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Influence of seasonally varying sea-ice concentration and subsurface ocean heat on sea-ice thickness and sea-ice seasonality for a ‘warm-shelf’ region in Antarctica

Published online by Cambridge University Press:  29 June 2023

Benjamin T. Saenz*
Affiliation:
Institute of Arctic and Alpine Research, University of Colorado Boulder, Boulder, Colorado, 80309-0450, USA
Darren C. McKee
Affiliation:
Department of Environmental Sciences, University of Virginia, Charlottesville, Virginia, 22904, USA
Scott C. Doney
Affiliation:
Department of Environmental Sciences, University of Virginia, Charlottesville, Virginia, 22904, USA
Douglas G. Martinson
Affiliation:
Lamont-Doherty Earth Observatory of Columbia University, Palisades, New York, 10964, USA
Sharon E. Stammerjohn
Affiliation:
Institute of Arctic and Alpine Research, University of Colorado Boulder, Boulder, Colorado, 80309-0450, USA
*
Corresponding author: Benjamin T. Saenz; Email: blsaenz@gmail.com
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Abstract

Processes driving changes in sea-ice seasonality and sea-ice thickness were explored for a ‘warm-shelf’ region along the West Antarctic Peninsula using vertically coupled sea-ice-ocean thermodynamic simulations, with and without assimilated satellite sea-ice observations and moored ocean temperature observations. Simulations with assimilated sea-ice observations permitted investigation of surface [thermodynamic and dynamic (e.g., wind-driven)] processes affecting sea-ice thickness and seasonality. Assimilation of quasi-weekly variability in the depth and temperature of the deep warm pycnocline permitted examination of subsurface processes affecting sea-ice. Simulations using assimilated sea-ice observations (and implied motion) always produced greater surface heat fluxes and overall thinner sea ice. Assimilating seasonal and quasi-weekly variability in the depth and temperature of the pycnocline modified the start of the sea-ice season by −23 to +1 d, and also modified the sea ice thickness/seasonality to be thinner/shorter or thicker/longer at sub-seasonal and seasonal timescales, highlighting a mechanism where a shoaling pycnocline enhanced upward deep-water heat fluxes as transient surface-induced turbulence had a greater effect on a reduced mixed layer volume. The observed interplay of surface, subsurface, and sea-ice modulation of ocean-atmosphere heat transfer underscores the importance of representing the interaction between sea-ice concentration and upper ocean variability in climate projections.

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Article
Creative Commons
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), 2023. Published by Cambridge University Press on behalf of The International Glaciological Society
Figure 0

Figure 1. Conceptual diagram showing the seasonal progression of heat and salt fluxes and related feedback processes that control sea-ice formation and melt. The vertical axis is not to scale but captures the features and fluxes of a ‘warm’ continental shelf area (e.g., Fig. 2). Red denotes relatively warm waters; blue represents waters at or near the freezing point. For scale, the thermodynamic sea ice thickness typically reaches a maximum of ~70 cm (for a warm shelf region) and snow can accumulate up to ~15 cm. The seasonally warmed and freshened summer mixed layer depth can be 20 to 50 m (dotted black line, far left and far right) while the bottom of the winter water layer can be at 80 to >150 m depth (solid black line; Venables and Meredith, 2014), where the permanent pycnocline marks the transition to warm and salty Circumpolar Deep Water (CDW) further below.

Figure 1

Figure 2. Map of the simulation study area showing the Palmer LTER sampling grid, and the mooring location where deep ocean mooring observations and atmospheric forcing reanalyses (ECMWF Interim; Berrisford and others, 2011) were used to perform coupled sea-ice-ocean model experiments. Coastlines and ice contours are derived from the SCAR Antarctic Digital Database (SCAR, 2020) available through the QAntarctica (NPI, 2020) package, and the bathymetry was produced by the Global Multi-Resolution Topography synthesis (Ryan and others, 2009). Currents are reproduced from McKee and Martinson (2020b).

Figure 2

Figure 3. Direct comparison of surface conditions between the three modeled years (2007, 2008, 2011). (a) Mean monthly 2-m air temperature and (b) wind speed from ECWMF Interim reanalyses in the vicinity of the Palmer LTER mooring location (Fig. 2). (c) NSIDC Daily Sea-Ice concentration (NASA Team algorithm; DiGirolamo and others, 2022) for the same three years from the nearest gridpoint to the mooring location. (d) Simulated sea-ice and snow thickness evolution using both assimilated sea-ice and ocean temperature observations at the mooring location (i.e., the ITC simulation; see also Fig. 4, bottom row).

Figure 3

Figure 4. Time series of simulated sea-ice (downward from 0 on y-axis, and shaded) and snow (upward on y-axis) thicknesses (meters) for the four simulation types, across three different years. Sea ice salinity is indicated by color.

Figure 4

Table 1. Winter ice season duration and sea ice mass balance and relevant forcing variables

Figure 5

Figure 5. Vertical water column temperature profiles through time, comparing FREE (a, c, e subplots) and ITC (b, d, f subplots) simulations for 3 different years. Vertical dashed lines in June and July indicate the sea-ice onset period (black = FREE, red = TC, green = IC/ITC [observed]). Purple vertical dashed lines indicate the end of the satellite-observed (IC/ITC [observed]) sea-ice period. Sea ice does not melt in the FREE simulations. The density-derived mixed layer depth (in cyan) and KPP-defined turbulent mixing depth (gray line) are also indicated (see Section 3.5).

Figure 6

Figure 6. Comparison of (KPP-defined) turbulent mixing depth and deep pycnocline depth (density-defined depth of the warm CDW) between the IC and ITC simulations for 2007 (subplot a), 2008 (subplot b), and 2011 (subplot c). The vertical black dashed lines enclose the satellite-observed sea-ice period.

Figure 7

Figure 7. Stacked directional net heat fluxes for different simulation years at physical interfaces (subplots a, b, c) and difference between simulations (subplots d, e, f, g) in W m−2. Vertical heights represent weekly-averaged flux magnitudes (or differences of flux magnitudes). The vertical black dashed lines enclose the satellite-observed sea-ice period. Subplots a, b, and c represent simulation ITC, and are comparable between years. The ITC fluxes shown represent the best approximation by the 1D KEI model of the dynamic and thermodynamic process that drive sea-ice evolution. Subplots d, e, and f represent the difference of simulations ITC-IC, and are comparable between years. The differences between ITC and IC simulations represent estimates of the flux contributions due to dynamic subsurface forcing. Subplot g is distinct from the others; it shows the difference between simulation ITC-TC for 2007, and is indicative of the flux contributions due to dynamic surface forcing.

Figure 8

Table 2. Autumn sea ice onset dates and relevant forcing variables. SAT is surface air temperature

Figure 9

Table 3. Spring sea-ice melt/break-up dates and relevant forcing variables. SAT is surface air temperature

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