Global Pasture Watch - Annual grassland class and extent maps at 30-m spatial resolution (2000—2022)
Creators
- Leandro Parente1
- Lindsey Sloat2
- Vinicius Mesquita3
- Davide Consoli1
- Radost Stanimirova2
- Tomislav Hengl1
- Carmelo Bonannella1
- Nathália Teles3
- Ichsani Wheeler1
- Maria Hunter3
- Steffen Ehrmann4
- Laerte Ferreira3
- Ana Paula Mattos3
- Bernard Oliveira3
- Carsten Meyer4
- Murat Şahin1
- Martijn Witjes1
- Steffen Fritz5
- Žiga Malek5
- Fred Stolle2
- 1. OpenGeoHub Foundation
- 2. World Resources Institute
- 3. Remote Sensing and GIS Laboratory (LAPIG/UFG)
- 4. German Centre for Integrative Biodiversity Research (iDiv)
- 5. International Institute for Applied Systems Analysis (IIASA)
Description
Sub-dataset: Dominant grassland class, 2015-2017
Description
Global annual grassland class and extent for 2000—2022 produced by Parente et al. (2024) within the scope of the Global Pasture Wath initiative. The mapped grassland extent includes any land cover type, which contains at least 30% of dry or wet low vegetation, dominated by grasses and forbs (less than 3 meters) and a:
- maximum of 50% tree canopy cover (greater than 5 meters),
- maximum of 70% of other woody vegetation (scrubs and open shrubland), and
- maximum of 50% active cropland cover in mosaic landscapes of cropland & other vegetation.
The grassland extent is classified into two classes:
- Cultivated grassland: Areas where grasses and other forage plants have been intentionally planted and managed, as well as areas of native grassland-type vegetation where they clearly exhibit active and 'heavy' management for specific human-directed uses, such as directed grazing of livestock.
- Natural/semi-natural grassland: Relatively undisturbed native grasslands/short-height vegetation, such as steppes and tundra, as well as areas that have experienced varying degrees of human activity in the past, which may contain a mix of native and introduced species due to historical land use and natural processes. In general, they exhibit natural-looking patterns of varied vegetation and clearly ordered hydrological relationships throughout the landscape.
The dataset is organized in 69 global mosaics (23 years for each time series) in COG (Cloud Optimized GeoTIFF) format, WGS84 Coordinate Systems (EPSG:4326) and pixel size equal to 0.00025 degrees, including:
- Probabilities of cultivated grassland (values range from 0–100),
- Probabilities of natural/semi-natural grassland (values range from 0–100), and
- Dominant class (0-other land cover, 1-cultivated grassland and 2-natural/semi-natural grassland.
All raster files are in unsigned 8-bit integer format
and use 255
as no-data value (pixels ignored by prediction), following an specific naming convention:
- Project name: Global Pasture Watch (
gpw
) - Class name: cultivated grassland (
cultiv.grassland
), natural/semi-natural grassland (nat.semi.grassland
) and dominant grassland (grassland
) - Procedure combination: Random Forest (
rf
), Savitzky-golay (savgol
), balanced threshold (bthr
) and mean absolute difference (madi
). - Variable type: probability (
p
) - Spatial resolution: 30m
- Begin of time reference: date of first Landsat composite used by the modeling (
20220101
) - End of time reference: date of last Landsat composite used by the modeling (
20221231
) - Spatial extent: global (
go
) - Coordinate system: World Geodetic System 1984, used in GPS (
epsg.4326
) - Version: v1
Related resources
- Maps of dominant grassland:
2000-2002 2003-2005 2006-2008 2009-2011 2012-2014 2015-2017 2018-2020 2021-2022 - Probability maps of cultivated grassland:
2000-2022 (All URLs) - Probability maps of natural/semi-natural grassland:
2000-2022 (All URLs) - Grassland reference samples based on VHR imagery (2000–2022):
GeoPackage files - Global machine learning models (Random Forest):
Parquet and joblib python files - Reference sampling design derived by FSCV:
GeoPackage and raster files - Harmonized reference samples based on existing LULC dataset:
GeoPackage and raster files - Source code for reproducibility:
GitHub release - Mapping feedback tool:
GeoWiki - Data catalogues:
OpenLandMap STAC Google Earth Engine
Support
For questions of bugs/inconsistencies related to the dataset raise a GitHub issue in https://github.com/wri/global-pasture-watch
Files
ggc-30m.csv
Additional details
Funding
Software
- Repository URL
- https://github.com/wri/global-pasture-watch