
High Mountain Asia LIS Model Terrestrial Hydrological Parameters, Version 1
Data set id:
HMA_LIS_LandSurfaceHydro
DOI: 10.5067/ENXL5FDN5V8C
This is the most recent version of these data.
Version Summary
Version Summary
Initial release
Overview
The data provided in this data set are simulated using the Noah-Multiparameterization Land Surface Model (Noah-MP LSM) Version 3.6 within the NASA Land Information System (LIS) Version 7.2. The data files contain estimates of water, energy fluxes, and land surface states for the High Mountain Asia (HMA) region.
Parameter(s):
NET RADIATION
SNOW COVER
SNOW WATER EQUIVALENT
SOIL MOISTURE/WATER CONTENT
SURFACE TEMPERATURE
Platform(s):
MODELS
Sensor(s):
NOT APPLICABLE
Data Format(s):
netCDF-4
PNG
Temporal Coverage:
- 1 February 2003 to 31 January 2018
Temporal Resolution:
- 1 day
Spatial Resolution:
- 0.25º
- 0.25º
Spatial Reference System(s):
- WGS 84EPSG:4326
Spatial Coverage:
- N:40.875S:20.875E:100.875W:66.875
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
Documentation
Help Articles
General Questions & FAQs
This article covers frequently asked questions about the NASA NSIDC DAAC's Earthdata cloud migration project and what it means to data users.
How to Articles
This article shows how to download NSIDC DAAC data from NASA Earthdata Cloud to your computer using three tools: wget and curl—popular command-line utilities for downloading files—and Data Downloader, a Python-based command-line tool developed by the Physical Oceanography Distributed Active Archi
Many NSIDC DAAC data sets can be accessed using 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:
The NASA Earthdata Cloud is the NASA cloud-based archive of Earth observations. It is hosted by Amazon Web Services (AWS). Learn how to find and access NSIDC DAAC data directly in the cloud.