Notation
Introduction
An understanding of the dynamic behaviour of the Antarctic and Greenland ice sheets is crucial to our ability to model their past and future evolution, especially if models are going to be used to predict changes in mass balance due to global climate change. Aspects of the dynamics are, however, not well understood and are inadequately measured due to a lack of observations and difficulties in modelling the dynamics. This is largely a result of uncertainties in several key variables and physical processes such as the rate factor in the flow law of ice and basal sliding behaviour. Nonetheless, a number of numerical models have been used to investigate the dynamics of the Greenland ice sheet (Reference Huybrechts, Letréguilly and ReehHuybrechts and others, 1991; Reference Letréguilly, Reeh and HuybrechtsLetréguilly and others, 1991a; Reference GreveGreve, 1997). These models have been used to simulate the ice-sheet geometry, temperature and velocity fields. Such schemes, in general, operate on a relatively coarse resolution (typically 20 km) and are often limited by their use of the shallow-ice approximation, which assumes that longitudinal stresses are averaged out over distances of 10–20 times the ice thickness, Z (Reference PatersonPaterson, 1994). This means that they do not accurately capture the fine-scale detail (i.e. <10–20Z) where longitudinal stresses are important.
These large-scale models have been used either to simulate past climatic reconstructions (Reference Letréguilly, Huybrechts and ReehLetréguilly and others, 1991b) or to predict the effect of global warming on the ice sheet (Reference Huybrechts, Letréguilly and ReehHuybrechts and others, 1991). Perhaps of greatest concern for this latter application is the need to employ a variable enhancement factor (typically about 0.1–10) in the flow law of ice due to uncertainty in the ice rheology. Furthermore, uncertainty in estimating the basal friction means that an additional adjustable parameter is used in the sliding law. Measurements of ice motion can potentially provide a valuable constraint for numerical models (Reference Bamber and HuybrechtsBamber and Huybrechts, 1996). In situ measurements are sparse, however, and remote-sensing methods have begun to provide much-needed data. In particular, direct measurement of the short-term surface velocity can be made either from displacement of features observed in pairs of visible images (feature tracking) (Reference Scambos, Dutkiewicz, Wilson and BindschadlerScambos and others, 1992) or by interferometric synthetic-aperture radar (InSAR) techniques (e.g. Reference Joughin, Winebrenner and FahnestockJoughin and others, 1995, Reference Joughin, Kwok and Fahnestock1996a). In North Greenland, for example, data from crossing ascending and descending satellite overpasses have recently been used to measure the three-dimensional velocity field for Ryder Gletscher (Reference Joughin, Kwok and FahnestockJoughin and others, 1998) and Storstrømmen (Reference Mohr, Reeh and MadsenMohr and others, 1998). Feature-tracking methods using visible imagery are limited to fast-moving regions where there are sufficient features to track, and InSAR methods require some form of ground control, albeit at a limited number of locations. Other problems with the use of InSAR will be discussed later.
Another estimate of the velocity field, called balance velocities, can be obtained by integrating the ice flux from the ice divide to the margins (e.g. Reference Budd and CarterBudd and Garter, 1971; Reference PatersonPaterson, 1994; Reference Budd and WarnerBudd and Warner, 1996). For this calculation, surface-topography, ice-thickness and accumulation data are required. With the aid of these data it is possible to calculate balance velocities over the whole Greenland ice sheet. Balance velocities are, however, a derived quantity, and various assumptions are made in their derivation. In this paper we examine the relative strengths and weaknesses of InSAR and balance velocities as tools for investigating the velocity field of ice sheets.
Velocity Datasets
Balance velocities
The balance velocity (U b) is a depth-averaged value necessary to maintain the steady state of an ice sheet assuming that it is in balance. This implies that the outward flux exactly matches the net accumulation (minus the ablation), so that there is no change in ice thickness, Z, with time. A continuity equation is then derived, and by integrating the net accumulation from the summit to the ice edge, the mass flux at any point can be estimated. The balance velocity can then be calculated if the ice thickness is known.
One of the advantages of balance velocities is that they provide a synoptic-scale estimate of velocity, which may be useful in constraining numerical models. They have also been used in a number of previous studies for a variety of applications (cf. Reference Budd and CarterBudd and Garter, 1971; Reference Radok, Barry, Jenssen, Keen, Kiladis and McInnesRadok and others, 1982; Reference Budd and WarnerBudd and Warner, 1996; Reference Joughin, Fahnestock, Ekholm and KwokJoughin and others, 1997). They represent, however, a depth- and time-averaged quantity. The time constant for the dynamic response of a drainage basin of the Greenland ice sheet is typically on the order of 1000 years (Reference PatersonPaterson, 1994), whereas the accumulation and ablation data have been obtained over a much shorter time-scale of 20–50 years. The implicit assumption made here is that accumulation and ablation rates have remained relatively constant during the dynamic response time of the basin. Based on the results from the two Greenland summit cores, GRIP and GISP2, this seems a reasonable assumption (Reference Grootes, Stuiver, White, Johnsen and JouzelGrootes and others, 1993). Balance velocities are thus representative of the mean depth-averaged flow over a period on the order of 1000 years. Measured velocities, however, are usually short-term surface values subject to possible variability due, for example, to changes in basal lubrication (Reference Joughin, Tulaczyk, Fahnestock and KwokJoughin and others, 1996b).
It is also necessary to consider the method used for calculating U b. Typically, a flux-gate approach has been used. Here we have adopted a two-dimensional finite-difference scheme that does not require an arbitrary gate width to be specified (Reference Budd and WarnerBudd and Warner, 1996). Perhaps more important, however, is the smoothing applied to the elevation data. This is necessary to ensure that the ice flows downhill and that the effects of longitudinal stresses have been averaged out. Removing the effects of longitudinal stresses in this way is known as the shallow-ice approximation. It is believed that a smoothing distance of 10–20Z is required (Reference PatersonPaterson, 1994). The true scale over which longitudinal stresses can be ignored, however, is a function of the ice rheology and geometry, which are spatially variable quantities. This issue is explored further when comparing balance velocities with InSAR-derived velocities.
One of the strengths of balance-velocity estimates is that the state of imbalance is, in general, much less than the uncertainty in assessing the deformation and sliding properties of ice (Reference Van der Veen and WhillansVan der Veen and Whillans, 1990). Consequently, balance velocities and fluxes could provide a useful guide for dynamics where direct observations are sparse (Reference Bamber and HuybrechtsBamber and Huybrechts, 1996; Reference Budd and WarnerBudd and Warner, 1996). However, the accuracy of the calculated balance velocity depends upon the quality of the input data and the method of spatial discretization. Balance velocities represent the true depth-averaged velocity if, and only if, (i) there are no errors in the input datasets, (ii) the drainage basin is in balance, (iii) there is steady-state, time-invariant flow and (iv) the ice flow obeys the dynamical assumptions used in the calculation of U b. The relative importance of these factors will be illustrated by a comparison with (nearly) instantaneous In-SAR-derived surface velocities and global positioning system (GPS) data.
Previous methodologies to calculate U b have generally applied a flowline or flux-gate approach for spatial discretization. In this study, a two-dimensional finite-difference scheme (Reference Budd and WarnerBudd and Warner, 1996) has been used. The differences between balance velocities calculated here and a recently published flowline approach (Reference Joughin, Fahnestock, Ekholm and KwokJoughin and others, 1997) are discussed when comparing the balance velocities with InSAR measurements for the “Northeast Greenland Ice Stream”. As mentioned earlier, however, the smoothing applied to the digital elevation model (DEM) is probably more important than the methodology adopted for calculating U b. This is also discussed later.
Input data for calculating Ub
Three datasets are required: a DEM to determine the direction of flow; ice thickness; and net ice input (accumulation minus ablation). The DEM has been derived primarily from analysis and interpretation of satellite radar-altimeter data from the geodetic phase of the European remote-sensing satellite ERS-1 and is described elsewhere (Reference Bamber, Ekholm and KrabillBamber and others, 1997). A 2.5 km resolution DEM of the Greenland ice sheet was produced for this application (Fig. 1). The height measurements in the DEM were validated using a set of airborne laser-altimeter flight-lines over southern Greenland and indicate that the radar-altimeter data have an accuracy of approximately 1–10 m depending on the regional slope (Reference Bamber, Ekholm and KrabillBamber and others, 1998). Where no valid radar-altimeter data were available, the DEM was supplemented with data from a previously published DEM of Greenland, which incorporated stereo photogrammetric and cartographic datasets around the ice-sheet margins and for land areas (Reference EkholmEkholm, 1996).
The shallow-ice approximation is based on the assumption that on a scale of 10–20Z, flow is in the direction of the surface slope (Reference PatersonPaterson, 1994). As a result, the DEM was smoothed on a spatially dependent scale of 10Z and 20Z, producing two balance-velocity grids denoted U b10 and U b20, respectively. The smoothing was applied to ice thicknesses of > 500 m. Below this value, a fixed smoothing over two gridcells (i.e. 5 km) was used. Two smoothing distances were chosen to investigate how this affected the results.
The ice-thickness data were obtained from airborne radio-echo sounding measurements with a variable track spacing of about 50–100 km (Reference Letréguilly, Huybrechts and ReehLetréguilly and others, 1991b). The error in an individual measurement is on the order of 10%. Errors will be greater than this for gridpoints lying between flight tracks or beyond the limit of coverage near the margins, where there was sparse coverage.
The net ice input is the accumulation minus the ablation. The accumulation grid was derived from a recent, unpublished map of accumulation over the ice sheet by F. Jung-Rothenhäusler and others (in press). For brevity, this will be referred to as the J-R dataset. The uncertainty in the accumulation dataset is quoted as 10%. Ablation has been calculated using a positive degree-day approach using a single degree-day factor of 8 mm °C−1 d−1 (Reference Huybrechts, Letréguilly and ReehHuybrechts and others, 1991). The uncertainty in ablation, using this approach and a single degree-day factor, is estimated to be 20% (personal communication from R. J. Braithwaite, 1999).
InSAR measurements of velocity
The use of InSAR to derive surface velocities over ice is now well established (Reference Joughin, Winebrenner and FahnestockJoughin and others, 1995; Reference Rignot, Jezek and SohnRignot and others, 1995), and only the most relevant points are summarized here. The repeat-pass method requires two images, collected at almost identical orbital locations (within several hundred metres) but in different epochs. A complex interferogram is formed as the product of one image with the complex conjugate of a second. The interference pattern depends primarily on the topography and any displacement between the two epochs. The separation of the satellite for the two measurements (the baseline separation, B) determines the sensitivity of the topographic term. Another factor, however, that influences the interferometric phase pattern is variation in electromagnetic path length introduced by the atmosphere (in particular, the presence of fronts associated with water-vapour variations) (Reference Hanssen, Zebker, Klees and BarlagHanssen and others, 1998). There are various ways to separate the motion and topography, using either an independent DEM or multiple interferograms (Reference Joughin, Winebrenner and FahnestockJoughin and others, 1995). Errors in the baseline derived from orbital-state vectors result in a nearly linear phase ramp in the interferogram. Baseline errors are reduced by using ground-control points (e.g. in situ GPS measurements and/or a DEM) to solve for the baseline.
An interferogram by itself provides only a measure of relative motion. Tie points of known velocity and elevation are needed to calibrate the data in order to remove baseline errors and provide absolute reference. Here, two different approaches have been taken depending on the availability of tie points. Where exposed bedrock is present, this has been used to provide zero-motion tie points. Elsewhere, balance velocities (calculated from a flowline procedure (Reference Joughin, Fahnestock, Ekholm and KwokJoughin and others, 1997)) were used as velocity tie points in areas of slow flow. A maximum velocity threshold of 12 m a−1 was used.
In this study, three InSAR datasets were used. Their locations are shown by the polygons in Figure 1. The first two datasets cover Humboldt Gletscher and Petermann Gletscher, in northwestern Greenland. For the northern sector (2), the velocity was estimated to be accurate to 2.3 m a−1 (Reference Joughin, Kwok and FahnestockJoughin and others, 1996a). In this case, it was possible to use bedrock near the coast as zero-motion tie points. For sector 1, balance velocities were used to give an absolute velocity estimate, as no bedrock was within the scenes. The third dataset was a 785 km long strip stretching from the central part of the North Greenland coastline towards the east coast. It covered the inland part of the Northeast Greenland Ice Stream, recently identified from SAR imagery (Reference Fahnestock, Bindschadler, Kwok and JezekFahnestock and others, 1993). The strip was tandem phase data (where the two satellites, ERS-1 and ERS-2, were in orbits separated by 1 day) acquired during March 1996. It extended as far as the east coast, but, due to a phase “spike”, an unexplained phase gradient, phase continuity was not maintained beyond the southern limit indicated by sector 3. Due to the absence of bedrock inland, absolute velocities were obtained using balance velocities (with values of < 12 m a−1) as tie points. In all cases, the horizontal line-of-sight velocity estimate (U los) was converted to a downslope value (U ds) using slope information from the DEM. A comparison of a similar InSAR dataset with GPS measurements gave rms error estimates of < 4 m a−1 (Reference Joughin, Kwok and FahnestockJoughin and others, 1998) for U ds.
The three InSAR datasets provide coverage of several different flow regimes over the ice sheet: fast flow near the margins where the ice is flowing into outlet glaciers, part of the Northeast Greenland Ice Stream, as well as a large area of relatively slow flow (0–50 m a−1) in the interior. In the interior, however, it is important to note that the InSAR-derived velocities were tied to balance velocities in slow-moving areas.
U ds is a measure of the surface velocity. U b is an estimate of the depth-averaged velocity. To compare the two it is necessary to convert U b to a surface velocity, or U ds to a depth-averaged value. The ratio of depth-averaged to surface velocity depends primarily on the temperature profile in the ice. It typically varies between 0.8 and 1.0 (Reference PatersonPaterson, 1994). Here the ratio was obtained from the output of a three-dimensional thermomechanical model (Reference Huybrechts, Letréguilly and ReehHuybrechts and others, 1991). The model was run in a steady-state mode, where the ice thickness is kept fixed and the model physics is in equilibrium with the ice-sheet geometry and mass-balance data (personal communication from P. Huybrechts, 1998). The model has 14 layers. The depth-averaged velocity is the mean over these 14 layers, and the ratio was obtained by dividing this mean value by the surface velocity (layer 1). The mean ratio for the whole ice sheet was 0.925. The spatial pattern of the ratio is plotted in Figure 2.
GPS velocity data
Ten GPS velocity measurements, collected as part of a mass-balance experiment by the Byrd Polar Research Center, Ohio State University, were available for comparison with the balance velocities. Horizontal velocities at the sites ranged from 2 to 178 m a−1, and the errors in these estimates are negligible (about 1–2 cm a−1). The data were collected during three field seasons between the summers of 1995 and 1997 (personal communication from G. Hamilton, 1997). The velocities were calculated from measurements of position taken approximately 1 year apart. The locations of the GPS points are indicated in Figure 3 by white crosses.
Results and Discussion
The balance-velocity pattern over the ice sheet is shown in Figure 3. A comprehensive, detailed view of the velocity field is displayed, based on the assumption of steady-state, balanced conditions.
The balance velocities clearly delineate the pattern of flow in each drainage basin. The major ice divides are visible as areas of very low horizontal flow. All the main outlet glaciers and their catchment areas can be seen. Particularly striking is the large ice stream in the northeast, previously identified in SAR imagery (Reference Fahnestock, Bindschadler, Kwok and JezekFahnestock and others, 1993). A more detailed investigation of the balance velocities in this region is given in the next section.
There are some other obvious features relating to the general pattern of flow. On the west coast the flow appears to be largely unconstrained by bedrock relief. This has resulted in generally less well-defined outlet glaciers along most of the northwest coastline. By contrast, much of the rest of the ice sheet is dominated by a series of flow units with well-defined outlet glaciers and catchment areas which must reflect a fundamental difference between the continental margins on the west coast and those elsewhere. It should be noted that velocities close to the coast are less reliable, due to larger errors in the ice-thickness, DEM and ablation estimates in this region (discussed later). It is still possible, however, to place confidence in the pattern of drainage displayed and the relative contribution of different areas to the total flux at the margin.
Comparison with the GPS data
Table 1 provides a comparison between U b (corrected from a depth-averaged to a surface value) and GPS-derived velocities. Included here are values of balance velocity calculated using the finite-difference scheme described here and a flowline method (U bf) (Reference Joughin, Fahnestock, Ekholm and KwokJoughin and others, 1997). Bilinear interpolation was used to calculate the balance velocity at the same location as the GPS measurements. With only ten GPS points it is difficult to draw statistically meaningful conclusions. The agreement between U b20 and the GPS data, however, is surprisingly good. The mean difference is 4.4 m a−1 with a standard deviation of 9.4 m a−1. Removing the Jakobshavn catchment point brings these values down to 1.8 ± 4.7 m a−1 (or 6.5 ± 16.8%). This provides support for the methodology adopted here.
Comparison between balance velocities and InSAR data
The results are illustrated in Figure 4a–d.
The 785 km strip
Over much of the slower-moving central part of sector 3 the agreement between U b20 and U ds is within about 5 m a−1. It should be noted that balance velocities were used as tie points for the InSAR data in this region. About 100–250 km from the northern end of the strip is an area with large relative and absolute differences, however. This is because the direction of flow is almost perpendicular to the satellite look direction in this region, resulting in a large sensitivity to errors in both U los and the angle between the look direction and the direction of flow (ϕ). Figure 5 shows the error in downslope velocity as a function of ϕ for a fixed phase error of π rad in U los. Results for the three repeat periods relevant to the ERS mission are plotted. The lines in Figure 5 were calculated based on the assumption that each fringe in an interferogram represents 7.6 cm horizontal displacement. The graph in Figure 5 does not take into account errors in ϕ, which are difficult to estimate and, depending on the local flow conditions, highly variable at shorter wavelengths (see discussion below). The error in U ds exceeds 20 m a−1 at 47° for tandem phase data and 78° for 3 day repeat data. This particular error can be minimized with the use of 35 day repeat data. There are, however, other factors (such as loss of coherence between the two scenes and modulo 2π phase ambiguities due to the displacement producing phase changes exceeding 2π) that limit the use of this longer repeat period in glaciological applications. A thorough treatment of the other errors associated with the InSAR measurement principle has been provided elsewhere (Reference Joughin, Kwok and FahnestockJoughin and others, 1996a). With adequate ground control, U los can be obtained with an accuracy of a few metres per year. The conversion from U los to U ds introduces a further error, however, due to uncertainties in ϕ. Furthermore, atmospheric effects can introduce phase shifts of about 180° which are also difficult to account for and remove (Reference Hanssen, Zebker, Klees and BarlagHanssen and others, 1998).
The other area of poor agreement, in absolute (but not relative) terms, is in the vicinity of the Northeast Greenland Ice Stream. Examination of the DEM in this region (Fig. 6) indicates that the flow is strongly influenced by longitudinal stresses, so the choice of smoothing distance required to remove the effects of longitudinal stresses is particularly important. An unsmoothed shaded isometric plot looking down the ice stream is shown in Figure 6a together with smoothed versions in Figure 6b and c. Using a smoothing distance of 10Z, two “channels” bounding the ice stream are visible (Fig. 6b), and the finite-difference scheme places the flow partly in these channels. If a smoothing distance of 20Z is used, the bifurcation of the flow does not occur and there is an almost constant ratio between U b20 and U ds. A graph of velocity profiles across the flow is presented in Figure 7, demonstrating, quantitatively, the behaviour described above. The location of the profiles is marked by the white line in Figure 3. U b20 and U b10 are shown alongside the fully corrected InSAR data. In the 10Z smoothing case, the ice flux is concentrated in the northern channel at the boundary of the ice stream and near the centre. Using a 20Z smoothing factor, this no longer occurs and the general shape of the profile matches the interferometry well. The level of agreement can also be seen in Figure 4d. There is better agreement throughout the southern half of sector 3 but especially in the region of the ice stream, using a smoothing distance of 20Z.
Figure 8 shows the spatial pattern of differences between U b20 and U b10. Positive differences occur when U b10 is greater than U b20. The mass flux in both cases is the same, so areas of positive differences must be associated with nearby areas of negative differences. This is most easily seen around the Northeast Greenland Ice Stream. Here, the U b10 velocity field generally concentrates flow at the margins of the stream, in “channels” clearly visible in Figure 6b. There is an associated reduction in velocity estimate in the central part of the ice stream. Similar behaviour, where the flow is split into a larger number of narrower, faster-flowing “channels”, occurs for several other outlet glaciers for the U b10 velocity field.
The flowline method for deriving U b, used by Reference Joughin, Fahnestock, Ekholm and KwokJoughin and others (1997), is also shown in Figure 7. It tends to concentrate flow too closely to the centre of the ice stream. Comparison between U b20 and U bf suggests that this effect occurs for other outlet glaciers and fast-flow features on the ice sheet. In the flowline method a fixed smoothing distance of 20 km was used on the DEM. The problem was attributed to smoothing introduced by the radar altimeter (used to derive the DEM) and to the processing employed. Figure 6a indicates that the former effect (altimeter smoothing) is not the problem. The ice thickness in this region is about 2000 m, indicating that the smoothing distance used to produce U b10 and Figure 6b is close to the 20 km fixed value used by Reference Joughin, Fahnestock, Ekholm and KwokJoughin and others (1997). U b10 and U bf, plotted in Figure 7, show different behaviour, however. It seems likely, therefore, that the increased velocities in the centre of the feature resulted, not from the smoothing applied to the DEM, but from another aspect of the methodology.
The discrepancy between U b20 and U ds in the region of the Northeast Greenland Ice Stream highlights a problem with the use of InSAR velocities derived from a single ascending or descending pair of images. In this case it is necessary to use a DEM (or other information on flow direction) to convert U los to U ds. If a DEM is used, the conversion implicitly incorporates the shallow-ice approximation. However, the InSAR velocities provide information at much shorter wavelengths than 10–20Z. Thus, locally, in areas where longitudinal stresses are important and where the flow direction deviates from the regional slope aspect, the correction from U los to U ds may introduce significant errors into the small-scale velocity field. This problem can be overcome by combining ascending and descending passes (Reference Joughin, Kwok and FahnestockJoughin and others, 1998). This has been achieved in a few cases, but, due to the limited availability and coverage of SAR data, it is often not possible. When considering the regional velocity pattern averaged over distances of about 20Z or more, however, this issue is not relevant.
Humboldt Gletscher region
In the interior of the ice sheet, where the flow is homogeneous, the accuracy of the input datasets available controls the reliability of U b. Errors in surface slope are insignificant (Reference Bamber, Ekholm and KrabillBamber and others, 1998), and there is no ablation. The error estimate for these areas is 14%. Agreement between U b20 and U ds in sector 1 is about 5–10%. As the InSAR velocities were fixed using balance velocities for this sector, it is not surprising that there is relatively good agreement. If independent GPS data had been available to provide an absolute velocity reference for the InSAR data, it would have been possible to examine whether steady-state, balanced conditions were being met in this region.
The northern sector (2) displays much poorer agreement. This is due primarily to errors in the ice-thickness data used to calculate the balance velocities near the coast. These values have, in general, been extrapolated from a coarse grid of airborne data (Reference Letréguilly, Huybrechts and ReehLetréguilly and others, 1991b), and in areas with a large gradient in Z (e.g. near the ice edge and small drainage basins on the east coast) the relative errors in Z can be substantial. Figure 4d shows that the relative difference in velocities increases towards the coast, reaching a maximum at the ice edge. Errors in the InSAR velocity data have been estimated as only ±2.3 m a−1 for this area, and clearly the balance velocities provide an inaccurate representation due to errors in the input data used to calculate them. Near the margins of the ice sheet (within about 50 km of the ice edge) ablation rates also need to be estimated, introducing a further level of uncertainty in this region. Furthermore, for surface slopes greater than about 1.0°, errors in the DEM increase substantially (Reference Bamber, Ekholm and KrabillBamber and others, 1998) and the smoothing distance used becomes particularly important. We therefore believe that in these marginal areas, without better input data, the balance velocities do not provide a reliable proxy for measured values.
Conclusions
Balance velocities are clearly a useful way of providing a synoptic view of the depth-averaged velocity field of large ice masses. Agreement between a small number of GPS data was surprisingly good, suggesting that, inland from the margins, balance velocities could provide a reliable and useful constraint in numerical ice-sheet models. Compared with InSAR measurements, they provide a measure of the time- and depth-averaged velocity. The comparisons undertaken in this study have highlighted the respective weaknesses in both types of measurement. In particular, some of the problems related to converting line-of-sight to downslope velocities were noted, especially when short-wavelength flow features are of interest and when using tandem phase ERS SAR data. Balance velocities in the ablation region of the ice sheet are not reliable, although they provide information about the distribution of flow at the margins. Both the method of calculating the balance velocity and the smoothing distance used to remove the effects of longitudinal stresses were important in determining the quality and usefulness of the resultant dataset. This was highlighted by an investigation of balance velocities in the region of the Northeast Greenland Ice Stream.
Acknowledgements
The authors would like to thank R. Warner of the Cooperative Research Centre for the Antarctic and Southern Ocean Environment (Antarctic CRC), Hobart, Australia, for providing the balance-velocity finite-difference code, G. Hamilton of the Byrd Polar Research Center for providing the GPS data and P. Huybrechts for providing the numerical modelling data. R.J.H was funded under U.K. National Environment Research Council grant GR3/9791. The authors are also grateful to the scientific editor and three anonymous referees for their valuable comments which led to improvements in this paper.