In 2007, Denmark launched the Programme for Monitoring of the Greenland Ice Sheet (PROMICE) to assess changes in the mass balance of the ice sheet. The two major contributors to the ice sheet mass loss are surface melt and a larger production of icebergs through faster ice flow. PROMICE is focused on both processes. Ice movement and discharge is tracked by satellites and GPSs. The surface mass balance is monitored by a network of weather stations in the melt zone of the ice sheet, providing ground truth data to calibrate mass budget models.

The Greenland Climate Network (GC-Net) was established in 1995 by Prof. Konrad Steffen at CIRES, to obtain knowledge of the mass gain and climatology of the ice sheet. The programme was funded by the USA until 2020, at which point Denmark assumed responsibility for the operation and maintenance of the weather station network. The snowfall and climatology are monitored by a network of weather stations in the accumulation zone of the ice sheet, supplemented by satellite-derived data products.

Together, the two monitoring programmes deliver data about the mass balance of the Greenland ice sheet in near real-time. Explore our project dataverses and datasets below.
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721 to 730 of 4,183 Results
Nov 27, 2024 - pypromice v1.5.0
Python Source Code - 3.0 KB - MD5: a1427d690f018150fdd195cd88976d5b
Nov 27, 2024 - pypromice v1.5.0
Python Source Code - 4.4 KB - MD5: 9d04ccebac1aa812c5aa71a9ff608c60
Nov 27, 2024 - pypromice v1.5.0
Python Source Code - 3.3 KB - MD5: 2351b9fc5220646493a6e6a4da94e0a0
Nov 27, 2024 - pypromice v1.5.0
Python Source Code - 1.8 KB - MD5: 5373ef19be0891eedf8f049655c546a8
Nov 27, 2024 - pypromice v1.5.0
Python Source Code - 7.5 KB - MD5: 3226f2af53bf0cb88ecb4eefb1f9a077
Nov 27, 2024 - pypromice v1.5.0
Python Source Code - 13.0 KB - MD5: 5c8506e6b10b36f86b1a0817e8069d33
Nov 27, 2024 - pypromice v1.5.0
Unknown - 609 B - MD5: c596fe3cbc2630d89e6132f0b064f60d
Nov 27, 2024 - pypromice v1.5.0
Python Source Code - 1.7 KB - MD5: 53c5873378dfc53350b24ff0242183cc
Nov 27, 2024 - pypromice v1.5.0
Unknown - 4.3 KB - MD5: 87fb4c06d8aec45bd676497b29876747
Nov 27, 2024 - pypromice v1.5.0
Unknown - 5.0 KB - MD5: 326a859d4279ff07462eee8ba8c4cc12
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