News Release

Groundbreaking new data can make us better understand glaciers.

It is not a secret that glaciers are melting, and that it causes a problem with sea levels rising, but a new way of reading, collecting, and analyzing data using AI, can make us better understand what is happening with the glaciers in the Arctic.

Peer-Reviewed Publication

GRID-Arendal

The majority of Svalbard’s marine-terminating glaciers are retreating with a couple of exceptions

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The majority of Svalbard’s marine-terminating glaciers are retreating with a couple of exceptions

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Credit: Dr. Tian Li

On February 20, a dedicated team of researchers presented a new high-resolution calving front dataset from 149 glaciers in Svalbard spanning from 1985 to 2023. This innovative dataset, featured in the Earth System Science Data journal, offers an important tool to better understand the mechanisms behind glacier calving, or the breakup of icebergs, which can help to enhance our understanding of the climatic drivers behind glacier loss in Svalbard and the Arctic.  

The mass loss of glaciers has accelerated in the past several decades, significantly contributing to global sea-level rise. However, many of the mechanisms behind glacier loss, in particular calving dynamics of marine-terminating glaciers, have not been well understood. “This new study uses a state-of-the-art deep learning model to generate a 38-year record of calving front changes for Svalbard tidewater glaciers with an unprecedented density, using high-resolution satellite images,” says Dr. Tian Li, a researcher in the EU funded Arctic PASSION project based at Bristol Glaciology Centre and the lead author of the study.

The dataset includes almost 125,000 individual calving front traces with the result showing a retreating trend for the majority of Svalbard’s glaciers. Using the extensive satellite data catalog, the researchers were able to analyze seasonal and annual variations, as well as capture the timing of surging events, where the glacier moves substantially over a short period. These findings can help to better understand and predict future glacier loss in the Arctic.

According to Tian Li “this dataset can be used to improve the mass balance assessments for Svalbard tidewater glaciers. Additionally, it enables the exploration of the drivers and processes controlling glacier calving. This is crucial for understanding the calving dynamics, a key indicator of how glaciers respond to climate change.”

“The dataset is part of the outputs from Arctic PASSION’s work on building an improved observing system for the key climate variables of the Arctic Cryosphere system and will also be integrated into Arctic PASSION’s work to build an operational end-to-end forecasting and monitoring system for Arctic land ice.” Says Tian Li. Going forward, the team of researchers plans to apply the methodology to all the other tidewater glaciers in the Arctic.

The article is available for download at the Earth System Science Data’s website and an online platform of the Svalbard data product can be found here: https://maps.heidler.info/svalbard/

For any inquiries, please contact Tian Li at tian.li@bristol.ac.uk

Please visit the Arctic PASSION project website for more information: https://arcticpassion.eu/


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