1. Introduction
Ground-based and airborne radar surveys are gradually revealing more of the internal structure of the Antarctic and Greenland ice sheets. Whether imaging firn or ice down to the bed, they show the widespread existence of layered reflections that can be traced over long distances, often hundreds of kilometres. ‘Radar layers’ interpreted as isochronal (of equal age) can extend information from ice cores laterally, and their geometry may be deciphered for ice-sheet history.
In the firn within the top 100m or so below the surface, the internal stratigraphy is shaped by snow accumulation, firn compaction, and lateral advection by the underlying ice flow. Recent studies have linked the radar-detected layers here to density contrasts associated with thin layers of hoar or ice (Reference Arcone, Spikes, Hamilton and MayewskiArcone and others, 2004) and shown that they are isochronal, making it possible to estimate the pattern of past accumulation rates from the depth of the layers, after their age and the firn density–depth profile have been established by firn-core analysis (e.g. Reference Spikes, Hamilton, Arcone, Kaspari and MayewskiSpikes and others, 2004; Reference Anschütz, Steinhage, Eisen, Oerter, Horwath and RuthAnschütz and others, 2008). On a length scale of kilometres, the layers often undulate richly in character (e.g. Fig. 1a) due to the advective ice flow combined with non-uniform surface accumulation, the latter potentially reflecting influence by surface topography on the precipitation of snow and its redistribution by wind (Reference King, Anderson, Vaughan, Mann, Mobbs and VosperKing and others, 2004; Reference Spikes, Hamilton, Arcone, Kaspari and MayewskiSpikes and others, 2004; Reference Frezzotti, Urbini, Proposito, Scarchilli and GandolfiFrezzotti and others, 2007). The layer undulations thus record a spatially variable history of surface mass balance, which may be reconstructed by numerical inverse methods (Reference EisenEisen, 2008), as has been done with isochrones deep in the ice (Reference Nereson, Raymond, Jacobel and WaddingtonNereson and others, 2000; Reference Waddington, Neumann, Koutnik, Marshall and MorseWaddington and others, 2007; Reference KoutnikKoutnik, 2009).
As the radargram in Figure 1a shows, the pattern of isochrones in the firn can be extremely striking. Their undulations can look organized yet irregular, portraying fold-like structures that migrate with depth. Previous authors have reported these structures and simulated them numerically with forward models of layer-shape evolution (Reference King, Morse, Alley, Anandakrishnan, Blankenship and SmithKing and others, 2002; Reference Arcone, Spikes and HamiltonArcone and others, 2005; Reference Gray, King, Conway, Smith and NgGray and others, 2005; Reference Woodward and KingWoodward and King, 2009), but these efforts have not gone beyond matching the observed patterns to derive comprehensive insights about their development. A fascinating hypothesis is that some fundamental mechanisms govern the folded layer architecture – however variable and complex it may seem. Here we explore this hypothesis by an analytical approach, in order to uncover the mechanisms and understand how the layer pattern encodes the system’s forcings (ice-flow velocity and surface accumulation rate). The results should aid glaciologists seeking visual interpretation of radargrams.
In our theory below, we view the layer undulations as waveforms and use the terminology of geological folds to describe their configuration on the radargram. This is despite the fact that the undulations are not ‘folds’ in the geological sense of having been created by force-bearing deformation in the stratigraphy, but kinematic waves resulting from differential mass transport (Reference WhithamWhitham, 1974). To keep things simple, we strip the problem to bare essentials and treat only two-dimensional (2-D) radar cross sections aligned with the ice flow. Steady forcings are assumed to enable insights into the mechanism of pattern formation. Accordingly, we emphasize that our theory is not meant for reconstructing time-variable forcings from layer patterns (the reader is referred to the papers by Reference Waddington, Neumann, Koutnik, Marshall and MorseWaddington and others (2007) and Reference EisenEisen (2008) for this important subject), although we will see that its use to interpret radargrams can reveal past unsteadiness. A key variable in our analysis is the slope of isochrones, which featured in an earlier theory (Reference Parrenin and HindmarshParrenin and Hindmarsh, 2007) for the shape of deep radar layers in incompressible ice below the firn, down to the ice-sheet bed. While Parrenin and Hindmarsh’s (2007) description shares common ground with ours, it addresses considerably more complex ice-flow fields than ours where internal deformation and the effect of basal topography are significant. The flavour of our present study is also different because we account for firn densification and focus on the structural interpretation of radargrams based on their assembly of layer slopes, folds and fold hinges; both synthetic and real radargrams are examined below. Thus we provide the mathematical foundation for extending the work of Reference Arcone, Spikes and HamiltonArcone and others (2005), who first seriously characterized layer folds as they appear on radargrams of firn where lateral ice flow is significant.
The outline of this paper is as follows. We give the analytic theory in Section 2, where we formulate equations for key mechanisms and consider what they predict for the layer morphology. This material is framed mainly with the ‘forward’ problem in mind: how forcings translate into patterns. In Section 3 we then turn to two case studies, where our focus shifts to the interpretation of radargrams and the ‘inverse’ problem of extracting the forcings from them. We propose a new inversion method based on subtracting the depth of isochrones, an approach that involves optimization but that differs from formal inverse methods (in which the forward model is optimized to fit observed layers; e.g. Reference EisenEisen, 2008). In Section 3.3, our inversion method is applied to the radargram in Figure 1a, from Bindschadler Ice Stream, West Antarctica, and we discuss the glaciological implications of the results. Conclusions follow in Section 4.
2. Mathematical Theory
2.1. Formulation
Consider a vertical cross section of firn, taken in the ice-flow direction, x. The firn moves in this direction at velocity u(x, t) due to the underlying ice motion and receives surface accumulation at rate a(x, t), where t is time (see Fig. 2). Let z(x, t) denote the depth of an isochronal layer or ‘isochrone’ below the surface. This coordinate ignores variations in surface elevation so that plotting z against x shows the isochrone under a flat horizon, as in Figure 1a. Our analysis of layer geometry considers also the slope of isochrones, the hinges occurring on them, the loci of these hinges (called hinge lines) and the migration velocity associated with hinge lines. Figure 2 introduces these terms, which are explained in more detail as the theory develops.
As each firn column translates, it receives surface accumulation but stretches or compresses laterally due to gradients of u. If we assume the rate of submergence at any depth to equal the surface burial rate a (expressed as a velocity), then a layer in the column deepens at the rate dz/dt (≡∂z/∂t + u∂z/∂x) = a – z∂u/∂x; thus an isochrone evolves according to the partial differential equation
This kinematic description assumes plane strain (zero flux in the y-direction and infinitely wide flow) and incompressibility for the firn. If necessary, the firn density can be used to convert the units of a to kgm−2 a−1or to mw.e.a−1.
Throughout this paper, u and a are taken as functions of x only, not of time t. In the resulting steady flow, isochrones of different ages form a stationary pattern, in the sense that each isochrone deforms into the shape of successively older (and deeper) isochrones as it evolves in time. It is therefore possible to construct the entire pattern of isochrones by tracking the evolution of a single isochrone that lies initially at the surface. In this context, the variable t takes the meaning of the age of the isochrones.
Equation (1) is simplistic because it ignores firn densification, which is clearly important in the depth range of interest. While this process does not fundamentally cause isochrones to undulate (we shall see a justification shortly), it affects their depth. Compaction of the firn under its own weight occurs at a rate dependent on rheology, temperature and accumulation rate, resulting in a firn density ρ that increases nonlinearly with depth (e.g. Reference Herron and LangwayHerron and Langway, 1980; Reference Arthern, Vaughan, Rankin, Mulvaney and ThomasArthern and others, 2010). This causes material at depth to experience a submergence rate less than a. As the isochrones deepen, their shape retains a history of differential submergence caused by spatial variations in a, but densification reduces their mean separation.
In order to account for firn densification in tracking isochrones, several authors (Reference Arcone, Spikes and HamiltonArcone and others, 2005; Reference EisenEisen, 2008; Reference Woodward and KingWoodward and King, 2009) have posited a depth-dependent submergence rate, scaled to the local accumulation rate by the density–depth profile ρ(z), which is assumed invariant across the radargram. Specifically, Sorge’s law (Reference BaderBader, 1954) then gives the submergence rate as ρ 0 a/ρ(z), where ρ 0 is the firn surface density. Assuming steady forcings as before, we use these assumptions to formulate the mass-conservation equation
of which Equation (1) is now the special case ρ(z) ≡ ρ 0.
Although Equation (2) is a more complicated model of isochrone evolution than Equation (1), it can be put in the same form as the latter by the change of variable
which yields
The densification description adopted by us here (and by the aforementioned authors) thus merely introduces a depth correction that is uniform horizontally, implying that densification does not cause isochrones to undulate. However, in Section 4 we discuss caveats concerning this description that lead us to rethink its validity. The issues concern the assumption that ρ is invariant with x, which affects not only Equation (2) but also the practice of compiling radargrams, where it is common to use wave-speed data from a few horizontal positions (obtained via common-midpoint surveys, as in Fig. 1a, or via ρ in firn cores) to convert radar time traces to depth at all horizontal positions.
We proceed with Equation (4) and first show that it can be simplified to a canonical form for any spatially non-uniform flow velocity u(x)>0. Define the ‘transformed depth’ variable Z(x, t) = u(x)f(x, t)/u 0, where u 0 = u(x)=0) is a constant reference velocity, here taken at the up-flow end of our domain. Then Equation (4) becomes
and changing the variable x to X (‘transformed distance’) with
yields the canonical kinematic wave equation
Some radar surveys have been made where u increases along flow, for example in the onset zones of ice streams, where we may suppose a linear velocity model
in this case Z = (1 + kx)f and Equation (6) leads to
and
In the rest of this paper, we analyse the problem in the transformed coordinates and use lower-case symbols for them (write x for X, z for Z and a for A) for convenience, with the understanding that reduction to the canonical form has been made and that we are referring to transformed layer geometries unless we indicate otherwise. Then Equation (7) becomes
It is this simple wave equation that ultimately governs the spatial structure of the layer folds. Notice if a(x) and u 0 are multiplied by the same factor, t can always be rescaled to recover the original equation; this means that different forcings with the same ratio a(x)/u 0 generate the same isochrone pattern. Such non-uniqueness does not alter our findings on the pattern-formation mechanism below, but matters in inversions for the forcings from the layers (we shall see an example of such inversion in Section 3.3).
2.2. Propagation of information
Wave Equation (10) can be solved exactly by the method of characteristics (Reference Carrier and PearsonCarrier and Pearson, 1988) to give
along the characteristic line or ‘characteristic’
Here d/dt is the total derivative, and Equations (11) and (12) track the positions of material points (x, z) parametrically. Material at position x on an isochrone aged t had the initial position x 0 at the surface when t = 0. As it moves down-glacier at velocity u 0, it deepens at a rate determined by the local accumulation rate (the use of transformed coordinates already accounts for the effects of densification and longitudinal flow extension/compression). Its z-value thus travels and varies along the characteristic. Figure 3 shows this idea on the x–t plane (distance–age domain), where isochrones are lines of constant t. Note that in this paper, t refers always to time or age, and not to the two-way travel time in the geophysical measurement of radar traces.
Now, integrating Equation (11) with x taken from Equation (12) and with the initial condition z = 0 at t = 0, yields the explicit solution
(we have used the substitution ζ = x 0 + u 0 τ), which calculates each material particle’s depth from the total overlying accumulation that it accrued as it travelled the horizontal distance u 0 t to its current position. While z evaluated with Equation (13) at a given time describes an isochrone’s shape, z(x, t) can be portrayed generally as a three-dimensional (3-D) surface over the x–t plane. Isochrones on a radargram are projections of fixed-time samples of this surface onto the x–z plane.
A key insight in this paper is that the slope of isochrones also obeys a kinematic wave equation. Let s = ∂z/∂x be the isochrone slope (Fig. 2). Since z is referenced to the surface and z and x are transformed depth and distance, s is not the true slope against the horizontal, but related to it. Differentiating Equation (10) with respect to x gives
where b is the spatial gradient of the surface accumulation rate. Both this wave equation and Equation (10) apply at positions x where a is differentiable (we assume this to be the case throughout our analysis), including where a changes smoothly from accumulation (a > 0) to ablation (a < 0). However, note that a < 0 causes unconformity in the stratigraphy by removing parts of isochrones and making them discontinuous.
Solving Equation (14) with the method of characteristics yields
which describes how isochrone slope varies along the same characteristics (as in Equation (12)) in response to the overlying accumulation rate gradient. The corresponding integral solution satisfying s = 0 at t = 0 (the surface isochrone is ‘flat’) is
Hence we may also regard s(x, t) as a continuous surface over the x–t plane – we call this the ‘slope surface’ (Fig. 4) – with fixed-time samples of it representing the slope variation of individual isochrones. And since slope information propagates on the x–t plane, we may consider how s varies across the radargram (x–z plane). These ideas help us understand the spatial structure of layer folding and are explored further in Section 2.4. The solutions above may in principle be found in the untransformed coordinates, but with much more algebra.
2.3. Retrieving surface accumulation rate
Before turning to the folds, we use Equation (13) to establish two ways of extracting the accumulation rate pattern from isochrones that we build upon later. As with Equation (13), the following results rest on the steady-flow assumption and we are working in the transformed coordinates.
Method I is called ‘shift-differencing’. Consider an isochrone aged t and a slightly deeper, older isochrone aged t + δt. Shift these isochrones down-glacier and up-glacier, respectively, by the distance u 0 δt/2, then subtract their depths. Equation (13) shows that
Therefore, a at position x can be found by subtracting the depth of the younger isochrone at x − u 0 δt/2 from the depth of the older isochrone at x + u 0 δt/2, and dividing the result by δtt. This method of estimating the accumulation rate pattern a(x) avoids recasting Equation (4) as a formal inverse problem (e.g. Reference EisenEisen, 2008) and has an error of order δt 2 caused by truncation of higher-order terms in Equation (17).
Method II involves subtracting the depths of the two isochrones without shifting them and also yields information about a. In this case
The new differencing retrieves the accumulation pattern at a distance u 0 t up-glacier, with an error of order δt. If t = 0, the upper isochrone is simply the firn surface, and Equation (18) shows that a(x) can be inferred from a shallow isochrone (e.g. Reference Gray, King, Conway, Smith and NgGray and others, 2005; Reference Woodward and KingWoodward and King, 2009).
Both methods here rely on an isochrone separation small enough to limit truncation errors, but not so small that it becomes dominated by measurement uncertainty in the layer depths. Both methods require the age of isochrones (or at least their age difference) to be known, for example from a dated firn core at the site. As this is not always available, in Section 3.2 we develop a method that could be used without dated layers. Finally, while methods I and II will not work on isochrones that have been made discontinuous by ablation (or wherever z is undefined), they can be used on continuous isochrones that bracket ablation unconformities, as long as the differentiability condition following Equation (14) is satisfied. In this case, shift-differencing the isochrones will make them intersect and retrieve negative as well as positive values of a.
2.4. Structural architecture of layer undulations
Recurrent properties of folded isochrones in the firn have been recognized in numerous flow-aligned radargrams from West Antarctica. It is noticed that the hinge axes of layer folds dip at angles that reflect a migration velocity less than the ice-flow velocity, and that these axes can dip up- as well as down-glacier (Reference King, Morse, Alley, Anandakrishnan, Blankenship and SmithKing and others, 2002; Reference Arcone, Spikes and HamiltonArcone and others, 2005; Reference Gray, King, Conway, Smith and NgGray and others, 2005). By choosing suitable forms of u(x) and a(x), these authors have used numerical models of isochrone evolution to recreate layer patterns and simulate the observed dips. Reference Arcone, Spikes and HamiltonArcone and others (2005), in particular, posed sinuisoidal and Gaussian functions for a(x) to study the controls on the dip. Some radargrams also exhibit folds whose amplitudes increase with depth (Reference Vaughan, Corr, Doake and WaddingtonVaughan and others, 1999, Reference Vaughan, Anderson, King, Mann, Mobbs and Ladkin2004; Reference King, Morse, Alley, Anandakrishnan, Blankenship and SmithKing and others, 2002; Reference Arcone, Spikes and HamiltonArcone and others, 2005; Reference Gray, King, Conway, Smith and NgGray and others, 2005), a property that has been observed on deep radar layers in ice streams (Reference Ng and ConwayNg and Conway, 2004). Examples of the structures described here can be found in Figure 1a.
Given that we know the folds form from the cumulative effect of flow and submergence, what mechanisms govern their structure? And can we understand them without simulation? We advance a theory of folding that invokes the slope surface.
2.4.1. Isochrone slopes on a radargram
A systematic study of folding might begin by identifying the regions of positive and negative isochrone slopes on a radargram. In Figure 1a, for example, separate domains occur where the isochrones descend with distance (s> 0) and where they ascend with distance (s < 0) (remember the slope s = ∂z/∂x and z points downward). On each isochrone, the crests and troughs occur where s = 0; we call these points ‘fold hinges’ (Fig. 2), although geologists reserve the term for points on a layer where it attains maximum curvature. The isochrone curvature (∂s/∂x) at a hinge is negative, positive or zero, respectively, if the hinge lies at the trough of a down-pointing fold (syncline), the crest of an up-pointing fold (anticline) or the saddle of an inflexion fold. Fold limbs are portions of an isochrone that connect neighbouring hinges, and the locus of hinges across adjacent isochrones forms a hinge line (Fig. 2). Hinge lines mark the boundaries between the domains of opposite isochrone slopes. Although we have used the symbols x, z and s loosely in reference to Figure 1a without first transforming its axes, the morphological features considered here can be defined in the same way for transformed radargrams.
Crucially, these features have equivalent representations on the slope surface s(x, t). As Figure 4 shows, hinge lines occur where this surface intersects the horizontal plane s = 0 (they are zero-slope contours), and the domains s > 0 and s < 0 are defined, respectively, by where the surface lies above and below the plane. Thus, like contours on a topographic map, hinge lines are expected to form closed loops unless they meet the edge of the radargram (notably t = z = 0, where s≡0). This is also true for loci that trace any constant value of slope.
The mechanisms determining the distribution of isochrone slopes on a radargram may now be explained. Given the accumulation rate a(x) and flow velocity u 0, slope propagation along characteristics on the x–t plane (Equation (14)) governs the shape of the slope surface s(x, t), which in turn governs the distribution of slopes and position of hinge lines on that plane. If a(x) fluctuates to make b(x) (= da/dx) flip between positive and negative, then Equation (15) predicts s to rise and fall along characteristics, and the slope surface will be wavy, with zero-crossings that form a system of hinge loops (Fig. 4). The final step involves transforming s(x, t) to the radargram domain (the x–zplane), with z(x, t) from Equation (13) telling us at what depth to place each slope value. Accordingly, hinge lines on the radargram are distorted from their counterparts on the x–t plane, but retain the latter’s topology.
An example of mapping between isochrones on the x–z plane and their slopes on the x–t plane is given in Figure 5, where we show selected isochrones of a fold structure from Figure 1a alongside plots of their slope against x. To see how s varies with t, we order these plots to reflect the increasing age of the isochrones with depth (their absolute ages are unknown). The main structure is a fold trough that tilts down-glacier as it descends. Two other structures are visible. In the top 25 m, right of the main fold, is a pair of anticline and syncline that gradually shallow and disappear as they descend. Figure 5b shows that their crest and trough points approach each other and cancel on contact and that this merging occurs via an inflexion point (where s = ∂s/∂x = 0). Left of the main fold, below 30 m, we see the reverse behaviour, with a syncline–anticline pair and corresponding pairs of crest and trough points being created via an inflexion.
These phenomena, which we term ‘hinge transitions’, are a consequence of the fact that hinge lines manifest looped contours of a theoretical surface. As Figure 5 indicates, the first kind of transition occurs at the lower end of a loop, where two neighbouring hinge lines with opposite signs of ∂s/∂x (a trough followed by a crest or vice versa) meet and terminate. The second kind of transition occurs at the top end of a new loop, where two hinge lines of opposite signs emerge. These insights stress the importance of tracing hinge loci along fold crests as well as along troughs. We examine the hinge-andslope structure of other radargrams in Section 3.
2.4.2. Slope and hinge migration
We proceed to derive mathematical results for the configuration of fold-hinge loci in this theory, considering what happens on both the x–t and x–z planes.
Earlier we solved Equation (14) to see how s varies along the characteristics. But we can analyse slope propagation differently, by asking: along what trajectory does constant slope propagate? Rearranging Equation (14) as
we can write
where
On the x–t plane, curves of constant s are therefore defined by dx/dt = v(x, t), meaning that, as we cross isochrones of increasing age, each constant slope value propagates down-flow at velocity v–we call this the slope migration velocity. Offset between v and the material velocity u 0 is expected because we are dealing with kinematic waves: as each piece of an isochrone is advected by ice flow, its slope becomes modified by the local gradient in the surface accumulation rate. Equation (20) shows that the offset is proportional to this gradient, b(x), and inversely proportional to the isochrone curvature, ∂s/∂x.
Since Equation (20) holds for any constant value of s, we can use it to predict the hinge migration velocity – how fast hinge points (s≡0) move down-flow as they age. For trough points (where s = 0 and ∂s/∂x < 0), this velocity exceeds u 0 if b > 0 and is less than u 0 if b<0 (we call these ‘supercritical’ and ‘subcritical’ cases, respectively), whereas for crest points (where s = 0 and ∂s/∂x > 0) the effect of b is opposite. Equation (20) also predicts v to be negative if b/(∂s/∂x) > u 0. These results explain why some hinge lines dip forward and others backward, why their dips do not indicate u 0 directly and why it may be crude to interpret the migration velocities indicated by them to be always less than u 0. In this regard, Equation (20) shows that v can become large for small ∂s/∂x and, in fact, undefined at inflexion points (where ∂s/∂x = 0, i.e. at hinge transitions). Consequently, when tracing fold hinges on a radargram, one should not trace only the steeply dipping loci and neglect the shallow-dipping loci, which are typically less conspicuous.
Next we use the velocity v to predict the shape of hinge lines on the radargram. As an isochrone evolves over an age increment δt, a point on it with constant slope migrates down-glacier by the distance dx/dt| s =constδt = v(x)δt, but lowers by the height dx/dt| s =constδt = v(x)δt, where
(We have used Equation (10) and the definition s = ∂z/∂x.) On the x–z plane, the point thus descends in a direction determined by the ratio dz/dt| s =const: dx/dt| s =const. At hinge points s≡0, so
Combining this with Equation (20) yields
This result shows that the local dip of a hinge line depends on the flow velocity u 0, the local accumulation rate and its spatial gradient, and the curvature of the isochrone at the hinge.
Equations (20) and (23) are differential equations for the hinge-line trajectories (x(t) and x(z)) on the x–t and x–z planes. Their similar form is not surprising given the link between the isochrone slope distributions on these planes; but since ∂s/∂x enters both equations, we cannot solve for the trajectories without knowing these distributions. In both equations, the term representing the velocity offset is negligible if |b|≪|∂s/∂x|, meaning that slope and hinge migration should occur at close to the ‘critical’ (material) velocity u 0 where the accumulation rate varies slowly with distance. We will see examples of this behaviour in the case studies in Section 3.
2.4.3. Hinge-line systems
We can now anticipate the general architecture of hinge lines on a steady-flow radargram. If the accumulation rate pattern undulates, then hinge lines extend into the firn from the surface at stationary points of a(x) (where b = 0). Alternation of these points between minimum and maximum causes successive hinges to switch between crests and troughs. As hinge lines descend, their trajectories depend predictably on ice-flow and accumulation forcings (Equation (23)) and may locally express supercritical or subcritical (even negative) migration velocities.
Given their inception as contours of the slope surface, hinge lines are also linked globally across the radargram. They do not start or end on their own, but emerge in (crest– trough) pairs at the top of hinge loops or vanish in pairs by merging at the bottom of hinge loops. Equation (16b) yields further insights into their geometry on the x–t plane. It predicts s = 0 when a(x) = a(x − u 0 t) so that, on a given isochrone aged t, hinges occur wherever the local accumulation rate equals the accumulation rate at a distance u 0 t up-flow. This makes sense because each piece of isochrone has a slope that represents the integrated history of slope alteration by b(x) over its journey to the present position.
3. Case Studies
In this section we analyse two radargrams – one synthetic and one real, both aligned with the ice flow – to test and further explore the theory. Concepts from Section 2 are used to identify structure behind their stratigraphic undulations. We also develop a way of extracting accumulation rates from stationary isochrone patterns that lack age information.
3.1. Synthetic radargram
We first use the forward model to create a radargram for which everything is known. In this example, we assume the accumulation rate pattern in Figure 6a, and we ignore firn densification and assume a constant ice-flow velocity u = u 0 = 40m a−1, which allows us to work directly in the transformed distance and depth coordinates. With these steady forcings, Equation (10) is solved numerically by finite difference (with upwinding and explicit time-stepping) to evolve an isochrone from the surface, thus generating a sequence of isochrones with an age increment of 0.025 years. Edge effects were avoided by assuming the 10 km horizontal domain to be periodic; we halted the simulation at t = 150 years before this caused the isochrone pattern to repeat at depth. The isochrones were subsampled at 2.5 year intervals to form the radargram, which is shown in Figure 6b.
As expected, down-pointing folds develop in the shallow subsurface under major peaks in the surface accumulation (see Fig. 6a and b). Deeper down, however, the undulating pattern becomes less predictable and shows a level of complexity like that shown in Figure 5.
To study the fold pattern, we traced hinge lines across the radargram by linking the stationary points of isochrones found by differentiating their depth (which also yields their slope). Trough and crest lines, distinguished in Figure 6b by different line types, display a topology confirming our predictions. Despite their irregular shape they form loops, dividing the radargram into jigsaw areas of opposite isochrone slopes; the loops are closed unless they meet the surface. Hinge transitions of the kinds described in Section 2.4.1 are abundant. The upper/lower end of each loop locates where a pair of crest and trough lines emerges/ vanishes; such pairing causes hinge lines to switch between crests and troughs in the x-direction. At hinge transitions, the trough and crest lines join smoothly with zero gradient and do not form cusps. We know from our theory that this is because the underlying slope surface is smooth.
Different portions of the hinge lines in Figure 6b show a variety of dips, some pointing up-flow but more often down-flow (cf. Arcone and others, Reference Arcone, Spikes and Hamilton2005). Two dips are common. One of them is nearly vertical. The other dip has a down-glacier slope of ∼0.01, as shown by several loops that swing towards the lower right. This dip seems to track the mean direction of advection coupled with burial, since material moves down-glacier by 6 km in the time it takes to reach the depth (∼60 m) of the oldest isochrone (t = 150 years). Both dips here are associated with the zones of steep isochrone slope discussed below.
We examine the folds more generally by considering isochrone slope s, which varies with x and z on the radargram, but, as explained in Section 2, may be conceived to vary with xand t. Figure 6c and d plot the functions s(x, t) and s(x, z) in colour. These ‘slope maps’ are easy to compile for this radargram because we know the age and depth of its isochrones. Features on s(x, z) are distorted versions of those on s(x, t), but can be superposed directly on the stratigraphy in Figure 6b.
We focus on s(x, t) (Fig. 6c) because it shows the essence of slope information travel. Intriguingly, we see two distinct directions of constant-slope migration, shown by the vertical zones of red and diagonal zones of blue, both descending from major accumulation anomalies (cf. Fig. 6a). The red is aligned with peaks in a(x); the blue emanates from the lee of these peaks and inclines at ∼40ma−1|(u 0). As these colours respectively signify strongly positive and strongly negative slopes, their pattern means that steep slopes on the descending flanks of layer folds migrate at velocity v≈0, whereas steep slopes on the ascending flanks of layer folds migrate at v≈u 0.
This pattern is explained by slope evolution along the characteristics (defined in Section 2.2), which descend across the x–t plane at velocity u 0. Equation (15) shows that on this plane, s depends on its initial value on its characteristic (at t = 0) and on its alteration by b(x) along the characteristic. The observed pattern stems from the contest between these inheritance and modification factors, as may be understood by considering two end-member scenarios. First, slopes that are shallow initially (of either sign) can be changed easily by a strong accumulation anomaly on their course, to adopt its sign at its x-position. Thus a major peak or valley in a(x) causes isochrones beneath it to plunge or rise steeply, respectively, forming a vertical zone of high slopes (e.g. red in Fig. 6b). Second, an initially steep slope (of either sign) inherited from a strong accumulation anomaly will stay steep unless strong opposite anomalies lie on its characteristic to negate it. In this case, a set of steep fold limbs drifts down-flow with little slope change to form a diagonal zone; an example in Figure 6b is the rising limbs between x = 2 km, z = 10m and x = 6 km, z = 45m.
These scenarios together explain why each accumulation anomaly creates a pair of vertical and diagonal zones. Moreover, since our wave equation is linear, where these zones intersect they disrupt each other by partial cancellation of layer slopes (Fig. 6c). The current analysis identifies such spatial arrangement, which we summarize in Figure 7, as the hallmark of layer patterns formed under steady forcings. We learn that although the layer folds in different steady-flow radargrams may look distinct, they obey the same general rules of patterning, with the main difference being the location and size of accumulation anomalies. We also learn the usefulness of the slope map s(x, t) as a tool for elucidating the structure of these folds.
3.2. Extracting a (x) and layer ages through optimization
Compiling the map s(x, t) for any radargram requires the age of its layers to be known. Here, making further use of the synthetic radargram, we devise a method (based on method I in Section 2.3) capable of retrieving the accumulation rate a(x) and layer ages simultaneously from steady-flow radargrams.
Given the depths of two adjacent isochrones, z 1(x) (shallower) and z 2(x) (deeper), we can use Equation (17) to estimate a(x) by means of three steps:
These steps involve ‘sh ift-differenci ng’ the layers (by the shift distance Δ), inferring their age difference δt from Δ, and finding the accumulation rate by dividing the depth difference δz by δt. As before, x and z here are transformed coordinates.
In scenarios where either δt or u 0 is unknown, the correct shift distance Δ to use in step (1) is unknown. However, given multiple pairs of isochrones, we can choose a combination of Δ’s for these pairs to optimize the agreement between the a(x)’s reconstructed from them, thus also determining the C’s. In this method, a key assumption is that the isochrone pattern is stationary, generated by steady forcings.
In an experiment, we tested this method by using all 61 layers of the synthetic radargram (Fig. 6b) and using the knowledge that their age difference is uniform so that the same Δ can be used in step (1) to shift-difference all consecutive layer pairs. For each choice of Δ, this step yielded 60 difference profiles (the δz’s). We then calculated the variance of these δz’s at each x-position and used the spatial mean of this variance as a single measure of mismatch between the difference profiles. Figure 8a shows that the mismatch is minimized (agreement between the difference profiles maximized) when Δ = 100 m. With our additional knowledge of u 0 = 40ma−1 in the synthetic problem, this optimal shift distance correctly recovers δt = 2.5years in step (2). The corresponding estimates of a(x), found from step (3) and plotted in grey in Figure 8b, match the actual accumulation pattern in Figure 6a closely, despite a small scatter due to truncation error.
In practice, many radargrams are not furnished with local firn cores to constrain the age of their stratigraphy (e.g. via annual-layer counting); when ‘picking’ layers from them there is no way to ensure uniform age difference between the picks. But we can circumvent this requirement because steps (2) and (3) in Equation (24) can be combined to give
Consequently, when shift-differencing multiple layer pairs to find a(x), we can minimize the mismatch between profiles of δz/Δ rather than of δz. The optimization now involves choosing as many Δ’s as there are layer pairs, not just one Δ.
We tested this method on the synthetic radargram taking only the two pairs of isochrones shown in Figure 8c. Figure 9 illustrates the shift-differencing procedure on the x–t plane. Two shift distances Δ1 and Δ2 were chosen to difference the pairs to yield two estimated profiles of δz/Δ, whose variance was summarized as a mismatch in the same way as before. The best combination, Δ1 = 395m and Δ2 = 201m, was found by searching for minimum mismatch over the parameter space (Fig. 8d). The corresponding reconstructed a(x) is the black curve in Figure 8b. It is smoother than the original accumulation forcing, indicating that truncation error associated with the separation between the input layers causes low-pass filtering. Nevertheless, with only four isochrones as input, this reconstruction recovers the peaks and troughs of the forcing remarkably well.
Besides its ability to retrieve accumulation rates, this method has three useful properties that are worth noting:
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1. The optimal shift distance Δ for each pair of layers divided by the flow velocity u 0 gives their age difference (step (2) in Equation (24)).
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2. Even if u 0 is unknown, the method can reconstruct the normalized accumulation rate pattern, a(x)/u 0 (see Equation (25)).
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3. Since the method assumes steady forcings, layer patterns formed by a and u that varied temporally as well as spatially (so that a/u 0 is not invariant) will cause fundamental mismatch between the δz/Δ profiles from different layer pairs that cannot be reconciled by any shift combination. In this sense, the method is able to discern the existence of unsteadiness, although not quantify its history.
3.3. Radargram from Bindschadler Ice Stream
Our real case study uses the radargram in Figure 1, obtained by ground-based radar on a traverse at the onset zone of Bindschadler Ice Stream in the 2001/02 austral summer. Along the 52.7 km radar line, surface velocity increases from 59 to 111m a−1. Radar traces were recorded by a 100MHz pulseEKKO radar at 0.8 ns time interval and every 5m along flow. Conversion of two-way travel time to depth used the wave speed in firn measured by a common-midpoint survey at km 33, which shows that this speed decays smoothly from ≈0.23mns–1 at the surface to a constant value of ≈0.168mns–1 below a depth of 50m, consistent with an expected increase of firn density with depth. Migration was found to cause negligible change to the depth and slope of isochrones and so was ignored. For details of radar processing, see Woodward and King (Reference Woodward and King2009).
The modern ice-flow dynamics of this region have been characterized by field and remote-sensing observations and numerical modelling (e.g. Joughin and Tulaczyk, Reference Joughin and Tulaczyk2002; Price and others, Reference Price, Bindschadler, Hulbe and Blankenship2002), but little is known about their history over centuries or longer. For Bindschadler Ice Stream, interpretation of its deep radar layers (Siegert and others, Reference Siegert, Payne and Joughin2003) and of features downstream of it on the Ross Ice Shelf (Hulbe and Fahnestock, Reference Hulbe and Fahnestock2007) does not suggest that its flow has undergone major fluctuations. However, deep radar-layer folds upstream of the onset zone have been interpreted for changes in flow direction there ∼1.5 ka ago (Siegert and others, Reference Siegert2004).
We picked the depth profiles of 17 clearly visible layers in Figure 1a and smoothed them by low-pass Fourier filtering to suppress noise for the later slope calculations. In view of the flow acceleration along the radar line, we first rendered the profiles in the transformed coordinates xand z(Section 2.1). We used the linear velocity model in Equation (8) with u 0 = 59ma−1and k = 0.0167km−1; x is then related to true distance via Equation (9a). For the firn-densification correction in Equation (3), we assumed the density profile ρ(z) = ρi − (ρi − ρ 0)e−cz with ρ i = 917 kgm–3, ρ 0 = 400 kg m–3 and c = 1/35m−1 (Arcone and others, Reference Arcone, Spikes and Hamilton2005) derived from International Trans-Antarctic Scientific Expedition (ITASE) Core 99-1, the nearest firn core (≈25 km upstream) from our line (Fig. 1b). Figure 10b shows the distance conversion and Figure 10a plots the layers after transformation, which squashes them laterally and depresses them towards the right-hand side of the domain.
Of interest are the hinge-slope structures of the layer pattern and their links with the accumulation rate pattern. Unlike in the synthetic study, however, here a(x) is not known, nor are layer ages needed for compiling the slope map s(x, t). We estimated these by the inversion method developed in Section 3.2, assuming the picked layers to be isochronal and their pattern stationary.
This problem is more complicated than the example in Figure 8c because we need to choose 16 shift distances (one Δ for each pair of consecutive layers) to maximize the agreement between the δz/Δ’s found from shift-differencing the respective layer pairs. We determined the Δ’s in two steps: by finding rough guesses and refining them. In the first step, the method in Figure 9 was applied to two pairs of consecutive layers at a time, but to all 15 consecutive pairs of layer pairs. For the top- and bottommost layer pairs this yielded the Δ guess directly; for the other layer pairs this yielded two estimates of Δ, which we averaged to form the guess. In Figure 10c, the grey curves plot the normalized accumulation profiles a(x)/u 0 evaluated by Equation (25) with these Δ guesses. Although they look shifted vertically from each other, their peaks and valleys show correlation.
In the second step, we adjusted the Δ guesses to optimize the agreement between the δz/Δ profiles found from shiftdifferencing all 16 layer pairs together; accordingly we redefined the measure of mismatch based on all these profiles. The optimization used a Monte Carlo scheme with many trials (Press and others, Reference Press, Teukolsky, Vetterling and Flannery1992) and the Δ guesses as starting point. In each trial, we chose a pair of consecutive layers at random and improved its Δ by minimizing the mismatch, keeping the other Δ’s fixed. This procedure brought different estimates of a(x)/u 0 into focus without the need for exhaustive search on the 16-dimensional space of the Δ’s. The mismatch decayed rapidly at first and stabilized at :≈7 × 10−4 m2after about 100 trials. Figure 10d shows the optimal shift distances. As expected, these distances are larger for layer pairs that lie further apart. Since the edge of this radargram caused the δz/Δ profiles to be shorter than the domain, in both steps above we evaluated their variance (and a(x)/u 0) only where they exist and overlap.
In Figure 10e, the grey curves show the normalized accumulation rate profiles a(x)/u 0 calculated with the optimal shifts. Their broad agreement means that different layer pairs tell similar stories about past accumulation; their scatter is worse than in the synthetic study but remains small compared with their mean. The scatter could arise from many factors. One factor is numerical errors from the layer picking, conversion of radar time to depth, and the truncation approximation in Equation (17). A second factor is processes unaccounted by our model, such as temporal changes in u and a, lateral flow convergence or divergence, and spatial variability in densification. A third factor is geometries that render the radargram imperfect, including out-of-plane reflections and offset of the radar line from the ice-flow direction.
In some studies, the accumulation rate distribution was estimated from the depth and age of a shallow layer (e.g. Gray and others, Reference Gray, King, Conway, Smith and Ng2005; Woodward and King, Reference Woodward and King2009). To see how well this method performs, in Figure 10e we plot the normalized accumulation rate found by shift-differencing our uppermost subsurface layer and the surface layer (see the dotted curve). The method in Equation (17) was used, with u 0 δt equated to the optimal shift distance of the layer pair (this effectively constrains the age of the lower layer). As our two-step optimization is also based on Equation (17) and the same shift, the two methods yield identical results of a(x)/u 0 (the dotted curve overlaps the grey curve for the layer pair). The shallow-layer result here resembles our mean optimized estimate for a(x)/u 0 (black curve in Fig. 10e) due to the limited scatter discussed above. However, when used on radargrams whose forcings have varied substantially, the shallow-layer method will not give valid accumulation estimates for times preceding the age of the lower layer.
We next converted all the optimal shift distances Δi (i = 1–16) into age differences and summed these to estimate the age of the picked layers. We used the equation
where m is the number of the layer and tm its age. Figure 10f plots the estimated age of each layer against its original (untransformed) mean depth on the radargram. This age–depth relationship gives older ages than found by layer counting in ITASE Core 99-1 (Steig and others, Reference Steig2005), implying lower accumulation rates in our study area than at the core site tens of kilometres away. Indeed, our mean untransformed value of a(x) is 0.273ma−1 or 0.109mw.e. a−1 (Fig. 11a, top plot), which is 20% less than the mean accumulation rate 0.136mw.e. a−1 derived for Core 99-1 over the period 1713–2000 (Dixon and others, Reference Dixon, Mayewski, Kaspari, Sneed and Handley2004). Our age–depth relationship also shows an upward bend caused by firn densification, but we emphasize that it represents a spatial mean only. The local age–depth relationship must vary across the radargram because the radar layers undulate.
The slope maps s(x, t) and s(x, z) of this radargram (Fig. 10g and h) share strong similarities with those of the synthetic case study. The former map (Fig. 10g) was compiled using the layer ages estimated above and uses transformed distance as its horizontal axis. The latter map (Fig. 10h) uses true depth and true distance as axes. Both maps were made by interpolating the slopes of the 17 layers and without picking additional layers. As in the synthetic study, s(x, t) here shows the criss-cross arrangement of vertical red and diagonal blue zones, descending respectively from the peaks and lee sides of accumulation anomalies. The blue zones in Figure 10g are straightened from those in Figure 10h and incline at a velocity near u 0. Compared with Figure 6c and d, both maps show more fine-scale features, some of which presumably stem from the variability that causes the minor differences between the retrieved profiles of a(x)/u 0 in Figure 10e.
These results imply that the layer pattern on this radargram can be explained by time-invariant forcings through our proposed folding mechanism. Agreement between a(x)/u 0 found from the different layer pairs reflects limited historical variations in this ratio and is consistent with the steady-flow assumption behind our analysis. If we use Equation (10) to forward-model the pattern with u 0 and the mean reconstructed a(x) as inputs, and show the results in true coordinates, then isochrones simulated at the age of the picked layers are found to mimic the latter well in terms of the general location and structure of key folds (Fig. 11a). Improvement in matching the depth of isochrones is found if we use the a(x)’s reconstructed for the times spanned by successive layer pairs (Fig. 11b).
Inferences from these findings about the ice stream’s history are non-unique because our model precludes temporal variations in a and u that might have occurred. Specifically, three different interpretations are possible:
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1. Ice flow and accumulation conditions in the onset zone have been steady over a time going back to the age of the deepest picked isochrone (386 years in Fig. 10f). This interpretation implies centurial-scale ice-stream stability.
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2. Both a and u changed over time, but co-varied in a way to maintain approximately the same a/u 0 ratio, producing an apparently stationary isochrone pattern.
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3. The accumulation rate pattern has been stable but has been migrating up- or down-glacier, producing an apparently stationary isochrone pattern. This is possible if we suppose an accumulation forcing of the form a(x − wt), where w is the migration speed. Putting this forcing in our model of isochrone evolution in Equation (10), we see that the latter can be rewritten as
(27)with x * = wt being a moving coordinate. As this equation has the same form as the original (albeit with advection velocity u 0 − w), layer patterns generated by it will appear to have been caused by steady forcings when observed at a given time, but are actually translating at speed wwith respect to the stationary frame of reference. Migrating surface accumulation patterns not only could, but do, exist, as have been inferred for various dune-like features in East Antarctica (see review by Eisen and others, Reference Eisen2008).
In both the second and third interpretations, the layer ages derived from Equation (26) and used to form the age–depth relationship and s(x, t) (Fig. 10f and g) would be incorrect.
Here we favour the first interpretation for the following reasons. The second interpretation requires the accumulation rate to be coupled to the ice flow, most likely via interaction between atmospheric processes and surface topography. While such coupling is possible, for example via snow redistribution by katabatic wind (e.g. Black and Budd, Reference Black and Budd1964; King and others, Reference King, Anderson, Vaughan, Mann, Mobbs and Vosper2004), we cannot envisage how it causes concerted changes where variations in the ice-flow velocity u modulate the mean rate of accumulation and its anomalies by the same factor. The first interpretation needs a mechanism to fix a(x) in space, and we find evidence for this and against the third interpretation. Figure 12 shows convincing correlation between the retrieved accumulation pattern a(x) and the (along-flow) surface slope of the ice stream and also between the surface slope and the ice-stream bed topography. We interpret these correlations to mean that bed topographic undulations are inducing surface topography via ice-flow dynamics (this process is well recognized and studied in the literature; e.g. Gudmundsson, Reference Gudmundsson2003); in turn, the surface topography creates anomalies in a, enhancing it on up-glacier-facing slopes and reducing it on down-glacierfacing slopes. Information given by Arcone and others (Reference Arcone, Spikes and Hamilton2005) for their figure 5, which shows a similar correlation between slope and accumulation on the ITASE traverse near the Core 99-1 site (Fig. 1b), suggests that our up-facing and down-facing slopes are windward and leeward, respectively.
These mechanisms imply a basal origin and stationarity for the anomalies on a(x) and flow stability in the onset zone. While this interpretation is specific to this case study and may not hold for other areas of the ice sheet, we note that the effect of basal topography on accumulation rates has been recognized independently by other radar studies (e.g. Rotschky and others, Reference Rotschky, Eisen, Wilhelms, Nixdorf and Oerter2004). Furthermore, while the flow-stability interpretation may not seem sensational, it adds to our knowledge of Bindschadler Ice Stream. One way to test it is to compare our layer-age estimates in Figure 10f with the layer-counted ages in a firn core drilled in our study area, or with the layer-counted ages in ITASE Core 99-1 after further radar profiling to link the isochrones between our study area and the core site.
3.4. Hinge and slope migration
We use the layer patterns in the synthetic and the real radargrams to evaluate the hinge and slope migration rates predicted by theory, given by Equations (23) and (20), respectively:
Working in transformed coordinates, we tested each equation by a separate procedure. For each radargram we first compiled, at various x-positions, values of a(x) and b(x) as well as of s and ∂s/∂x on its picked layers (the 61 layers of the synthetic radargram and the 17 picked layers in the real radargram). The quantity u 0 and the age difference between successive layers are known.
Equation (23) predicts the local dip of hinge lines, which have been traced on both radargrams (Figs 6b and 10h). For each hinge-line segment between successive layers, we used the equation with the compiled data to calculate the values of dx/dz at its two end points, then compared their mean with dx/dz measured directly for the segment from the transformed radargram. We made this comparison for all traceable hinge-line segments, and defined their dip angles as tan−1 (dx/dz ÷ 100) (so that 0° points downward) rather than measuring both up- and down-glacier dips against the horizon, which causes a sign discontinuity across the vertical. The factor of 100 here puts the angle more in line with the vertically exaggerated perspective of the radargrams shown in this paper.
Figure 13 plots the results, distinguishing those for crest and trough lines by different symbols. The strong correlation in Figure 13a for the synthetic radargram reveals the predictive power of Equation (23). By contrast, Figure 13b shows a weak, almost non-existent correlation for the real radargram. We attribute this to unsteadiness in its forcings (Section 3.3) and the large separations between picked layers, which introduce significant errors in the dx/dz estimates in the comparison. We experimented with resampling the synthetic radargram at greater age interval and found that the scatter in Figure 13a is also caused by such errors, because it increased when we used fewer, more widely spaced isochrones.
Equation (20) predicts the migration velocity v of a constant isochrone slope as we cross from one layer to a neighbouring (deeper) layer. In other words, starting from a given point on the first layer where its slope s is known and using the age difference between the layers, this equation can be used to predict the ‘target’ point on the deeper layer where the same slope should occur. We tested Equation (20) by comparing the layer slope measured at the target point with its expected slope, for multiple positions on the layers on the real and synthetic radargrams. Figure 14a and b show the results. These plots exclude test positions where low isochrone curvature is expected to cause high migration velocities in Equation (20) and, together with the separation between layers, large prediction errors. Agreement between measured and expected slopes is strong for the synthetic radargram (Fig. 14a) and much weaker for the real radargram (Fig. 14b) (due again to the errors mentioned for the last test), but, unlike in Figure 13b, a noticeable correlation can be discerned here for the real radargram.
4. Conclusions
We have advanced a kinematic theory to explain the structure of layer undulations seen in flow-aligned radar-grams of polar firn. It elucidates how spatially non-uniform accumulation and ice flow together shape isochrone geometry, and quantifies how layer folds encode these forcings when the latter do not vary in time. Unlike folding in rocks under shear or compression, which are typically caused by dynamical instabilities (Reference BiotBiot, 1957; Reference Johnson and FletcherJohnson and Fletcher, 1994), the mechanism here is kinematic because it results purely from differential velocities and does not involve internal forces. Analysis shows that isochrone slope propagates°wave-like’ across the radargram (and on an associated x–t plane) so that hinge lines form loops, separating domains of rising and plunging isochrones. Predictions of this theory, including the rates of slope and hinge migration, find support in the radargram data from two case studies, which exemplify that the forcings behind complex layer patterns are not necessarily complex. By offering analytical insights on such patterns, the theory contributes a deeper understanding of a phenomenon whose study has relied on computational approaches.
In practical terms, we show that maps of isochrone slope for a given radargram carry decipherable information about its forcings (Figs 6c and d and 10g and h). We therefore advocate the compilation of these maps as a routine step in radargram analysis. With steady forcings, the arrangement of layer slopes on the x–t plane obeys the scheme in Figure 7. One consequence of this is that the occurrence of coherent vertical zones of steeply plunging or steeply rising layers can be used to infer the sites of major accumulation peaks and troughs. A further consequence is that the age of isochrones and the accumulation rate distribution a(x) can both be extracted from the radargram non-invasively, without needing firn cores (Section 3.2). This inversion yields a(x)/u 0 even if the ice-flow velocity u 0 is unknown and, despite its restrictive steady-flow assumption, can detect unsteadiness in the forcings.
Our application of this method to the onset zone of Bindschadler Ice Stream (Section 3.3) illustrates its potential for constraining the ice-flow history of a region on centurial timescales. While its use on many other areas of the ice sheets may not be possible currently due to the lack of flow-aligned radargrams, suitable radargrams exist to enable comparison of several onset zones of streaming in West Antarctica. Such study can complement other investigations of the temporal variation of ice-stream systems and may yield more insights on the influence of basal topography on surface accumulation. In future studies, the data analysis could capitalize on a new automated method of extracting layer slopes from radargrams (Reference Sime, Hindmarsh and CorrSime and others, 2011).
Firn densification is taken into account in our theory by the variable change in Equation (3). But, as we signalled in Section 2.1, a problem exists. Our starting layer-depth equation there, based on the densification descriptions of previous studies, is
when written in the untransformed coordinates. The problem lies in the assumption of an invariant density–depth profile, ρ(z), which overlooks the possibility that firn density can vary with horizontal distance and time as well as depth. Such outcome is in fact likely in the system we are studying, where firn compaction interacts with the accumulation and lateral advection. Even without the advection, the compaction rate depends on the local accumulation rate a (Reference Herron and LangwayHerron and Langway, 1980; Reference Arthern, Vaughan, Rankin, Mulvaney and ThomasArthern and others, 2010) so that spatial variations in a will cause ρ to vary with x. Advection complicates this matter by putting each firn column under a time-varying accumulation rate, making the compaction history depend on material trajectories across the radar cross section.
These considerations imply two obstacles for models of isochrone evolution (whether used in the forward or inverse sense). First, the density becomes a spatio-temporally varying field ρ(x, z, t) that must be found by solving a firn compaction model, coupled to Equation (28) via the vectorial velocity of the firn. This model requires testing against field measurements of firn density. The second obstacle is more subtle. Since the wave speed in firn depends on ρ and ρ varies with x as well as z, when constructing radargrams from their time traces it may be inaccurate (even invalid) to assume a single depth-dependent profile of the wave speed for converting two-way travel time to depth. As Reference EisenEisen and others (2008; p.25) pointed out in their review, fieldworkers have probed this issue and found that although density–depth profiles can be spatially homogeneous across plateau areas of the ice sheet, these profiles may show pronounced horizontal variations in areas with much accumulation variability and fast ice flow. In such areas, radargrams compiled with wave speeds measured (or interpolated) from a few isolated firn cores or common-midpoint surveys may contain serious errors. Strictly, the determination of layer depths then becomes entwined with our mathematical problem of the kinematic wave and compaction models: the radargram itself has to be found as part of the solution.
Besides modelling firn densification precisely, our theory could be extended to study the kinematic evolution of layer structures in 3-D (as revealed by radargrams with different alignments from the ice flow, intersecting each other) and to account for time-variable forcings. In the latter problem, we expect it to be much harder to gain mechanistic insights into fold geometries, as these will be governed by a slope surface that evolves with time. A different challenge is to address layer evolution across the firn–ice transition, i.e. to come up with a unified model that can link the undulations of our firn layers to those of englacial layers at depth where shearing is significant.
Acknowledgements
We thank A. Morton for his hard work when gathering field data, and S. Arcone and O. Eisen for their useful reviews of our paper. The fieldwork yielding the radar and elevation data in Figures 1, 11 and 12 was supported by US National Science Foundation grant 86297 (to S. Anandakrishnan) and by the UK Natural Environmental Research Council (NERC) Geophysical Equipment Facility.