Abstract

Abstract. The calving fronts of many tidewater glaciers in Greenland have been undergoing strong seasonal and interannual fluctuations. Conventionally, calving front positions have been manually delineated from remote sensing images. But manual practices can be labor-intensive and time-consuming, particularly when processing a large number of images taken over decades and covering large areas with many glaciers, such as Greenland. Applying U-Net, a deep learning architecture, to multitemporal synthetic aperture radar images taken by the TerraSAR-X satellite, we here automatically delineate the calving front positions of Jakobshavn Isbræ from 2009 to 2015. Our results are consistent with the manually delineated products generated by the Greenland Ice Sheet Climate Change Initiative project. We show that the calving fronts of Jakobshavn's two main branches retreated at mean rates of -117±1 and -157±1 m yr−1, respectively, during the years 2009 to 2015. The interannual calving front variations can be roughly divided into three phases for both branches. The retreat rates of the two branches tripled and doubled, respectively, from phase 1 (April 2009–January 2011) to phase 2 (January 2011–January 2013) and then stabilized to nearly zero in phase 3 (January 2013–December 2015). We suggest that the retreat of the calving front into an overdeepened basin whose bed is retrograde may have accelerated the retreat after 2011, while the inland–uphill bed slope behind the bottom of the overdeepened basin has prevented the glacier from retreating further after 2012. Demonstrating through this successful case study on Jakobshavn Isbræ and due to the transferable nature of deep learning, our methodology can be applied to many other tidewater glaciers both in Greenland and elsewhere in the world, using multitemporal and multisensor remote sensing imagery.

Highlights

  • Glacier retreating is one of the processes that control the recent speedups of Greenland’s tidewater glaciers (King et al, 2018)

  • We present our results in the following order: (1) the network-delineated calving fronts from 16 April 2009 to 23 December 2015, which are shown in a movie (Movie S1 in the Supplement); (2) two examples of our automatically delineated calving fronts (Fig. 4); (3) retreat rates (Table 1) and time series of calving front variations (Fig. 5); (4) interannual calving front variation (Figs. 6 and 7)

  • This study designs a method based on deep convolution neural networks (DCNNs) to automatically delineate calving fronts of Jakobshavn Isbræ from TerraSAR-X synthetic aperture radar (SAR) images acquired from April 2009 to December 2015

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Summary

Introduction

Glacier retreating is one of the processes that control the recent speedups of Greenland’s tidewater glaciers (King et al, 2018). It accelerates to compensate for the loss of downstream buttress. As suggested decades ago by Meier and Post (1987), play an essential role as the glaciers retreat over depressions in the bedrock topography. Joughin et al (2008a) indicated that dynamic instabilities caused Helheim and Kangerdlugssuaq glaciers to speed up as they retreated into an overdeepened basin whose bed is retrograde between 2001 and 2006. An accurate and detailed quantification of calving front variations would improve our understanding of the controlling mechanisms of glacier retreat. Observations of retreat may serve as initial indicators for other dynamic variations such as the glacier acceleration (Moon and Joughin, 2008). The mechanisms behind the numerous and complex controls on front positions are not yet fully understood

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