach 1.41 \textit{adjoint variables} or
168 mlosch 1.43 \textit{sensitivities} labeled with an asterisk ($^{\ast}$).
169     The notation reflects the fact that adjoint variables are formally
170 heimbach 1.41 Lagrange multipliers or elements of the model's
171     co-tangent space (as opposed to perturbations which are formally
172     elements of the model's tangent space).
173     For example, $\delta^{\ast} c$ refers to the gradient
174     $ \partial J / \partial c$.
175 dimitri 1.47 The aim of the diagram is to show (in a very simplified way) two things.
176     First, it depicts how sensitivities of an objective function (e.g., sea ice
177     export as will be defined later) to changes in, e.g., ice concentration
178     $\partial J / \partial c$ is affected by changes in, e.g., ocean temperature
179     via the chain rule
180     $ \partial J/ \partial \Theta =
181     \partial J/ \partial c \cdot
182     \partial c/ \partial \Theta $.
183 heimbach 1.41 The adjoint model thus maps the adjoint objective function state
184     to the adjoint sea-ice state, and from there to the coupled
185     adjoint oceanic and surface atmospheric state.
186 dimitri 1.47 Second, it can be seen that the ADM maps from a
187 heimbach 1.41 1-dimensional state ($\delta^{\ast} J$) to a multi-dimensional state
188     ($\delta^{\ast} c, \delta^{\ast} h, \delta^{\ast} T_a,
189 dimitri 1.47 \delta^{\ast} p, \delta^{\ast} \Theta, \delta^{\ast} S$)
190 heimbach 1.41 whereas the TLM maps from a multi-dimensional state
191     ($\delta c, \delta h, \delta T_a,
192     \delta p, \delta \Theta, \delta S$) to a 1-dimensional state
193 dimitri 1.47 ($\delta J$). This is the reason why
194     only one adjoint integration is needed to assemble all the
195     gradients of the objective function while one tangent linear
196     integrations per dimension of the control space
197     is needed to assemble the same gradient.
198     Rigorous derivations can be found in, for example, Chapter 5 of the MITgcm
199     documentation \citep{adcr-etal:02}, in \cite{wuns:06}, or in
200 heimbach 1.41 \cite{gier-kami:98}.
201 heimbach 1.1
202 dimitri 1.33 \begin{figure}[t]
203     \newcommand{\textinfigure}[1]{{\normalsize\textbf{\textsf{#1}}}}
204     \newcommand{\mathinfigure}[1]{\normalsize\ensuremath{{#1}}}
205     \psfrag{delS}{\mathinfigure{\delta S}}
206     \psfrag{delT}{\mathinfigure{\delta \Theta}}
207     \psfrag{delc}{\mathinfigure{\delta c}}
208     \psfrag{delh}{\mathinfigure{\delta h}}
209     \psfrag{delAT}{\mathinfigure{\delta T_a}}
210     \psfrag{delP}{\mathinfigure{\delta p}}
211     \psfrag{delJ}{\mathinfigure{\delta J}}
212     %
213     \psfrag{addS}{\mathinfigure{\delta^{\ast} S}}
214     \psfrag{addT}{\mathinfigure{\delta^{\ast} \Theta}}
215     \psfrag{addc}{\mathinfigure{\delta^{\ast} c}}
216     \psfrag{addh}{\mathinfigure{\delta^{\ast} h}}
217     \psfrag{addAT}{\mathinfigure{\delta^{\ast} T_a}}
218     \psfrag{addP}{\mathinfigure{\delta^{\ast} p}}
219     \psfrag{addJ}{\mathinfigure{\delta^{\ast} J}}
220     \centerline{
221 heimbach 1.37 \includegraphics*[width=.95\textwidth]{\fpath/coupling_schematic}
222 dimitri 1.33 }
223     \caption{
224 dimitri 1.47 This diagram illustrates how
225 heimbach 1.41 the tangent linear model (TLM, left panel) maps perturbations in
226     the oceanic, atmospheric, or sea-ice state into a perturbation
227     of the objective function $\delta J$,
228     whereas the adjoint model (ADM, right panel) maps the adjoint
229 heimbach 1.46 objective function $\delta^{\ast} J$ (seeded to unity)
230 dimitri 1.47 into the adjoint sea-ice state,
231 heimbach 1.41 which is a sensitivity or gradient, e.g.,
232     $\delta^{\ast} c \, = \, \partial J / \partial c$,
233     and into the coupled ocean and atmospheric adjoint states.
234 dimitri 1.47 The TLM computes how a perturbation in \textit{one} input
235     affects \textit{all} outputs
236     whereas the adjoint model computes how \textit{one} particular output
237     is affected by \textit{all} inputs.
238 dimitri 1.33 \label{fig:couplingschematic}}
239     \end{figure}
240 heimbach 1.1
241 heimbach 1.15 %---------------------------------------------------------------------------
242 heimbach 1.6 \section{A case study: Sensitivities of sea-ice export through
243 heimbach 1.21 Lancaster Sound}
244 heimbach 1.15 %---------------------------------------------------------------------------
245 heimbach 1.1
246     We demonstrate the power of the adjoint method in the context of
247 dimitri 1.47 investigating sea-ice export sensitivities through Lancaster Sound (LS).
248 dimitri 1.18 The rationale for this choice is to complement the analysis of sea-ice
249 heimbach 1.39 dynamics in the presence of narrow straits of Part 1.
250 heimbach 1.42 LS is one of
251 dimitri 1.18 the main paths of sea ice export through the Canadian Arctic
252 heimbach 1.36 Archipelago (CAA)
253     \citep{mell:02,prin-hami:05,mich-etal:06,muen-etal:06,kwok:06}.
254     \reffigure{sverdrupbasin} %taken from \cite{mell:02}
255 heimbach 1.46 shows the intricate local geography of CAA
256 heimbach 1.8 straits, sounds, and islands.
257     Export sensitivities reflect dominant pathways
258 dimitri 1.18 through the CAA, as resolved by the model. Sensitivity maps provide a very
259     detailed view of
260 mlosch 1.12 %shed a very detailed light on
261     various quantities affecting the sea-ice export
262 heimbach 1.14 (and thus the underlying propagation pathways).
263 heimbach 1.46 A caveat of this study is the limited resolution, which
264 heimbach 1.11 is not adequate to realistically simulate the CAA.
265     For example, while the dominant
266 heimbach 1.42 circulation through LS is toward the East, there is a
267 heimbach 1.36 small Westward flow to the North, hugging the coast of Devon Island,
268     which is not resolved in our simulation.
269 heimbach 1.11 Nevertheless, the focus here is on elucidating model sensitivities in a
270     general way. For any given simulation, whether deemed
271 dimitri 1.18 ``realistic'' or not, the adjoint provides exact model sensitivities, which
272 heimbach 1.46 help inform whether hypothesized processes are actually
273 heimbach 1.11 borne out by the model dynamics.
274 heimbach 1.46 Note that the resolution used in this study is at least as good as
275     or better than the resolution used for IPCC-type calculations.
276 heimbach 1.1
277 dimitri 1.33 \begin{figure}[t]
278     \centering
279 mlosch 1.44 \includegraphics*[width=0.95\textwidth]{\fpath/map_part2_2}
280 dimitri 1.33 % \includegraphics*[width=0.9\textwidth]{\fpath/map_sverdrup_basin_melling_2002}
281     \caption{Map of the Canadian Arctic Archipelago with model
282     coastlines and grid (filled grey boxes are land). The black
283     contours are the true coastlines as taken from the GSHHS data base
284 heimbach 1.39 \citep{wessel96}. The gate at 82$^{\circ}W$
285     across which the solid freshwater export is computed
286     is indicated as black line.
287 dimitri 1.33 \label{fig:sverdrupbasin}}
288     \end{figure}
289 heimbach 1.15
290     %---------------------------------------------------------------------------
291 heimbach 1.6 \subsection{The model configuration}
292 heimbach 1.15 %---------------------------------------------------------------------------
293 heimbach 1.6
294 heimbach 1.14 The model domain is similar to the one described in Part 1.
295 heimbach 1.40 It is carved out from the Arctic face of a global, eddy-admitting,
296 dimitri 1.19 cubed-sphere simulation \citep{menemenlis05}
297     but with 36-km instead of 18-km grid cell width,
298 heimbach 1.40 i.e., coarsened horizontal resolution compared to
299     the configuration described in Part 1.
300 mlosch 1.12 %, now amounting to roughly 36 km..
301 heimbach 1.40 The vertical discretization is the same as in Part 1, i.e. the model has
302     50 vertical depth levels, which are unevenly spaced, ranging from 10 m
303     layer thicknesses in the top 100 m to a maximum of 456 m layer thickness
304     at depth.
305 dimitri 1.19 The adjoint model for this configuration runs efficiently on 80 processors,
306     inferred from benchmarks on both an SGI Altix and on an IBM SP5 at NASA/ARC
307     and at NCAR/CSL, respectively.
308     Following a 4-year spinup (1985 to 1988), the model is integrated for an
309     additional four
310     years and nine months between January 1, 1989 and September 30, 1993.
311     It is forced at the surface using realistic 6-hourly NCEP/NCAR atmospheric
312     state variables.
313 heimbach 1.1 %Over the open ocean these are
314     %converted into air-sea fluxes via the bulk formulae of
315     %\citet{large04}. The air-sea fluxes in the presence of
316     %sea-ice are handled by the ice model as described in \refsec{model}.
317 heimbach 1.29 The objective function $J$ is chosen as the ``solid'' freshwater
318 heimbach 1.42 export through LS, at approximately 74\degN, 82\degW\ in
319 dimitri 1.24 \reffig{sverdrupbasin}, integrated over the final 12-month period, i.e.,
320 dimitri 1.19 October 1, 1992 to September 30, 1993.
321     That is,
322 heimbach 1.29
323     \begin{linenomath*}
324 heimbach 1.1 \begin{equation}
325 mlosch 1.12 \label{eq:costls}
326 heimbach 1.29 J \, =
327     \frac{1}{\rho_{fresh}}
328     \int_{\mathrm{Oct\,92}}^{\mathrm{Sep\,93}}
329 heimbach 1.42 \int_{\mathrm{LS}}
330 heimbach 1.29 \, (\rho \, h \, c \, + \, \rho_{s} h_{s}c)\,u \,ds \,dt,
331 heimbach 1.1 \end{equation}
332 heimbach 1.29 \end{linenomath*}
333    
334     %\ml{[ML: shouldn't $J$ be normalized by $\rho_{\mathrm{fresh}}$ to
335     % give the units that we use in the figures?]}
336 heimbach 1.37 is the mass export of ice and snow converted to units of freshwater.
337     Furthermore, for each grid cell $(i,j)$ of the section, along which the
338     integral $\int \ldots ds$ is taken,
339     $c(i,j)$ is the fractional ice cover, $u(i,j)$ is the along-channel ice drift
340     velocity, $h(i,j)$ and $h_s(i,j)$ are the ice and snow
341 heimbach 1.29 thicknesses, and $\rho$, $\rho_s$, and $\rho_{fresh}$
342     are the ice, snow and freshwater densities, respectively.
343 heimbach 1.37 At the given resolution, the section amounts to three grid points.
344 heimbach 1.1 The forward trajectory of the model integration resembles broadly that
345 dimitri 1.19 of the model in Part~1 but some details are different due
346     to the different resolution and integration period.
347 heimbach 1.37 For example, the differences in annual solid
348 heimbach 1.46 freshwater export through LS as defined in eqn. \refeq{costls}
349 heimbach 1.37 are smaller between no-slip and
350 heimbach 1.21 free-slip lateral boundary conditions at higher resolution,
351     as shown in Part 1, Section 4.3
352 mlosch 1.9 ($91\pm85\text{\,km$^{3}$\,y$^{-1}$}$ and
353     $77\pm110\text{\,km$^{3}$\,y$^{-1}$}$ for free-slip and no-slip, respectively,
354 heimbach 1.37 and for the C-grid LSR solver; $\pm$ values refer to standard deviations
355     of the annual mean) than at lower resolution
356 heimbach 1.8 ($116\pm101\text{\,km$^{3}$\,y$^{-1}$}$ and
357 mlosch 1.9 $39\pm64\text{\,km$^{3}$\,y$^{-1}$}$ for free-slip and no-slip, respectively).
358 dimitri 1.19 The large range of these estimates emphasizes the need to
359 mlosch 1.12 better understand the model sensitivities to lateral boundary
360 dimitri 1.19 conditions and to different configuration details. We aim to explore
361 mlosch 1.12 these sensitivities across the entire model state space in a
362 heimbach 1.14 comprehensive manner by means of the adjoint model.
363 mlosch 1.12 %The large discrepancy between all these numbers underlines the need to
364     %better understand the model sensitivities across the entire model state space
365     %resulting from different lateral boundary conditions and different
366     %configurations, and which we aim to explore in a more
367     %comprehensive manner through the adjoint.
368 heimbach 1.1
369 heimbach 1.6 The adjoint model is the transpose of the tangent linear model
370 heimbach 1.46 operator. It thus runs backwards in time from September 1993 to
371 dimitri 1.19 January 1989. During this integration period, the Lagrange multipliers
372     of the model subject to objective function \refeq{costls} are
373     accumulated. These Langrange multipliers
374 heimbach 1.46 are the sensitivities, or derivatives, of the objective function with respect
375 mlosch 1.9 %ML which can be interpreted as sensitivities of the objective function
376 dimitri 1.19 to each control variable and to each element of the intermediate
377     coupled ocean and sea ice model state variables.
378     Thus, all sensitivity elements of the model state and of the surface
379     atmospheric state are
380 heimbach 1.1 available for analysis of the transient sensitivity behavior. Over the
381 heimbach 1.14 open ocean, the adjoint of the \cite{larg-yeag:04} bulk formula scheme computes
382     sensitivities to the time-varying atmospheric state.
383     Specifically, ocean sensitivities propagate to air-sea flux sensitivities,
384     which are mapped to atmospheric state sensitivities via the
385     bulk formula adjoint.
386 dimitri 1.47 Similarly, over ice-covered areas, the sea-ice model adjoint
387     (rather than the bulk formula adjoint) converts surface ocean sensitivities to
388     atmospheric sensitivities.
389 heimbach 1.14
390 heimbach 1.1
391 heimbach 1.15 %---------------------------------------------------------------------------
392 heimbach 1.6 \subsection{Adjoint sensitivities}
393 heimbach 1.15 %---------------------------------------------------------------------------
394 heimbach 1.7
395 dimitri 1.33 \begin{figure*}[t]
396     \includegraphics*[width=\textwidth]{\fpath/adj_canarch_freeslip_ADJheff}
397     \caption{Sensitivity $\partial{J}/\partial{(hc)}$ in
398     m$^3$\,s$^{-1}$/m for four different times using free-slip
399     lateral sea ice boundary conditions. The color scale is chosen
400     to illustrate the patterns of the sensitivities.
401 heimbach 1.46 The objective function \refeq{costls} was evaluated between
402 heimbach 1.37 October 1992 and September 1993.
403     Sensitivity patterns extend backward in time upstream of the
404 heimbach 1.42 LS section.
405 dimitri 1.33 \label{fig:adjhefffreeslip}}
406     \end{figure*}
407    
408     \begin{figure*}[t]
409     \includegraphics*[width=\textwidth]{\fpath/adj_canarch_noslip_ADJheff}
410     \caption{Same as in \reffig{adjhefffreeslip} but for no-slip
411     lateral sea ice boundary conditions.
412     \label{fig:adjheffnoslip}}
413     \end{figure*}
414    
415 heimbach 1.1 The most readily interpretable ice-export sensitivity is that to
416 mlosch 1.13 ice thickness, $\partial{J} / \partial{(hc)}$.
417 dimitri 1.24 Maps of transient sensitivities $\partial{J} / \partial{(hc)}$ are shown for
418     free-slip (\reffig{adjhefffreeslip}) and for no-slip
419     (\reffig{adjheffnoslip}) boundary conditions.
420 heimbach 1.46 Each figure depicts four sensitivity snapshots of the objective function $J$,
421 dimitri 1.25 starting October 1, 1992, i.e., at the beginning of the 12-month averaging
422     period, and going back in time to October 2, 1989.
423     As a reminder, the full period over which the adjoint sensitivities
424 heimbach 1.46 are calculated is (backward in time)
425     between September 30, 1993 and January 1, 1989.
426 heimbach 1.1
427 mlosch 1.13 The sensitivity patterns for ice thickness are predominantly positive.
428 heimbach 1.46 The interpretation is that
429     an increase in ice volume in most places west, i.e., ``upstream'', of
430 mlosch 1.12 %``upstream'' of
431 heimbach 1.42 LS increases the solid freshwater export at the exit section.
432 heimbach 1.14 The transient nature of the sensitivity patterns is evident:
433 heimbach 1.42 the area upstream of LS that
434 heimbach 1.1 contributes to the export sensitivity is larger in the earlier snapshot.
435 dimitri 1.47 In the free-slip case, the sensivity follows (backwards in time) the dominant
436 dimitri 1.33 pathway through Barrow Strait
437 heimbach 1.14 into Viscount Melville Sound, and from there trough M'Clure Strait
438     into the Arctic Ocean
439     %
440     \footnote{
441 heimbach 1.15 (the branch of the ``Northwest Passage'' apparently
442 heimbach 1.14 discovered by Robert McClure during his 1850 to 1854 expedition;
443     McClure lost his vessel in the Viscount Melville Sound)
444     }.
445     %
446     Secondary paths are northward from
447     Viscount Melville Sound through Byam Martin Channel into
448     Prince Gustav Adolf Sea and through Penny Strait into MacLean Strait.
449 heimbach 1.1
450 dimitri 1.25 There are large differences between the free-slip and no-slip
451     solutions. By the end of the adjoint integration in January 1989, the
452     no-slip sensitivities (\reffig{adjheffnoslip}) are generally weaker than the
453 heimbach 1.14 free slip sensitivities and hardly reach beyond the western end of
454 dimitri 1.33 Barrow Strait. In contrast, the free-slip sensitivities
455     (\reffig{adjhefffreeslip})
456 heimbach 1.1 extend through most of the CAA and into the Arctic interior, both to
457 dimitri 1.25 the West (M'Clure Strait) and to the North (Ballantyne Strait, Prince
458 heimbach 1.14 Gustav Adolf Sea, Massey Sound). In this case the ice can
459 dimitri 1.25 drift more easily through narrow straits and a positive ice
460 heimbach 1.1 volume anomaly anywhere upstream in the CAA increases ice export
461 heimbach 1.42 through LS within the simulated 4-year period.
462 heimbach 1.1
463 heimbach 1.2 One peculiar feature in the October 1992 sensitivity maps
464     are the negative sensivities to the East and, albeit much weaker,
465 heimbach 1.42 to the West of LS.
466 heimbach 1.14 The former can be explained by indirect effects: less ice eastward
467 heimbach 1.42 of LS results in
468 heimbach 1.2 less resistance to eastward drift and thus more export.
469     A similar mechanism might account for the latter,
470 heimbach 1.8 albeit more speculative: less ice to
471 dimitri 1.24 the West means that more ice can be moved eastward from Barrow Strait
472 heimbach 1.42 into LS leading to more ice export.
473 heimbach 1.21 %\\ \ml{[ML: This
474     % paragraph is very weak, need to think of something else, longer
475     % fetch maybe? PH: Not sure what you mean. ML: I cannot remember,
476     % either, so maybe we should just leave it as is it, but the paragraph
477     % is weak, maybe we can drop it altogether and if reviewer comment on
478     % these negative sensitivies we put something back in?]}
479 heimbach 1.1
480 dimitri 1.33 \begin{figure*}
481     \centerline{
482 heimbach 1.42 \includegraphics*[height=.75\textheight]{\fpath/lancaster_adj-line}
483 dimitri 1.33 }
484 heimbach 1.42 \caption{Time vs. longitude diagrams along the axis of Viscount Melville
485     Sound, Barrow Strait, and LS. The diagrams show the
486     sensitivities (derivatives) of the solid freshwater export $J$ through LS
487 dimitri 1.33 (\reffig{sverdrupbasin}) with respect to
488 dimitri 1.47 ice thickness ($hc$, top), to ice and ocean surface temperature
489     (SST, middle), and to
490     precipitation ($p$, bottom) for free-slip (left) and for no-slip
491 heimbach 1.42 (right) boundary conditions.
492     $J$ was integrated over the last year (period above
493     green line). A precipitation perturbation during
494     Apr. 1st. 1991 (dash-dottel line) or Nov. 1st 1991 (dashed line)
495 heimbach 1.46 leads to a positive or negative
496 heimbach 1.42 export anomaly, respectively.
497     Contours are of the normalized ice strength $P/P^*$.
498     Bars in the longitude axis indicates the flux gate at 82$^{\circ}$W.
499 dimitri 1.33 \label{fig:lancasteradj}}
500     \end{figure*}
501    
502 heimbach 1.2 The temporal evolution of several ice export sensitivities
503     along a zonal axis through
504 heimbach 1.42 LS, Barrow Strait, and Melville Sound (115\degW\ to
505 dimitri 1.25 80\degW, averaged across the passages) are depicted in \reffig{lancasteradj}
506 dimitri 1.47 as Hovmoeller-type diagrams, that is, as two-dimensional plots of sensitivities
507     as a function of longitude and time.
508 dimitri 1.25 Serving as examples for the ocean, sea-ice, and atmospheric forcing components
509 mlosch 1.12 %In order to represent sensitivities to elements of the state of
510 dimitri 1.25 of the model, we depict, from top to bottom, the
511 heimbach 1.37 sensitivities to ice thickness ($hc$),
512 dimitri 1.47 to ice and ocean surface temperature (SST),
513     and to precipitation ($p$) for free-slip
514     (left column) and for no-slip (right column) ice drift boundary conditions.
515     The green line marks the starting time (1 Oct. 1992) of the 12-month ice
516     export objective function integration (Eqn. 1).
517 heimbach 1.39 Also indicated are times when a perturbation in precipitation
518 heimbach 1.42 leads to a positive (Apr. 1991) or to a negative (Nov. 1991) ice export
519 heimbach 1.39 anomaly (see also Fig. \ref{fig:lancpert}).
520 heimbach 1.42 Each plot is overlaid with contours 1 and 3 of the normalized ice strength
521     $P/P^*=(hc)\,\exp[-C\,(1-c)]$.
522 heimbach 1.1
523 heimbach 1.39 The Hovmoeller-type diagrams of ice thickness (top row) and SST
524 heimbach 1.1 (second row) sensitivities are coherent:
525 heimbach 1.42 more ice in LS leads
526 dimitri 1.25 to more export and one way to form more ice is by colder surface
527     temperatures. In the free-slip case the
528 mlosch 1.9 sensitivities spread out in ``pulses'' following a seasonal cycle:
529 heimbach 1.14 ice can propagate eastward (forward in time) and thus sensitivities
530     propagate westward (backwards in time) when the ice strength is low
531 heimbach 1.15 in late summer to early autumn
532 dimitri 1.24 (\reffig{lancasterfwd1}, bottom panels).
533 mlosch 1.12 In contrast, during winter, the sensitivities show little to no
534 dimitri 1.25 westward propagation as the ice is frozen solid and does not move.
535 heimbach 1.46 In the no-slip case the normalized
536 heimbach 1.1 ice strength does not fall below 1 during the winters of 1991 to 1993
537     (mainly because the ice concentrations remain near 100\%, not
538     shown). Ice is therefore blocked and cannot drift eastwards
539     (forward in time) through the Viscount
540 heimbach 1.42 Melville Sound, Barrow Strait, and LS channel system.
541 heimbach 1.14 Consequently, the sensitivities do not propagate westward (backwards in
542 heimbach 1.42 time) and the export through LS is only affected by
543 heimbach 1.1 local ice formation and melting for the entire integration period.
544    
545 dimitri 1.33 \begin{figure*}
546     \centerline{
547 heimbach 1.42 \includegraphics*[height=.85\textheight]{\fpath/lancaster_fwd_1-line}
548 dimitri 1.33 }
549 heimbach 1.39 \caption{Hovmoeller-type diagrams along the axis of Viscount Melville
550 heimbach 1.42 Sound, Barrow Strait, and LS. The diagrams show ice
551 dimitri 1.47 thickness ($hc$, top), snow thickness ($h_{s}c$, middle), and
552 heimbach 1.42 normalized ice strength ($P/P^*$, bottom) for
553 dimitri 1.47 free-slip (left) and for no-slip (right) sea ice boundary
554 dimitri 1.33 conditions. For orientation, each plot is overlaid with contours 1 and 3
555 heimbach 1.41 of the normalized ice strength.
556     Green line is as in Fig. \ref{fig:lancasteradj}.
557 dimitri 1.33 \label{fig:lancasterfwd1}}
558     \end{figure*}
559    
560 heimbach 1.14 It is worth contrasting the sensitivity
561 dimitri 1.25 diagrams of \reffig{lancasteradj}
562 heimbach 1.39 with the Hovmoeller-type diagrams of the corresponding state variables
563 dimitri 1.25 (Figs.~\ref{fig:lancasterfwd1} and \ref{fig:lancasterfwd2}).
564     The sensitivities show clear causal connections of ice motion
565     over the years, that is, they expose the winter arrest and the summer
566     evolution of the ice. These causal connections cannot
567 heimbach 1.39 easily be inferred from the Hovmoeller-type diagrams of ice and snow
568 dimitri 1.25 thickness. This example illustrates the usefulness and complementary nature
569     of the adjoint variables for investigating dynamical linkages in the
570 heimbach 1.14 ocean/sea-ice system.
571 mlosch 1.12
572 dimitri 1.33 \begin{figure*}
573     \centerline{
574 heimbach 1.42 \includegraphics*[height=.85\textheight]{\fpath/lancaster_fwd_2-line}
575 dimitri 1.33 }
576     \caption{Same as in \reffig{lancasterfwd1} but for SST (top panels), SSS
577 heimbach 1.42 (middle panels), and precipitation minus evaporation plus runoff, $P-E+R$
578 heimbach 1.41 (bottom panels).
579 dimitri 1.33 \label{fig:lancasterfwd2}}
580     \end{figure*}
581 heimbach 1.14
582     The sensitivities to precipitation are more complex.
583 mlosch 1.12 %exhibit a more complex behaviour.
584 heimbach 1.14 To first order, they have an oscillatory pattern
585 mlosch 1.12 with negative sensitivity (more precipitation leads to less export)
586 heimbach 1.15 between roughly September and December and mostly positive sensitivity
587 dimitri 1.25 from January through June (sensitivities are negligible during the summer).
588 mlosch 1.12 %A fairly accurate description would note an oscillatory behaviour:
589     %they are negative (more precipitation leads to less export)
590     %before January (more precisely, between roughly August and December)
591     %and mostly positive after January
592     %(more precisely, January through July).
593 heimbach 1.1 Times of positive sensitivities coincide with times of
594 mlosch 1.12 normalized ice strengths exceeding values of~3.
595 heimbach 1.14 This pattern is broken only immediatly preceding the evaluation
596 heimbach 1.37 period of the ice export objective function in 1992. In contrast to previous
597 dimitri 1.25 years, the sensitivity is negative between January and August~1992
598     and east of 95\degW.
599 heimbach 1.14
600 heimbach 1.46 We attempt to elucidate the mechanisms underlying
601 heimbach 1.14 these precipitation sensitivities
602     in Section \ref{sec:oscillprecip}
603     in the context of forward perturbation experiments.
604 heimbach 1.1
605    
606 heimbach 1.15 %---------------------------------------------------------------------------
607 heimbach 1.8 \subsection{Forward perturbation experiments}
608 mlosch 1.13 \label{sec:forwardpert}
609 heimbach 1.15 %---------------------------------------------------------------------------
610 heimbach 1.1
611 dimitri 1.26 Applying an automatically generated adjoint model
612 mlosch 1.12 %Using an adjoint model obtained via automatic differentiation
613     %and applied
614 dimitri 1.26 under potentially highly nonlinear conditions
615     %, and one generated automatically, relying on AD tools
616     incites the question
617 heimbach 1.14 to what extent the adjoint sensitivities are ``reliable''
618     in the sense of accurately representing forward model sensitivities.
619 mlosch 1.12 Adjoint sensitivities that are physically interpretable provide
620     %Obtaining adjoint fields that are physically interpretable provides
621 dimitri 1.26 a partial answer but an independent, quantitative test is needed to
622 heimbach 1.14 gain confidence in the calculations.
623 mlosch 1.12 %credence to the calculations.
624 dimitri 1.26 Such a verification can be achieved by comparing adjoint-derived gradients
625     with ones obtained from finite-difference perturbation experiments.
626     Specifically, for a control variable $\mathbf{u}$ of interest,
627     we can readily calculate an expected change $\delta J$ in the objective
628     function for an applied perturbation $\mathbf{\delta u}$ over domain $A$
629     based on adjoint sensitivities $\partial J / \partial \mathbf{u}$:
630 heimbach 1.29
631     \begin{linenomath*}
632 heimbach 1.3 \begin{equation}
633     \delta J \, = \, \int_A \frac{\partial J}{\partial \mathbf{u}} \,
634     \mathbf{\delta u} \, dA
635     \label{eqn:adjpert}
636     \end{equation}
637 heimbach 1.29 \end{linenomath*}
638    
639 heimbach 1.46 Alternatively, we can infer the magnitude of the objective perturbation
640     $\delta J$
641 dimitri 1.26 without use of the adjoint. Instead we apply the same perturbation
642     $\mathbf{\delta u}$ to the control space over the same domain $A$ and
643 heimbach 1.37 integrate the forward model. The perturbed objective function is
644 heimbach 1.29
645     \begin{linenomath*}
646 heimbach 1.3 \begin{equation}
647     \delta J \, = \,
648 dimitri 1.26 J(\mathbf{u}+\mathbf{\delta u}) - J(\mathbf{u}).
649 heimbach 1.3 \label{eqn:fdpert}
650     \end{equation}
651 heimbach 1.29 \end{linenomath*}
652    
653 dimitri 1.26 The degree to which Eqns.~(\ref{eqn:adjpert}) and (\ref{eqn:fdpert}) agree
654 dimitri 1.28 depends both on the magnitude of perturbation $\mathbf{\delta u}$
655 dimitri 1.26 and on the length of the integration period.
656     %(note that forward and adjoint models are evaluated over the same period).
657    
658     We distinguish two types of adjoint-model tests. First there are finite
659     difference tests performed over short time intervals,
660     over which the assumption of linearity is expected to hold,
661     and where individual elements of the control vector are perturbed.
662 dimitri 1.27 We refer to these tests as gradient checks. Gradient checks are performed
663 dimitri 1.26 on a routine, automated basis for various MITgcm verification setups,
664 dimitri 1.27 including verification setups that exercise coupled ocean and sea ice model
665     configurations. These automated tests insure that updates to the MITgcm
666     repository do not break the differentiability of the code.
667    
668 dimitri 1.33 \begin{table*}
669     \caption{Summary of forward perturbation experiments
670 heimbach 1.37 and comparison of adjoint-based and finite-difference-based objective function
671 dimitri 1.33 sensitivities. All perturbations were applied to a region centered at
672     101.24$^{\circ}$W, 75.76$^{\circ}$N. The reference value for ice and snow
673 heimbach 1.42 export through LS is $J_0$ = 69.6 km$^3/yr$.
674 heimbach 1.37 For perturbations to the time-varying precipitation $p$ the perturbation
675     interval is indicated by $ \Delta t$.
676 dimitri 1.33 }
677     \label{tab:pertexp}
678     \centering
679     \begin{tabular}{ccc@{\hspace{2ex}}c@{\hspace{2ex}}cr@{\hspace{2ex}}r@{\hspace{2ex}}r}
680     \hline
681     \textsf{exp.} & variable & time & $\Delta t$ & $\mathbf{\delta u}$ &
682     $\frac{\delta J(adj.)}{km^3/yr}$ & $\frac{\delta J(fwd.)}{km^3/yr}$ &
683     \% diff. \\
684     \hline \hline
685     \textsf{ICE1} & $hc$ & 1-Jan-89 & init. & 0.5 m & 0.98 & 1.1 & 11 \\
686     \textsf{OCE1} & SST & 1-Jan-89 & init. & 0.5$^{\circ}$C & -0.125 & -0.108 & 16 \\
687     \textsf{ATM1} & $p$ & 1-Apr-91 & 10 dy & 1.6$\cdot10^{-7}$ m/s & 0.185 & 0.191 & 3 \\
688 heimbach 1.42 \textsf{ATM2} & $p$ & 1-Nov-91 & 10 dy & 1.6$\cdot10^{-7}$ m/s & -0.435 & -1.016 & 57 \\
689 dimitri 1.33 \textsf{ATM3} & $p$ & 1-Apr-91 & 10 dy & -1.6$\cdot10^{-7}$ m/s & -0.185 & -0.071 & 62 \\
690 heimbach 1.42 \textsf{ATM4} & $p$ & 1-Nov-91 & 10 dy & -1.6$\cdot10^{-7}$ m/s & 0.435 & 0.259 & 40 \\
691 dimitri 1.33 \hline
692     \end{tabular}
693     \end{table*}
694    
695 dimitri 1.28 A second type of adjoint-model tests is
696     finite difference tests performed over longer time intervals
697     % comparable to the ones used for actual sensitivity studies such as this one,
698     and where a whole area is perturbed, guided by the adjoint sensitivity maps,
699 heimbach 1.15 in order to investigate physical mechanisms.
700 dimitri 1.28 The examples discussed herein and summarized in Table \ref{tab:pertexp}
701     are of this second type of sensitivity experiments.
702     For nonlinear models, the deviations between Eqns.~(\ref{eqn:adjpert}) and
703     (\ref{eqn:fdpert}) are expected to increase both with
704 heimbach 1.3 perturbation magnitude as well as with integration time.
705    
706 dimitri 1.33 \begin{figure}
707     %\centerline{
708     \subfigure %[$hc$]
709 heimbach 1.41 {\includegraphics*[width=.49\textwidth]{\fpath/lanc_pert_heff-box}}
710 dimitri 1.33
711     \subfigure %[SST]
712 heimbach 1.41 {\includegraphics*[width=.49\textwidth]{\fpath/lanc_pert_theta-box}}
713 dimitri 1.33
714     \subfigure %[$p$]
715 heimbach 1.41 {\includegraphics*[width=.49\textwidth]{\fpath/lanc_pert_precip-box}}
716 dimitri 1.33 %}
717     \caption{
718 heimbach 1.42 Difference in monthly solid freshwater export at 82$^{\circ}$W
719     between perturbed
720 dimitri 1.33 and unperturbed forward integrations. From top to bottom, perturbations
721     are initial ice thickness (\textsf{ICE1} in Table \ref{tab:pertexp}),
722     initial sea-surface temperature (\textsf{OCE1}), and precipitation
723 heimbach 1.41 (\textsf{ATM1} and \textsf{ATM2}). The grey box indicates the period
724 heimbach 1.42 during which the ice export objective function $J$ is integrated,
725     and reflects the integrated anomalies in Table \ref{tab:pertexp}.
726 dimitri 1.33 \label{fig:lancpert}}
727     \end{figure}
728    
729 dimitri 1.26 Comparison between finite-difference and adjoint-derived ice-export
730 dimitri 1.28 perturbations show remarkable agreement for initial value perturbations of
731     ice thickness (\textsf{ICE1}) or sea surface temperature (\textsf{OCE1}).
732 heimbach 1.37 Deviations between perturbed objective function values remain below 16\% (see Table
733 dimitri 1.28 \ref{tab:pertexp}).
734 dimitri 1.24 \reffigure{lancpert} depicts the temporal evolution of
735 heimbach 1.46 perturbed minus unperturbed monthly ice export through LS for initial ice
736 dimitri 1.26 thickness
737 dimitri 1.28 (top panel) and SST (middle panel) perturbations.
738     In both cases, differences are confined to the melting season, during which
739 heimbach 1.41 the ice unlocks and which can lead to significant export.
740     Large differences are seen during (but are not confined to) the period
741     during which the ice export objective function $J$ is integrated (grey box).
742 dimitri 1.28 As ``predicted'' by the adjoint, the two curves are of opposite sign
743 heimbach 1.8 and scales differ by almost an order of magnitude.
744    
745 heimbach 1.15 %---------------------------------------------------------------------------
746 heimbach 1.40 \subsection{Sign change of precipitation sensitivities}
747 heimbach 1.15 \label{sec:oscillprecip}
748     %---------------------------------------------------------------------------
749 heimbach 1.14
750 dimitri 1.28 Our next goal is to explain the sign and magnitude changes through time
751     of the transient precipitation sensitivities.
752     To investigate this, we have carried out the following two perturbation
753     experiments: (i) an experiment labeled \textsf{ATM1}, in which we perturb
754     precipitation over a 10-day period between April 1 and 10, 1991, coincident
755     with a period of positive adjoint sensitivities, and (ii) an experiment
756     labeled \textsf{ATM2}, in which we apply the same perturbation over a 10-day
757 heimbach 1.46 period between November 1 and 10, 1991, coincident with a period of negative
758 dimitri 1.28 adjoint sensitivities.
759 dimitri 1.26 The perturbation magnitude chosen is
760 dimitri 1.30 $\mathbf{\delta u} = 1.6 \times 10^{-7}$ m/s, which is
761     of comparable magnitude with the standard deviation of precipitation.
762     %as a measure of spatial mean standard deviation of precipitation
763     %variability. The results are as follows: First
764     The perturbation experiments confirm the sign change
765 heimbach 1.8 when perturbing in different seasons.
766 dimitri 1.30 We observe good quantitative agreement for the April 1991 case
767 heimbach 1.46 and a 50\% deviation for the November 1991 case.
768 heimbach 1.8 %
769 dimitri 1.31 The discrepancy between the finite-difference and adjoint-based sensitivity
770     estimates results from model nonlinearities and from the multi-year
771     integration period.
772     To support this statement, we repeated perturbation experiments \textsf{ATM1}
773     and \textsf{ATM2} but applied a perturbation with opposite sign, i.e.,
774     $\mathbf{\delta u} = -1.6 \times 10^{-7}$ m/s (experiments \textsf{ATM3} and
775     \textsf{ATM4} in Table \ref{tab:pertexp}).
776     For negative $\mathbf{\delta u}$, both perturbation periods lead to about
777 dimitri 1.30 50\% discrepancies between finite-difference and adjoint-derived
778 dimitri 1.31 ice export sensitivities.
779 mlosch 1.12 %
780 dimitri 1.31 The finite-difference export changes are different in amplitude for positive
781 heimbach 1.46 and for negative perturbations, confirming that model nonlinearities
782     start to impact these calculations.
783 dimitri 1.31
784     These experiments constitute severe tests of the adjoint model in the sense
785     that they push the limit of the linearity assumption. Nevertheless, the
786 heimbach 1.46 results confirm that adjoint sensitivities provide useful qualitative, and,
787     within certain limits, quantitative
788 dimitri 1.31 information of comprehensive model sensitivities that
789     cannot realistically be computed otherwise.
790 heimbach 1.3
791 heimbach 1.15 \begin{figure*}
792     \centerline{
793 heimbach 1.42 \includegraphics*[width=.95\textwidth]{\fpath/lancaster_pert_hov-line}
794 heimbach 1.15 }
795     \caption{
796 dimitri 1.33 Same as in \reffig{lancasterfwd1} but restricted to the period
797     1991--1993 and for the differences
798 heimbach 1.41 in (from top to bottom)
799 heimbach 1.37 ice thickness $(hc)$, snow thickness $(h_\mathrm{snow}c)$, sea-surface
800     temperature (SST), and shortwave radiation (for completeness)
801 heimbach 1.41 between a perturbed and unperturbed run in precipitation of
802 heimbach 1.42 $1.6\times10^{-1}\text{\,m\,s$^{-1}$}$ on November 1, 1991 (left panels)
803     and on April 1, 1991 (right panels). The vertical line marks the position
804     where the perturbation was applied.
805 heimbach 1.15 \label{fig:lancasterperthov}}
806     \end{figure*}
807 heimbach 1.14
808 dimitri 1.31 To investigate in more detail the oscillatory behavior of precipitation
809     sensitivities
810 heimbach 1.14 we have plotted differences in ice thickness, snow thicknesses, and SST,
811     between perturbed and unperturbed simulations
812 heimbach 1.42 along the LS axis as a function of time.
813 dimitri 1.24 \reffigure{lancasterperthov} shows how the
814 dimitri 1.31 small localized perturbations of precipitation are propagated,
815 heimbach 1.46 depending on whether applied during \textit{early} winter
816     (November, left column)
817     or \textit{late} winter (April, right column).
818 mlosch 1.20 More precipation
819 heimbach 1.21 leads to more snow on the ice in all cases.
820     However, the same perturbation in different
821 heimbach 1.29 seasons has an opposite effect on the solid freshwater export
822 heimbach 1.42 through LS.
823 dimitri 1.31 Both the adjoint and the perturbation results suggest the following
824 heimbach 1.14 mechanism to be at play:
825 mlosch 1.20 %ML: why not let LaTeX do it? Elsevier might have it's own layout
826     \begin{itemize}
827     \item
828 heimbach 1.14 More snow in November (on thin ice) insulates the ice by reducing
829     the effective conductivity and thus the heat flux through the ice.
830     This insulating effect slows down the cooling of the surface water
831     underneath the ice. In summary, more snow early in the winter limits the ice growth
832     from above and below (negative sensitivity).
833 mlosch 1.20 \item
834 heimbach 1.14 More snow in April (on thick ice) insulates the
835     ice against melting.
836 dimitri 1.34 Shortwave radiation cannot penetrate the snow cover and snow has
837 heimbach 1.14 a higher albedo than ice (0.85 for dry snow and 0.75 for dry ice in our
838 dimitri 1.31 simulations); thus it protects the ice against melting in the spring,
839 heimbach 1.46 more specifically, after January, and it may lead to more ice in the
840 heimbach 1.14 following growing season.
841 mlosch 1.20 \end{itemize}
842     % \\ $\bullet$
843     % More snow in November (on thin ice) insulates the ice by reducing
844     % the effective conductivity and thus the heat flux through the ice.
845     % This insulating effect slows down the cooling of the surface water
846     % underneath the ice. In summary, more snow early in the winter limits the ice growth
847     % from above and below (negative sensitivity).
848     % \\ $\bullet$
849     % More snow in April (on thick ice) insulates the
850     % ice against melting.
851     % Short wave radiation cannot penetrate the snow cover and has
852     % a higher albedo than ice (0.85 for dry snow and 0.75 for dry ice in our
853     % case); thus it protects the ice against melting in spring
854     % (more specifically, after January), and leads to more ice in the
855     % following growing season.
856 heimbach 1.14
857 dimitri 1.31 A secondary effect is the
858     accumulation of snow, which increases the exported volume.
859     The feedback from SST appears to be negligible because
860 heimbach 1.14 there is little connection of anomalies beyond a full seasonal cycle.
861    
862 dimitri 1.31 We note that the effect of snow vs rain seems to be irrelevant
863     in explaining positive vs negative sensitivity patterns.
864     In the current implementation, the model differentiates between
865     snow and rain depending on the thermodynamic growth rate of sea ice; when it
866     is cold enough for ice to grow, all precipitation is assumed to be
867 heimbach 1.14 snow. The surface atmospheric conditions most of the year in the Lancaster
868 dimitri 1.31 Sound region are such that almost all precipitation is treated as snow,
869     except for a short period in July and August; even then, air
870 heimbach 1.14 temperatures are only slightly above freezing.
871    
872     Finally, the negative sensitivities to precipitation between 95\degW\ and
873 dimitri 1.31 85\degW\ during the spring of 1992, which break the oscillatory pattern,
874 heimbach 1.15 may also be explained by the presence of
875     snow: in an area of large snow accumulation
876 dimitri 1.31 (almost 50\,cm: see \reffig{lancasterfwd1}, middle panel),
877     ice cannot melt and it
878 heimbach 1.14 tends to block the channel so that ice coming from the West cannot
879 dimitri 1.31 pass, thus leading to less ice export in the next season.
880 heimbach 1.14 %
881     %\ml{PH: Why is this true for 1992 but not 1991?}
882 dimitri 1.31 The reason why this is true for the spring of 1992 but not for the spring of
883     1991 is that by then the high
884 heimbach 1.14 sensitivites have propagated westward out of the area of thick
885     snow and ice around 90\degW.
886 mlosch 1.13
887 heimbach 1.1 %(*)
888     %The sensitivity in Baffin Bay are more complex.
889     %The pattern evolves along the Western boundary, connecting
890 heimbach 1.42 %the LS Polynya, the Coburg Island Polynya, and the
891 heimbach 1.1 %North Water Polynya, and reaches into Nares Strait and the Kennedy Channel.
892     %The sign of sensitivities has an oscillatory character
893     %[AT FREQUENCY OF SEASONAL CYCLE?].
894     %First, we need to establish whether forward perturbation runs
895     %corroborate the oscillatory behaviour.
896     %Then, several possible explanations:
897     %(i) connection established through Nares Strait throughflow
898     %which extends into Western boundary current in Northern Baffin Bay.
899     %(ii) sea-ice concentration there is seasonal, i.e. partly
900     %ice-free during the year. Seasonal cycle in sensitivity likely
901 dimitri 1.31 %connected to ice-free vs ice-covered parts of the year.
902 heimbach 1.1 %Negative sensitivities can potentially be attributed
903 heimbach 1.42 %to blocking of LS ice export by Western boundary ice
904 heimbach 1.1 %in Baffin Bay.
905 heimbach 1.42 %(iii) Alternatively to (ii), flow reversal in LS is a possibility
906 heimbach 1.1 %(in reality there's a Northern counter current hugging the coast of
907     %Devon Island which we probably don't resolve).
908    
909 heimbach 1.42 %Remote control of Kennedy Channel on LS ice export
910 dimitri 1.31 %seems a nice test for appropriateness of free-slip vs no-slip BCs.
911 heimbach 1.1
912     %\paragraph{Sensitivities to the sea-ice area}
913    
914 dimitri 1.24 %\refigure{XXX} depicts transient sea-ice export sensitivities
915 heimbach 1.1 %to changes in sea-ice concentration
916     % $\partial J / \partial area$ using free-slip
917     %(left column) and no-slip (right column) boundary conditions.
918     %Sensitivity snapshots are depicted for (from top to bottom)
919     %12, 24, 36, and 48 months prior to May 2003.
920     %Contrary to the steady patterns seen for thickness sensitivities,
921     %the ice-concentration sensitivities exhibit a strong seasonal cycle
922     %in large parts of the domain (but synchronized on large scale).
923     %The following discussion is w.r.t. free-slip run.
924    
925     %(*)
926     %Months, during which sensitivities are negative:
927     %\\
928     %0 to 5 Db=N/A, Dr=5 (May-Jan) \\
929     %10 to 17 Db=7, Dr=5 (Jul-Jan) \\
930     %22 to 29 Db=7, Dr=5 (Jul-Jan) \\
931     %34 to 41 Db=7, Dr=5 (Jul-Jan) \\
932     %46 to 49 D=N/A \\
933     %%
934     %These negative sensitivities seem to be connected to months
935     %during which main parts of the CAA are essentially entirely ice-covered.
936     %This means that increase in ice concentration during this period
937     %will likely reduce ice export due to blocking
938     %[NEED TO EXPLAIN WHY THIS IS NOT THE CASE FOR dJ/dHEFF].
939     %Only during periods where substantial parts of the CAA are
940     %ice free (i.e. sea-ice concentration is less than one in larger parts of
941     %the CAA) will an increase in ice-concentration increase ice export.
942    
943     %(*)
944     %Sensitivities peak about 2-3 months before sign reversal, i.e.
945     %max. negative sensitivities are expected end of July
946     %[DOUBLE CHECK THIS].
947    
948     %(*)
949     %Peaks/bursts of sensitivities for months
950     %14-17, 19-21, 27-29, 30-33, 38-40, 42-45
951    
952     %(*)
953 mlosch 1.9 %Spatial ``anti-correlation'' (in sign) between main sensitivity branch
954 heimbach 1.1 %(essentially Northwest Passage and immediate connecting channels),
955     %and remote places.
956     %For example: month 20, 28, 31.5, 40, 43.
957     %The timings of max. sensitivity extent are similar between
958     %free-slip and no-slip run; and patterns are similar within CAA,
959     %but differ in the Arctic Ocean interior.
960    
961     %(*)
962     %Interesting (but real?) patterns in Arctic Ocean interior.
963    
964     %\paragraph{Sensitivities to the sea-ice velocity}
965    
966     %(*)
967     %Patterns of ADJuice at almost any point in time are rather complicated
968     %(in particular with respect to spatial structure of signs).
969     %Might warrant perturbation tests.
970     %Patterns of ADJvice, on the other hand, are more spatially coherent,
971     %but still hard to interpret (or even counter-intuitive
972     %in many places).
973    
974     %(*)
975 mlosch 1.9 %``Growth in extent of sensitivities'' goes in clear pulses:
976 heimbach 1.1 %almost no change between months: 0-5, 10-20, 24-32, 36-44
977     %These essentially correspond to months of
978    
979    
980     %\subsection{Sensitivities to the oceanic state}
981    
982     %\paragraph{Sensitivities to theta}
983    
984     %\textit{Sensitivities at the surface (z = 5 m)}
985    
986     %(*)
987     %mabye redo with caxmax=0.02 or even 0.05
988    
989     %(*)
990     %Core of negative sensitivities spreading through the CAA as
991     %one might expect [TEST]:
992     %Increase in SST will decrease ice thickness and therefore ice export.
993    
994     %(*)
995     %What's maybe unexpected is patterns of positive sensitivities
996 dimitri 1.47 %at the fringes of the ``core'', e.g., in the Southern channels
997 heimbach 1.1 %(Bellot St., Peel Sound, M'Clintock Channel), and to the North
998     %(initially MacLean St., Prince Gustav Adolf Sea, Hazen St.,
999     %then shifting Northward into the Arctic interior).
1000    
1001     %(*)
1002     %Marked sensitivity from the Arctic interior roughly along 60$^{\circ}$W
1003     %propagating into Lincoln Sea, then
1004     %entering Nares Strait and Smith Sound, periodically
1005 heimbach 1.42 %warming or cooling[???] the LS exit.
1006 heimbach 1.1
1007     %\textit{Sensitivities at depth (z = 200 m)}
1008    
1009     %(*)
1010     %Negative sensitivities almost everywhere, as might be expected.
1011    
1012     %(*)
1013     %Sensitivity patterns between free-slip and no-slip BCs
1014     %are quite similar, except in Lincoln Sea (North of Nares St),
1015     %where the sign is reversed (but pattern remains similar).
1016    
1017     %\paragraph{Sensitivities to salt}
1018    
1019     %T.B.D.
1020    
1021     %\paragraph{Sensitivities to velocity}
1022    
1023     %T.B.D.
1024    
1025     %\subsection{Sensitivities to the atmospheric state}
1026    
1027     %\begin{itemize}
1028     %%
1029     %\item
1030     %plot of ATEMP for 12, 24, 36, 48 months
1031     %%
1032     %\item
1033     %plot of HEFF for 12, 24, 36, 48 months
1034     %%
1035     %\end{itemize}
1036    
1037    
1038    
1039 dimitri 1.25 %\reffigure{4yradjheff}(a--d) depict sensitivities of sea-ice export
1040 heimbach 1.1 %through Fram Strait in December 1995 to changes in sea-ice thickness
1041     %12, 24, 36, 48 months back in time. Corresponding sensitivities to
1042     %ocean surface temperature are depicted in
1043     %\reffig{4yradjthetalev1}(a--d). The main characteristics is
1044     %consistency with expected advection of sea-ice over the relevant time
1045     %scales considered. The general positive pattern means that an
1046     %increase in sea-ice thickness at location $(x,y)$ and time $t$ will
1047     %increase sea-ice export through Fram Strait at time $T_e$. Largest
1048     %distances from Fram Strait indicate fastest sea-ice advection over the
1049     %time span considered. The ice thickness sensitivities are in close
1050     %correspondence to ocean surface sentivitites, but of opposite sign.
1051     %An increase in temperature will incur ice melting, decrease in ice
1052     %thickness, and therefore decrease in sea-ice export at time $T_e$.
1053    
1054     %The picture is fundamentally different and much more complex
1055     %for sensitivities to ocean temperatures away from the surface.
1056 dimitri 1.25 %\reffigure{4yradjthetalev10??}(a--d) depicts ice export sensitivities to
1057 heimbach 1.1 %temperatures at roughly 400 m depth.
1058     %Primary features are the effect of the heat transport of the North
1059     %Atlantic current which feeds into the West Spitsbergen current,
1060     %the circulation around Svalbard, and ...
1061    
1062    
1063     %%\begin{figure}[t!]
1064     %%\centerline{
1065     %%\subfigure[{\footnotesize -12 months}]
1066     %%{\includegraphics*[width=0.44\linewidth]{\fpath/run_4yr_ADJheff_arc_lev1_tim072_cmax2.0E+02.eps}}
1067     %%\includegraphics*[width=.3\textwidth]{H_c.bin_res_100_lev1.pdf}
1068     %%
1069     %%\subfigure[{\footnotesize -24 months}]
1070     %%{\includegraphics*[width=0.44\linewidth]{\fpath/run_4yr_ADJheff_arc_lev1_tim145_cmax2.0E+02.eps}}
1071     %%}
1072     %%
1073     %%\caption{Sensitivity of sea-ice export through Fram Strait in December 2005 to
1074     %%sea-ice thickness at various prior times.
1075     %%\label{fig:4yradjheff}}
1076     %%\end{figure}
1077    
1078    
1079     %\ml{[based on the movie series
1080     % zzz\_run\_export\_canarch\_freeslip\_4yr\_1989\_ADJ*:]} The ice
1081     %export through the Canadian Archipelag is highly sensitive to the
1082     %previous state of the ocean-ice system in the Archipelago and the
1083     %Western Arctic. According to the \ml{(adjoint)} senstivities of the
1084 heimbach 1.42 %eastward ice transport through LS (\reffig{sverdrupbasin})
1085 dimitri 1.19 %with respect to ice volume (thickness), ocean
1086 heimbach 1.1 %surface temperature, and vertical diffusivity near the surface
1087     %(\reffig{fouryearadj}) after 4 years of integration the following
1088     %mechanisms can be identified: near the ``observation'' (cross-section
1089     %G), smaller vertical diffusivities lead to lower surface temperatures
1090     %and hence to more ice that is available for export. Further away from
1091     %cross-section G, the sensitivity to vertical diffusivity has the
1092     %opposite sign, but temperature and ice volume sensitivities have the
1093     %same sign as close to the observation.
1094    
1095    
1096 mlosch 1.9
1097 heimbach 1.1 %%% Local Variables:
1098     %%% mode: latex
1099 mlosch 1.9 %%% TeX-master: "ceaice_part2"
1100 heimbach 1.1 %%% End:

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