Global PyGEM-OGGM Glacier Projections with RCP and SSP Scenarios, Version 1
Data set id:
HMA2_GGP
DOI: 10.5067/P8BN9VO9N5C7
This is the most recent version of these data.
Version Summary
Initial release

Overview

This data set comprises results from a hybrid glacier evolution model that uses the mass balance module of the Python Glacier Evolution Model (PyGEM) and the glacier dynamics module of the Open Global Glacier Model (OGGM). Output parameters include projections of glacier mass change, fixed runoff, and various mass balance components at regionally aggregated and glacier scales.
Parameter(s):
GLACIER ABLATIONGLACIER ACCUMULATIONGLACIER AREAGLACIER MASSGLACIER MELTGLACIER REFREEZEGLACIER RUNOFF
Platform(s):
MODELS
Sensor(s):
NOT APPLICABLE
Data Format(s):
netCDF-4
Temporal Coverage:
1 January 2000 to 31 December 2100
Temporal Resolution:
  • 1 month
  • 1 year
Spatial Resolution:
  • not applicable
  • not applicable
Spatial Reference System(s):
WGS 84
EPSG:4326
Spatial Coverage:
N:
90
S:
-90
E:
180
W:
-180
Blue outlined yellow areas on the map below indicate the spatial coverage for this data set.

Data Access & Tools

A free NASA Earthdata Login account is required to access these data. Learn More

Help Articles

How to Articles

Many NSIDC DAAC data sets can be accessed using the NSIDC DAAC's Data Access Tool. This tool provides the ability to search and filter data with spatial and temporal constraints using a map-based interface.Users have the option to
Harmony API Quickstart Guide: Customizing NASA NSIDC DAAC data in Earthdata Cloud
All data from the NASA National Snow and Ice Data Center Distributed Active Archive Center (NSIDC DAAC) is directly accessible through our HTTPS file system using Wget or curl. This article provides basic command line instructions for accessing data using this method.
This article highlights the NSIDC DAAC data sets available with customization options and outlines a workflow for searching, ordering, and customizing data in NASA Earthdata Search. This approach is ideal for users who want to download data to their local machine.