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Assessing the effects of fjord geometry on Greenland tidewater glacier stability

Published online by Cambridge University Press:  16 October 2024

Elizabeth Fischer*
Affiliation:
Geophysical Institute, University of Alaska Fairbanks, Fairbanks, AK, USA
Andy Aschwanden
Affiliation:
Geophysical Institute, University of Alaska Fairbanks, Fairbanks, AK, USA
*
Corresponding author: Elizabeth Fischer; Email: eafischer2@alaska.edu
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Abstract

Tidewater glaciers frequently advance and retreat in ways uncoupled from climate forcing. This complicates the task of forecasting the evolution of individual glaciers and the overall Greenland ice sheet, much of which is drained by tidewater glaciers. Past observational research has identified a set of processes collectively known as the tidewater glacier cycle (TGC) to describe tidewater glacier evolution in four stages: the advancing stage, the extended stage, the retreating stage and the retreated stage. Once glacier retreat is initiated, the TGC is thought to depend largely on the glacier's calving rate, which is controlled by fjord geometry. However, there has been little modeling or systematic observational work on the topic. Measuring calving rates directly is challenging and thus we developed an averaged von Mises stress state at the glacier terminus as a calving rate proxy that can be estimated from surface velocities, ice thickness, a terminus position and subglacial topography. We then analyzed 44 tidewater glaciers in Greenland and assessed the current state in the TGC for them. Of the 44 glaciers, we find that fjord geometry is causing instability in ten cases, vs stability in seven, with 11 in rapid retreat and 16 have been historically stable.

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Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution and reproduction, provided the original article is properly cited.
Copyright
Copyright © The Author(s), 2024. Published by Cambridge University Press on behalf of International Glaciological Society
Figure 0

Figure 1. Datasets used in this study. Each dataset is represented by a yellow tag, used in Figure 2. See Section 4 for further details.

Figure 1

Figure 2. Models and methods used in this paper: blue ovals are theoretical models, gray rectangles are methods and green rounded rectangles are methods that produce an end result of this study. Arrows represent dependencies, for example Up Area values (Section 5.2) are required to produce Terminus Residuals. Section 5 presents the frontal melt model by Slater and others (2019) driven by ocean warming, and uses it to remove effects of ocean warming from terminus data, resulting in terminus residuals. Section 6 introduces the von Mises calving law and derives $\bar {\sigma _{\scriptscriptstyle T}}$, a proxy for calving rate, which it regresses against terminus residuals to provide diagnostics on tidewater glaciers. Section 7 uses the data to show why the von Mises calving law is a reasonable model.

Figure 2

Table 1. Symbols used in this paper, organized by section where they are introduced

Figure 3

Table 2. Summary of results per glacier

Figure 4

Figure 3. Local high-resolution grids (green rectangles) defined by the MEaSUREs dataset, NSIDC-0481.

Figure 5

Figure 4. Location and stability assessment of the 44 Greenland tidewater glaciers in this study. Of the 44 glaciers, 16 glaciers are stable, 7 are stabilizing, 10 are destabilizing and 11 are in retreat. Subglacial topography is from BedMachine v3 (Morlighem and others, 2014) and surface speeds from ITS_LIVE (Gardner and others, 2019).

Figure 6

Figure 5. Aerial map of AP Bernstorff Glacier in Southeast Greenland, with terminus as of 2005. Digitized terminus datasets typically come in vector format (black line on top of red gridcells), which is rasterized (red gridcells). To help the computer determine the extent of the fjord, we drew a rough polygon around the fjord by hand (red shaded area), and identified a point (red star) that is upstream of all expected termini used in this study. Based on these inputs and bathymetry from BedMachine, the computer was able to delineate the extent of the fjord (green) as those gridcells that are below sea level and reachable from the identified point via flood fill.

Figure 7

Figure 6. Computation of the terminus residual for AP Bernstorff glacier. Blue dots: terminus positions as predicted by a thermal forcing model from Slater and others (2019). Annual predictions are available because annual thermal forcing estimates are available; however, note that the Slater model coefficients are determined based on regressions involving 5 year averaged data. Orange plusses: terminus positions based on up area calculated from termini in Wood and others (2021) and calibrated to terminus positions from Slater and others (2019). Black lines: The terminus residual is the difference between the two predictions. The increasingly negative terminus residual means the glacier is retreating faster than Slater and others (2019) would predict based on thermal forcing alone, indicating a destabilizing influence of fjord geometry. The Fjord Map for this glacier (Fig. 15) confirms that runaway retreat is well underway.

Figure 8

Figure 7. (a) von Mises tensile stress $\tilde {\sigma }$ shown for Kangilleq and Sermeq Silarleq as computed by the PISM, based on a sample velocity field from 2018. (b) Ice velocity vectors and sample terminus (red line), used in conjunction with $\tilde {\sigma }$ to obtain calving proxy $\bar {\sigma _{\scriptscriptstyle T}}$. Ice velocities downstream of the terminus do not reflect grounded ice, they could be an ice shelf or ice melange.

Figure 9

Figure 8. Aerial map of AP Bernstorff Glacier in Southeast Greenland showing incomplete data for ice velocities that happen in some cases. Annual ITS_LIVE velocity data within the fjord are overlaid on bedmap elevation and fjord bathymetry. Ice velocity data are not shown outside the fjord, where bedrock is above sea level. Terminus measurements within the year are shown in red, with three termini available in 1990, and just one each in 1996 and 2005. Velocity data coverage is sometimes incomplete, especially close to the terminus or near the margins of the glacial trough. Line integrals in this study disregard any portion of the terminus with missing data. Although the equation for $\sigma _{\scriptscriptstyle T}$ is robust to missing data at the terminus, it can still fail for lack of data, as in 1996.

Figure 10

Figure 9. Calving proxy $\sigma _{\scriptscriptstyle T}$ value computed for one glacier (Hayes N); plotted by velocity year (year of the velocity field used) and terminus year (year of the terminus used), where the velocity year is always less than the terminus year. Although $\sigma _{\scriptscriptstyle T}$ varies due to the position of the terminus, the largest variation usually occurs due to changes in the overall ice velocity field: some years a glacier may be moving faster, whereas other years it may be moving more slowly. $\sigma _{\scriptscriptstyle T}$ is averaged across velocity fields of different years to obtain a single value $\bar {\sigma _{\scriptscriptstyle T}}$ for each year's terminus.

Figure 11

Figure 10. Implied $\sigma _{\it \scriptsize \hbox {max}}$ parameter obtained by fitting $\sigma _{\scriptscriptstyle T}$ computed using same-year velocity and terminus measurements, to calving rate obtained by residuals of other quantities from Wood and others (2021) (Eqn (14)), and grouped by either glacier or year. The red line is the median, the box extends to the edge of the first and third quartiles, the whiskers extend to the furthest data point in the first and third quartiles and outliers are not shown. (a) $\sigma _{\it \scriptsize \hbox {max}}$ grouped by glacier. For most glaciers, $\sigma _{\it \scriptsize \hbox {max}}$ lies in the range 250–350 kPa, with some outliers. Occasional negative values of $\sigma _{\it \scriptsize \hbox {max}}$ are non-physical and caused by issues with Wood and other's data: $\sigma _{\scriptscriptstyle T}$ is always positive. Consistent value across most glaciers supports von Mises calving law as a reasonable model. (b) $\sigma _{\it \scriptsize \hbox {max}}$ across all glaciers grouped by year. Consistent year-to-year stability supports von Mises calving law as a reasonable model.

Figure 12

Figure 11. Glacier categorization flowchart. Glaciers that have moved <600 m over the study period are considered stable so far. Otherwise, a regression between the calving proxy $\bar {\sigma _{\scriptscriptstyle T}}$ and the terminus residual $l_{\epsilon }$ is performed. If that regression lacks significance at p-value of 0.21, then the glacier is considered to already be in rapid retreat. Otherwise, the sign of the regression coefficient ν distinguishes between destabilizing geometry (negative sign) vs stabilizing geometry (positive sign).

Figure 13

Figure 12. Analysis of glaciers that destabilize upon retreat. (a) 5 year Slater relative terminus (blue) and melt (green crosses) used in Slater regressions; and annual Wood relative terminus (orange). Slater (blue) and Wood (orange) relative termini should be similar because they measure the same physical quantity. Predictions from the Slater thermal forcing model are not shown. (b) Regression of calving proxy $\bar {\sigma _{\scriptscriptstyle T}}$ vs relative terminus residuals as per Slater. (c) Reference map of fjord. Although thermal forcing has decreased since 2015, retreat has continued. Based on fjord geometry and recent decreases in retreat rate, Puisortoq N and Eqip Sermia might stabilize soon; however, that is speculation because the terminus has not yet had a chance to ‘see’ these potential pinning points, and thermal forcing could cause continued retreat in any case.

Figure 14

Figure 13. Analysis of glaciers that stabilize upon retreat. (a) 5 year Slater relative terminus (blue) and melt (green crosses) used in Slater regressions; and annual Wood relative terminus (orange). Slater (blue) and Wood (orange) relative termini should be similar because they measure the same physical quantity. Predictions from the Slater thermal forcing model are not shown. (b) Regression of calving proxy $\bar {\sigma _{\scriptscriptstyle T}}$ vs relative terminus residuals as per Slater. (c) Reference map of fjord. Kujalleq's terminus has not moved enough to adequately sample changes in fjord geometry. And from the map, it Lille now terminates near the head of the fjord, where water becomes more shallow with further retreat.

Figure 15

Figure 14. Analysis of glaciers for which a least square fit of terminus position has retreated <600 m over the study period; and due to lack of sampling from terminus movement, were statistically insignificant. (a) 5 year Slater relative terminus (blue) and melt (green crosses) used in Slater regressions; and annual Wood relative terminus (orange). Slater (blue) and Wood (orange) relative termini should be similar because they measure the same physical quantity. Predictions from the Slater thermal forcing model are not shown. (b) Regression of calving proxy $\bar {\sigma _{\scriptscriptstyle T}}$ vs relative terminus residuals as per Slater. (c) Reference map of fjord.

Figure 16

Figure 15. Glaciers that changed their behavior over the course of the study, confounding the linear model. All four of these glaciers retreated faster in the past but have since stabilized, or begun to stabilize. (a) 5 year Slater relative terminus (blue) and melt (green crosses) used in Slater regressions; and annual Wood relative terminus (orange). Slater (blue) and Wood (orange) relative termini should be similar because they measure the same physical quantity. Predictions from the Slater thermal forcing model are not shown. (b) Regression of calving proxy $\bar {\sigma _{\scriptscriptstyle T}}$ vs relative terminus residuals as per Slater. (c) Reference map of fjord.

Figure 17

Figure 16. Glaciers that retreated steadily through a uniform portion of the fjord. (a) 5 year Slater relative terminus (blue) and melt (green crosses) used in Slater regressions; and annual Wood relative terminus (orange). Slater (blue) and Wood (orange) relative termini should be similar because they measure the same physical quantity. Predictions from the Slater thermal forcing model are not shown. (b) Regression of calving proxy $\bar {\sigma _{\scriptscriptstyle T}}$ vs relative terminus residuals as per Slater. (c) Reference map of fjord.

Figure 18

Figure 17. Glaciers with poorly defined or complex fjord geometry. (a) 5 year Slater relative terminus (blue) and melt (green crosses) used in Slater regressions; and annual Wood relative terminus (orange). Slater (blue) and Wood (orange) relative termini should be similar because they measure the same physical quantity. Predictions from the Slater thermal forcing model are not shown. (b) Regression of calving proxy $\bar {\sigma _{\scriptscriptstyle T}}$ vs relative terminus residuals as per Slater. (c) Reference map of fjord. Hayes NN and Uunartit exist in broad areas without clear fjord boundaries: the straight lines defining the ‘edges’ of these fjords are edges of the manually drawn polygons and do not represent any actual physical boundary. Savissuaq WW has a well-defined fjord, but complexity arises in this case as the terminus retreats through a branch point.

Figure 19

Figure 18. Edge case glaciers within each category: Kangilernata and Uunartit are destabilizing and stabilizing, respectively, and have the highest p-values in their classifications. AP Bernstorff is in retreat and has the lowest p-value in its classification. (a) 5 year Slater relative terminus (blue) and melt (green crosses) used in Slater regressions; and annual Wood relative terminus (orange). Slater (blue) and Wood (orange) relative termini should be similar because they measure the same physical quantity. Predictions from the Slater thermal forcing model are not shown. (b) Regression of calving proxy $\bar {\sigma _{T}}$ vs relative terminus residuals as per Slater. (c) Reference map of fjord.

Figure 20

Figure 19. Mogens Heinesen S, which is mis-classified due to two outlier points in the regression of $\sigma _{T}$ vs residuals (column b). (a) 5 year Slater relative terminus (blue) and melt (green crosses) used in Slater regressions; and annual Wood relative terminus (orange). Slater (blue) and Wood (orange) relative termini should be similar because they measure the same physical quantity. Predictions from the Slater thermal forcing model are not shown. (b) Regression of calving proxy $\bar {\sigma _{\scriptscriptstyle T}}$ vs relative terminus residuals as per Slater. (c) Reference map of fjord.

Figure 21

Figure 20. Illustration of line integrals on a grid. (a) Schematic of gridded ice mask, in which the terminus boundary follows gridcell boundaries; hatched areas are the edge of the fjord. (b) Gridcell A has west-to-east flux flowing into gridcell B, based on the u component of the vector field. Such cells are identified by the rule that A must be in the fjord and ice covered; whereas B must be in the fjord and ice-free. (c) Illustration of gridcells, in red, that have west-to-east flux across the gridded terminus.

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