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Effects of spatial discretization in ice-sheet modelling using the shallow-ice approximation

Published online by Cambridge University Press:  08 September 2017

J. Van Den Berg
Affiliation:
Institute for Marine and Atmospheric Research Utrecht, Utrecht University, Princetonplein 5, 3584 CC Utrecht, The Netherlands. E-mail: j.vandenberg@phys.uu.nl
R.S.W. Van De Wal
Affiliation:
Institute for Marine and Atmospheric Research Utrecht, Utrecht University, Princetonplein 5, 3584 CC Utrecht, The Netherlands. E-mail: j.vandenberg@phys.uu.nl
J. Oerlemans
Affiliation:
Institute for Marine and Atmospheric Research Utrecht, Utrecht University, Princetonplein 5, 3584 CC Utrecht, The Netherlands. E-mail: j.vandenberg@phys.uu.nl
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Abstract

This paper assesses a two-dimensional, vertically integrated ice model for its numerical properties in the calculation of ice-sheet evolution on a sloping bed using the shallow-ice approximation. We discuss the influence of initial conditions and individual model parameters on the model’s numerical behaviour, with emphasis on varying spatial discretizations. The modelling results suffer badly from numerical problems. They show a strong dependence on gridcell size and we conclude that the widely used gridcell spacing of 20 km is too coarse. The numerical errors are small in each single time-step, but increase non-linearly over time and with volume change, as a result of feedback of the mass balance with height. We propose a new method for the calculation of the surface gradient near the margin, which improves the results significantly. Furthermore, we show that we may use dimension analysis as a tool to explain in which situations numerical problems are to be expected.

Information

Type
Research Article
Copyright
Copyright © International Glaciological Society 2006
Figure 0

Fig. 1. Staggered grid in one dimension.

Figure 1

Fig. 2. Staggered grid in two dimensions.

Figure 2

Table 1. Parameter values for the experiments, with λ the bedrock slope, β the mass-balance gradient, Bmax the cut-off value of the mass balance, E the ELA, and initial condition that of the ice sheet at the start of the experiment. The ice sheets used as initial conditions in experiments 2 and 3 are calculated using the original solution. The starting condition for experiment 2 is the result of experiment 1 for ∆x = 1 km. For experiment 3, instead of the result from experiment 1, the steady-state ice sheet for E = 150 m was used

Figure 3

Fig. 3. Top: Ice volume/area as a function of time for the parameter values listed in Table 1, experiment 1, for several gridpoint distances ∆x for (a) the two-dimensional type II model (volumes) and (b) the one-dimensional type I and II models (areas). The dashed lines represent the reference type II solutions, the solid lines the type II solutions calculated with a modified surface gradient (section 4.1.4), and the dash– dotted lines represent solutions calculated with a type I model. All volume curves are scaled such that the reference type II solution with ∆x = 1 km is equal to 1 for the one-dimensional case and ∆x = 2 km is equal to 1 for the two-dimensional case. The lower panel (c) shows steady-state profiles for the same discretizations with height in metres on the y axis and distance from the centre in kilometres, calculated with the one-dimensional type II model. The thick, black, dashed line is the ELA, in this case constant at 250 m.

Figure 4

Fig. 4. Relative ice area as a function of time for several discretizations for experiment 2 (see Table 1). All curves are scaled relative to the reference solution calculated with ∆x = 1 km. The solid lines represent the solutions calculated with a modified surface gradient, and the dashed lines represent the type II reference solutions.

Figure 5

Fig. 5. Fig. 5. Same as Figure 4, but for experiment 3.

Figure 6

Fig. 6. Steady-state ice areas for two discretizations (a) ∆x = 1km and (b) ∆x = 20 km both for the type I (open circles) and the type II model (closed circles) as a function of ELA. The solid lines in (a) show branches of possible stable steady-state solutions. The grey areas in (b) show regions for possible stable steady-state solutions; lightest grey is the region for the type II model, the slightly darker grey that for the type I model and the darkest where the regions for both model types overlie each other.

Figure 7

Fig. 7. Schematic drawing of the ice margin. (a) Line 1 represents the numerically calculated surface gradient at the last point before the ice margin. The thick dash–dotted line (2) represents the true surface gradient. (b) The lines represent the surface gradient at the last few points before the ice margin, except the last point, which is given by line 2 in (a).

Figure 8

Fig. 8. (a) Steady-state areas as a function of bedrock slope λ for several discretizations (Table 1, experiment 4). (b) Steady-state areas as a function of mass-balance gradient β (Table 1, experiment 5). (c) Steady-state areas as a function of maximum mass balance Bmax (Table 1, experiment 6). All curves are scaled relative to the reference solution calculated with ∆x = 1 km. The solid lines represent the solutions calculated with a modified surface gradient, and the dashed lines represent the type II reference solutions. Colours of lines: see Figure 5.

Figure 9

Fig. 9. (a) Area as a function of time for a sinusoidal bedrock and E = 130 m for several discretizations. The dashed curves represent the reference solutions, the solid lines the solutions calculated with a modified surface gradient. All curves are scaled relative to the reference solution calculated with ∆x = 1 km. (b) Steady-state solutions for the same discretizations with height in metres on the y axis and distance from the centre in kilometres.