Global datasets: Difference between revisions

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=== GEBCO Bathymetric Chart ===
=== GEBCO Bathymetric Chart ===


* The General Bathymetric Chart of the Oceans (original 1' release 2003, new 1' and 30" releases 2008)
* The General Bathymetric Chart of the Oceans (original 1' release 2003, new 1' and 30" releases 2008, new 15" released 2020)
: http://www.gebco.net/data_and_products/gridded_bathymetry_data/
: http://www.gebco.net/data_and_products/gridded_bathymetry_data/
: http://www.bodc.ac.uk/data/online_delivery/gebco/
: http://www.bodc.ac.uk/data/online_delivery/gebco/
The GEBCO_2020 is available in NetCDF or GeoTIFF format.


{{cmd|r.in.gdal}} can be used to import the GMT netCDF files directly, or if that doesn't work you can use GMT tools to convert to an old-style native GMT format and import that with {{cmd|r.in.bin}}.
{{cmd|r.in.gdal}} can be used to import the GMT netCDF files directly, or if that doesn't work you can use GMT tools to convert to an old-style native GMT format and import that with {{cmd|r.in.bin}}.
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* Note: Downloaded file contains no projection information, but is EPSG:4326 (WGS84 Geographic).  The file size is limited, but lower resolution (resolution=2,4,8) data can be downloaded for larger areas.
* Note: Downloaded file contains no projection information, but is EPSG:4326 (WGS84 Geographic).  The file size is limited, but lower resolution (resolution=2,4,8) data can be downloaded for larger areas.
=== NASADEM ===
1-arc second (~30 m @ equator) global only-land.
https://lpdaac.usgs.gov/news/release-nasadem-data-products/
See also {{AddonCmd|r.in.nasadem|version=7}} addon


=== Smith and Sandwell DEM ===
=== Smith and Sandwell DEM ===
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* Using {{cmd|r.in.gdal}} or {{cmd|r.import}} or {{cmd|r.in.srtm}} or {{AddonCmd|r.in.srtm.region}}
* Using {{cmd|r.in.gdal}} or {{cmd|r.import}} or {{cmd|r.in.srtm}} or {{AddonCmd|r.in.srtm.region}}
* see [[HOWTO import SRTM elevation data]], focused on the SRTM 3 arc-seconds Non-Void Filled elevation data
* see [[HOWTO import SRTM elevation data]], focused on the SRTM 3 arc-seconds Non-Void Filled elevation data
=== SRTM15+ DEM ===
SRTM15+ data consists of 33 files of global topography in the same format as the SRTM30plus products. The grid resolution is 15 seconds which is roughly 500 m at the equator.
https://topex.ucsd.edu/WWW_html/srtm15_plus.html


=== SRTM30plus data DEM ===
=== SRTM30plus data DEM ===
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Import into GRASS GIS 7 (lat-long location):
Import into GRASS GIS 7 (lat-long location):
  r.in.bin -sb input=N00E108.raw output=N00E108_swbd bytes=1 north=0 south=-10 east=108 west=98 r=3601 c=3601  <<= DRAFT - TODO fix n,s,e,w - calculate from filename
  r.in.bin -sb input=N00E108.raw output=N00E108_swbd bytes=1 north=0 south=-10 east=108 west=98 r=3601 c=3601  <<= DRAFT - TODO fix n,s,e,w - calculate from filename
=== TanDEM-X DEM ===
This is a 90 m only-land DEM.
Data from 2010-12-12 through 2015-01-16
https://geoservice.dlr.de/data-assets/ju28hc7pui09.html


== Soil data ==
== Soil data ==
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URL=ftp://ftp.soilgrids.org/data/recent/TAXNWRB_250m_ll.tif
URL=ftp://ftp.soilgrids.org/data/recent/TAXNWRB_250m_ll.tif


# the Soilgrids GeoTIFF data suffer from a resolution precision problem:
# the Soilgrids GeoTIFF data suffer from a resolution precision problem since they were produced with SAGA:
# resolution is stored as 0.002083333000000 while it should be 0.002083333333333, hence the geometry is not fully correct
# resolution is stored as 0.002083333000000 while it should be 0.002083333333333, hence the geometry is not fully correct
# this likely originates from Soilgrids being processed in SAGA which cuts decimals after the 10th decimal place, hence comes with a precision problem


export NAME=`basename $URL .tif`
export NAME=`basename $URL .tif`
wget $URL
wget $URL
</source>


OLD OLD OLD start --
<source>
# see below for the better way how to fix SoilGrids data
gdal_translate --config GDAL_CACHEMAX 2000 -a_ullr $COORDS -co "COMPRESS=DEFLATE" $NAME.tif ${NAME}_fixed.tif
gdal_translate --config GDAL_CACHEMAX 2000 -a_ullr $COORDS -co "COMPRESS=DEFLATE" $NAME.tif ${NAME}_fixed.tif
gdalinfo ${NAME}_fixed.tif
gdalinfo ${NAME}_fixed.tif


grass72 -c ${NAME}_fixed.tif ~/grassdata/latlong --exec r.import input=${NAME}_fixed.tif output=${NAME}
grass72 -c ${NAME}_fixed.tif ~/grassdata/latlong --exec r.import input=${NAME}_fixed.tif output=${NAME}
</source>
-- OLD OLD OLD end
New fix & import method:
Starting with '''GRASS GIS 7.4.x''', there is new flag in {{cmd|r.in.gdal}} to auto-adjust such small resolution precision issues: '''-a''' ''- Auto-adjustment for lat/lon. Attempt to fix small precision errors in resolution and extents.''
<source lang="bash">
r.in.gdal -a input=TAXNWRB_250m_ll.tif output=TAXNWRB_250m_ll
</source>
</source>


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=== ESA Sentinel imagery ===
=== ESA Sentinel imagery ===


All Sentinel 1 and 2 data is available for download from the [https://scihub.copernicus.eu/ Open Access Hub]
The [https://grass.osgeo.org/grass-stable/manuals/addons/i.sentinel.html i.sentinel] toolbox of addons provides
a complete suite for downloading, importing and preprocessing Sentinel imagery.
 
For direct access, all Sentinel 1 and 2 data is available for download from the [https://scihub.copernicus.eu/ Open Access Hub]


* via the [https://scihub.copernicus.eu/dhus/#/home online interactive interface]
* via the [https://scihub.copernicus.eu/dhus/#/home online interactive interface]
* via the [https://scihub.copernicus.eu/twiki/do/view/SciHubWebPortal/APIHubDescription API]
* via the [https://scihub.copernicus.eu/twiki/do/view/SciHubWebPortal/APIHubDescription API]


For pre-processing, different tools are available at
Other pre-processing tools are available at:
* http://step.esa.int/main/ Scientific Toolbox Exploitation Platform
* http://step.esa.int/main/ Scientific Toolbox Exploitation Platform
* https://github.com/Fernerkundung/awesome-sentinel ("Awesome Sentinel" - list of tools)
* https://github.com/Fernerkundung/awesome-sentinel ("Awesome Sentinel" - list of tools)
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* [http://www.naturalearthdata.com/ Natural Earth II]:  World environment map in natural color. GeoTIFF (use the {{cmd|r.in.gdal}} module)
* [http://www.naturalearthdata.com/ Natural Earth II]:  World environment map in natural color. GeoTIFF (use the {{cmd|r.in.gdal}} module)
* see also 1:10 million, 1:50 million and 1:110million scale maps from  http://www.naturalearthdata.com/
* see also 1:10 million, 1:50 million and 1:110million scale maps from  http://www.naturalearthdata.com/
=== Earth at Night: nightlight maps ===
* Earth at Night: Flat Maps https://earthobservatory.nasa.gov/features/NightLights/page3.php (GeoTIFFs)


=== Orthoimagery ===
=== Orthoimagery ===
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CHELSA – Climatologies at high resolution for the earth’s land surface areas is a high resolution (30 arc sec) climate data set for the earth land surface areas currently under development, see http://chelsa-climate.org/
CHELSA – Climatologies at high resolution for the earth’s land surface areas is a high resolution (30 arc sec) climate data set for the earth land surface areas currently under development, see http://chelsa-climate.org/


Version 1.1 has some coordinate issues originating from the underlying GMTED2010 data being used which come with coordinate issues (see above).
Version 1.1 has some coordinate issues originating from SAGA being used (coordinate precision issue), see http://chelsa-climate.org/known-issues/


<source lang="shell">
<source lang="shell">
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It furthermore provides data sets with projections of future climates based on combinations of ten general circulation models (GCMs), downscaled using five regional climate models (RCMs) and the four above mentioned contemporary baselines, under two representative concentration pathways of the IPCC-AR5 (RCP4.5 and RCP8.5). The data layers are available as GeoTIF files at spatial resolutions of 10', 5', 2.5', 1' and 30".
It furthermore provides data sets with projections of future climates based on combinations of ten general circulation models (GCMs), downscaled using five regional climate models (RCMs) and the four above mentioned contemporary baselines, under two representative concentration pathways of the IPCC-AR5 (RCP4.5 and RCP8.5). The data layers are available as GeoTIF files at spatial resolutions of 10', 5', 2.5', 1' and 30".
=== PaleoClim maps ===
[http://www.paleoclim.org PaleoClim] provides free, high-resolution paleoclimate data for use in biological modeling and GIS.
The data are available at 3  different spatial resolutions; from 2.5 arc-minutes (~5 km), 5 arc-minutes (~10 km), and 10 arc-minutes (~20 km). The CHELSA data are also available in 30 arc-seconds (~1 km). Each download is a “zip” file containing up to 19 GeoTiff (.tif) files, one for each of the bioclimatic variables.
'''Bioclimatic parameters'''
From the high-resolution monthly temperature and precipitation values, a set of derived parameters were calculated, broadly used in ecological applications. These bioclimatic variables are derived from the monthly mean temperature (or minimum and maximum temperature, depending on their availability) and precipitation values. They are specifically developed for species distribution modelling and related ecological applications .  The procedure for generating bioclimatic variables followed WorldClim and used the ‘biovars’ function of the R package dismo. Output bioclimate layers were saved as individual GeoTiffs (*tif) and projected in the WGS 1984 projection.
Bio_1=Annual Mean Temperature [°C*10] <br>
Bio_2=Mean Diurnal Range [°C] <br> 
Bio_3=Isothermality [Bio_2/Bio_7] <br> 
Bio_4=Temperature Seasonality [standard deviation*100] <br> 
Bio_5=Max Temperature of Warmest Month [°C*10] <br> 
Bio_6=Min Temperature of Coldest Month [°C*10] <br> 
Bio_7=Temperature Annual Range [°C*10] <br> 
Bio_8=Mean Temperature of Wettest Quarter [°C*10] <br> 
Bio_9=Mean Temperature of Driest Quarter [°C*10] <br> 
Bio_10=Mean Temperature of Warmest Quarter [°C*10] <br> 
Bio_11=Mean Temperature of Coldest Quarter [°C*10] <br> 
Bio_12=Annual Precipitation [mm/year] <br> 
Bio_13=Precipitation of Wettest Month [mm/month] <br> 
Bio_14=Precipitation of Driest Month [mm/month] <br> 
Bio_15=Precipitation Seasonality [coefficient of variation]v 
Bio_16=Precipitation of Wettest Quarter [mm/quarter] <br> 
Bio_17=Precipitation of Driest Quarter [mm/quarter] <br> 
Bio_18=Precipitation of Warmest Quarter [mm/quarter] <br>
Bio_19=Precipitation of Coldest Quarter [mm/quarter] <br>
'''Time Periods Represented (bp)''' 
Pleistocene: late-Holocene, Meghalayan (4.2-0.3 ka) <br> 
Pleistocene: mid-Holocene, Northgrippian (8.326-4.2 ka) <br> 
Pleistocene: early-Holocene, Greenlandian (11.7-8.326 ka) <br> 
Pleistocene: Younger Dryas Stadial (12.9-11.7 ka) <br> 
Pleistocene: Bølling-Allerød ( 14.7-12.9 ka) <br> 
Pleistocene: Heinrich Stadial 1 (17.0-14.7 ka) <br> 
Pleistocene: Last Interglacial (ca. 130 ka) <br> 
Pleistocene: MIS19 (ca. 787 ka) <br> 
Pliocene: mid-Pliocene warm period (3.205 Ma) <br> 
Pliocene: M2 (ca. 3.3 Ma)


== Population maps ==
== Population maps ==
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See the [[OpenStreetMap]] wiki page.
See the [[OpenStreetMap]] wiki page.
==== Administrative boundaries from OpenStreetMap ====
For a convenient download in GeoJSON and SHAPE, see https://wambachers-osm.website/boundaries/
(using the amost invisible triangle, you can pop out details of a country down to admin level 8)


=== SALB ===
=== SALB ===
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* [http://www.efas.eu/ EFAS @ JRC] is a High resolution pan-European dataset for hydrologic modelling.
* [http://www.efas.eu/ EFAS @ JRC] is a High resolution pan-European dataset for hydrologic modelling.
* [http://data.jrc.ec.europa.eu/ JRC Data Portal] In this catalogue, you can find an inventory of data that produced by the JRC in accordance with the JRC data policy. The content is continuously updated and shall not be seen as a complete inventory of JRC data. Currently, the inventory describes only a small subset of JRC data.
* [http://data.jrc.ec.europa.eu/ JRC Data Portal] In this catalogue, you can find an inventory of data that produced by the JRC in accordance with the JRC data policy. The content is continuously updated and shall not be seen as a complete inventory of JRC data. Currently, the inventory describes only a small subset of JRC data.
=== US datasets ===
* [[NLCD Land Cover|NLCD: National land cover database]]
* [[CUSP Coastline|CUSP: NOAA Continually Updated Shoreline]]


=== National datasets ===
=== National datasets ===

Latest revision as of 21:50, 10 July 2023

Raster data

Elevation data

ASTER topography (GDEM V1)

Improved ASTER GDEM 1 from 2009:

GDEM global 30m elevation calculated from stereo-pair images collected by the Terra satellite. "This is the most complete, consistent global digital elevation data yet made available to the world." This is a very new dataset, at version 1 (treat as experimental). Accuracy will be improved in forthcoming versions (validation with SRTM, etc.; see assessment here and here).

Tutorial: ASTER topography

See also: ASTER GDEM 30m quality assessment

ASTER topography (GDEM V2)

Improved ASTER GDEM 2 from 2011:

The ASTER GDEM covers land surfaces between 83°N and 83°S and is comprised of 22,702 tiles. Tiles that contain at least 0.01% land area are included. The ASTER GDEM is distributed as Geographic Tagged Image File Format (GeoTIFF) files with geographic coordinates (latitude, longitude). The data are posted on a 1 arc-second (approximately 30–m at the equator) grid and referenced to the 1984 World Geodetic System (WGS84)/ 1996 Earth Gravitational Model (EGM96) geoid.

Notes: this DEM can be rather well filtered and smoothed with the Sun's denoising algorithm (using GDAL and free / open source program <mdenoise> or simply GRASS add-on r.denoise.

Experiments showed that the best smoothing of ASTER GDEM 2 is reached with such parameters of <mdenoise>:

  • threshold = 0.8
  • iterations = 10-20

Also filtering with r.neighbors by "average" method and window size >=5 is quite useful to remove some noise from DEM.

See also: Validation of the ASTER Global Digital Elevation Model Version 2 over the Conterminous United States

ACE2

The ACE2 Global Digital Elevation Model is available at 3", 30" and 5' spatial resolutions.

Import example:

 r.in.bin -f input="00N105E_3S.ACE2" output="ACE2_00N105E" bytes=4 \
          order="native" north=15 south=0 east=120 west=105 \
          rows=18000 cols=18000

CleanTOPO2 (DEM)

Import in GRASS:

 r.in.gdal CleanTOPO2.tif out=cleanTOPO2.tmp -l -o
 g.region rast=cleanTOPO2  -p -g
 # rescale from odd integer values to true world values
 r.rescale cleanTOPO2.tmp out=cleanTOPO2 to=-10701,8248
 r.colors cleanTOPO2_final col=terrain
Rescaled ClearTOPO2 map

EGM2008 Geoid Data (Earth Gravitational Model)

Global 2.5 Minute Geoid Undulations:

Geoid undulations in Trentino, Italy

Verifications of points can be done with the http://geographiclib.sourceforge.net/cgi-bin/GeoidEval

ETOPO (DEM)

The ETOPO datasets provide global topography and bathymetry at 1', 2', and 5' per-cell resolutions.

ETOPO1 (DEM)

  • The cell registered version can be loaded directly into a lat/lon location. GRASS raster data is cell registered (see the GRASS raster semantics page)


  • Special care must be taken with the grid registered version. It can not be loaded directly into a lat/lon location as the parameters found in the .hdr file exceed the limits of polar coordinate space: they have N,S rows which go 1/2 a cell beyond 90 latitude, when considered in the cell registered convention.
So the data needs to have those 90deg N,S rows cropped away, and while we're at it we crop away a redundant overlapping column at 180 longitude. To do this we have to first tell the GIS a little fib during import to squeeze the data into lat/lon space, then crop away the spurious rows and column, then finally reset the resulting map's bounds to its true extent.
 # Import grid registered binary float, fibbing about its true extent
 r.in.bin -f in=etopo1_bed_g.flt out=etopo1_bed_g.raw \
    n=90 s=-90 e=180 w=-180 rows=10801 cols=21601 anull=-9999
 
 # reduce the working region by 1 cell
 g.region rast=etopo1_bed_g.raw
 eval `g.region -g`
 g.region n=n-$nsres s=s+$nsres e=e-$ewres -p
 
 # save smaller raster and remove original
 r.mapcalc "etopo1_bed_g.crop = etopo1_bed_g.raw"
 g.remove etopo1_bed_g.raw

 # re-establish the correct bounds, now that they'll fit
 r.region etopo1_bed_g.crop n=89:59:30N s=89:59:30S w=179:59:30E e=179:59:30E
 g.region rast=etopo1_bed_g.crop

 # check that N,S,E,W and Res are all nice and clean:
 r.info etopo1_bed_g.crop

 # looks good, so accept the results by resetting the map name
 g.rename etopo1_bed_g.crop,etopo1_bed_g

 # set to use appropriate color rules
 r.colors etopo1_bed_g color=etopo2

 # set the 'units' metadata field (for elevation data contained within the map)
 r.support etopo1_bed_g units=meters
  • For the problematic grid registered version, the resulting r.info report should look like:
|   Rows:         10799                                                      |
|   Columns:      21600                                                      |
|   Total Cells:  233258400                                                  |
|        Projection: Latitude-Longitude                                      |
|            N:  89:59:30N    S:  89:59:30S   Res:  0:01                     |
|            E: 179:59:30E    W: 179:59:30E   Res:  0:01                     |
|   Range of data:    min = -10898  max = 8271                               |

(the east and west bounds of the map touch 1/2 a cell west of 180 longitude)

  • For the problematic grid registered version, since the data's grid is 1/2 a cell shifted from nicely rounded 1 arc-minutes (0:01), you'll need to ensure that the mapset's region preserves that alignment after zooming or panning:
g.region align=etopo1_bed_g -p
(or oversample and set the region resolution to 1/2 arc-minutes (0:00:30), which will be four times as slow)

ETOPO2 (DEM)

ETOPO2v2 data download (take for example the ETOPO2v2g_f4_LSB.flt file)

GTOPO30 (DEM)

Note: To avoid that the GTOPO30 data are read incorrectly, you can add a new line "PIXELTYPE SIGNEDINT" in the .HDR to force interpretation of the file as signed rather than unsigned integers. Then the .DEM file can be imported. Finally, e.g. the 'terrain' color table can be assigned to the imported map with r.colors.


Global Multi-resolution Terrain Elevation Data 2010 (GMTED2010)

Tiles: Import of GMTED2010 tiles in GRASS GIS:

 r.in.gdal 30N000E_20101117_gmted_mea075.tif out=gmted2010_30N000E_20101117
 r.colors gmted2010_30N000E_20101117 color=elevation
 g.region rast=gmted2010_30N000E_20101117
 r.relief input=gmted2010_30N000E_20101117 output=gmted2010_30N000E_20101117.shade
 r.shade shade=gmted2010_30N000E_20101117.shade color=gmted2010_30N000E_20101117 \
  output=gmted2010_30N000E_20101117_shaded
 d.mon wx0
 d.rast gmted2010_30N000E_20101117_shaded
 d.grid 1 color=red textcolor=red
GMTED2010 example: Trento - Garda Lake - Verona area (Northern Italy)

Full maps:

 # mean elevation global GMTED2010 map, 30 arc-sec
 wget http://edcintl.cr.usgs.gov/downloads/sciweb1/shared/topo/downloads/GMTED/Grid_ZipFiles/mn30_grd.zip
 unzip mn30_grd.zip
 

Important: the GMTED2010 map exceeds the -180°..+180° range due to the GMTED2010 pixel geometry (PDF). Note that this cannot be handled in GRASS GIS < 7.4. Please update to GRASS GIS 7.4 or newer.

GEBCO Bathymetric Chart

  • The General Bathymetric Chart of the Oceans (original 1' release 2003, new 1' and 30" releases 2008, new 15" released 2020)
http://www.gebco.net/data_and_products/gridded_bathymetry_data/
http://www.bodc.ac.uk/data/online_delivery/gebco/

The GEBCO_2020 is available in NetCDF or GeoTIFF format.

r.in.gdal can be used to import the GMT netCDF files directly, or if that doesn't work you can use GMT tools to convert to an old-style native GMT format and import that with r.in.bin.

example: (GEBCO 2003 1' data)
# convert to an old style GMT binary .grd using grdreformat
$ grdreformat 3n24s47w14w.grd 3n24s47w14w_Native.grd=bs

# then import into GRASS,
GRASS> r.in.bin -h -s bytes=2 in=3n24s47w14w_Native.grd out=3n24s47w14w

# and set some nice colors
GRASS> r.colors 3n24s47w14w rules=- << EOF
nv magenta
0% black
-7740 0:0:168
0 84:176:248
0 40:124:0
522 68:148:24
1407 148:228:108
1929 232:228:108
2028 232:228:92
2550 228:160:32
2724 216:116:8
2730 grey
2754 grey
2760 252:252:252
2874 252:252:252
2883 192:192:192
2913 192:192:192
100% 252:252:252
EOF

Global Multi-Resolution Topography (GMRT DEM)

From Columbia University's Lamont-Doherty Earth Observatory

(it is reported that this is what Google Maps uses for their global bathymetry)

 export `g.region -g`
 wget "http://www.marine-geo.org/cgi-bin/getgridB?west=${w}&east=${e}&south=${s}&north=${n}&resolution=1" -O /tmp/test.grd
 r.in.gdal /tmp/test.grd output=GMRT -o
 rm /tmp/test.grd
  • Note: Downloaded file contains no projection information, but is EPSG:4326 (WGS84 Geographic). The file size is limited, but lower resolution (resolution=2,4,8) data can be downloaded for larger areas.

NASADEM

1-arc second (~30 m @ equator) global only-land.

https://lpdaac.usgs.gov/news/release-nasadem-data-products/

See also r.in.nasadem addon

Smith and Sandwell DEM

SRTM DEM

Space Shuttle Radar Topography Mission - several SRTM Data Products are available:

  • Original data - SRTM 3 V001 arc-seconds Non-Void Filled elevation data (US: 1 arc-second (approximately 30 meters); outside the US at 3 arc-seconds (approximately 90 meters))
  • SRTM V003 3 Arc-Second Global Void Filled elevation data, with voids filled using interpolation algorithms in conjunction with other sources of elevation data (US: 1 arc-second (approximately 30 meters); outside the US at 3 arc-seconds (approximately 90 meters))
  • SRTM V003 1 Arc-Second Global elevation data offer worldwide coverage of void filled data at a resolution of 1 arc-second (30 meters) and provide open distribution of this high-resolution global data set.

Import:

SRTM15+ DEM

SRTM15+ data consists of 33 files of global topography in the same format as the SRTM30plus products. The grid resolution is 15 seconds which is roughly 500 m at the equator.

https://topex.ucsd.edu/WWW_html/srtm15_plus.html

SRTM30plus data DEM

SRTM30plus data consists of 33 files of global topography in the same format as the SRTM30 products distributed by the USGS EROS data center. The grid resolution is 30 seconds which is roughly one kilometer (1 km).

Land data are based on the 1-km averages of topography derived from the USGS SRTM30 grided DEM data product created with data from the NASA Shuttle Radar Topography Mission. GTOPO30 data are used for high latitudes where SRTM data are not available.

Ocean data are based on the Smith and Sandwell global 2-minute grid between latitudes +/- 72 degrees. Higher resolution grids have been added from the LDEO Ridge Multibeam Synthesis Project and the NGDC Coastal Relief Model. Arctic bathymetry is from the International Bathymetric Chart of the Oceans (IBCAO).

All data are derived from public domain sources and these data are also in the public domain.

GRASS 6 script r.in.srtm described in GRASSNews vol. 3 won't work with this dataset (as it was made for the original SRTM HGT files). But you can import SRTM30plus tiles into GRASS this way:

r.in.bin -sb input=e020n40.Bathymetry.srtm output=e020n40_topex bytes=2 \
 north=40 south=-10 east=60 west=20 r=6000 c=4800
r.colors e020n40_topex rules=etopo2
Source
GRASS Users Mailing List http://lists.osgeo.org/pipermail/grass-user/2005-August/030063.html
Getting as SRTM30plus tiles
ftp://topex.ucsd.edu/pub/srtm30_plus/srtm30/data/
Getting as SRTM30plus huge file
ftp://topex.ucsd.edu/pub/srtm30_plus/topo30/
SRTMPLUS WCS server
http://svn.osgeo.org/gdal/trunk/autotest/gdrivers/data/srtmplus.wcs (read with r.external)

SRTM Water Body Database SRTMSWBD V003

SRTM Water Body Database V003

Import into GRASS GIS 7 (lat-long location):

r.in.bin -sb input=N00E108.raw output=N00E108_swbd bytes=1 north=0 south=-10 east=108 west=98 r=3601 c=3601   <<= DRAFT - TODO fix n,s,e,w - calculate from filename

TanDEM-X DEM

This is a 90 m only-land DEM. Data from 2010-12-12 through 2015-01-16

https://geoservice.dlr.de/data-assets/ju28hc7pui09.html

Soil data

Harmonized World Soil Database (HWSD Database)

Download: http://webarchive.iiasa.ac.at/Research/LUC/External-World-soil-database/HTML/

Spatial reference system: EPSG:4326 (LatLong WGS84)

Import:

grass70 -c EPSG:4326 ~/grassdata/hwsd
# -e: expand location to dataset; -o: override (missing) projection in input dataset:
r.in.gdal input=hwsd.bil output=hwSoil -e -o
g.region raster=hwSoil -p
r.category hwSoil

The data is distributed with an MSAccess .mdb which contains additional data for each of the categories in the raster file. Opening the file in access, the data is found in the query "HWSD_Q". Save this query in .csv format (with a name like "HWSD_Q.csv") so that it may then be imported into GRASS. After that, it is necessary to replace the commas with dots (find & replace) in the .csv file. Before you can import it, you also need a file "HWSD_Q.csvt", which contains a single line listing the type for each column in the database:

"Integer","String","Integer","Integer","Integer","String","Integer","Integer","Real","Integer","String","Integer","String","Integer","String","Integer","Integer","Integer","Integer","Integer","Integer","Integer","Integer","Integer","Integer","Integer","Integer","Integer","Integer","Integer","Integer","Real","Real","Real","Real","Real","Real","Real","Real","Real","Real","Real","Real","Integer","Integer","Integer","Integer","Integer","Real","Real","Real","Real","Real","Real","Real","Real","Real","Real","Real","Real"


With both the .csv and the .csvt file in the same directory, you can then import them into GRASS:

db.in.ogr input=~/grassdata/hwsd/HWSD_Q.csv output=hwsdData

The data cannot be connected directly to the raster, it must be converted to a vector first:

g.region raster=hwSoil
r.to.vect -v input=hwSoil output=hwSoil feature=area
v.db.droptable hwSoil
db.droptable -f hwSoil # delete the table completely

Note that the table includes multiple rows for each polygon, corresponding to the dominant and various numbers of subdominant soils. To select only the dominant soil layer:

db.select table=hwsdData sql='select * from hwsdData where SEQ = 1' \
         output=domSoil.csv separator=,

This saves a copy of the table that contains only the dominant soil type for each polygon as domSoil.csv. This needs to be reloaded into the GRASS database. Since it has the same columns as HWSD_Q.csv, we can use the labels for that file:

cp HWSD_Q.csvt domSoil.csvt

Then we can load domSoil.csv:

db.in.ogr \
   input=~/grassdata/downloads/harmonized_world_soil_database/domSoil.csv \
   output=domSoil 

Now at last we can connect the database to the vector file:

v.db.connect -o map=hwsd table=domSoil driver=sqlite key=MU_GLOBAL

To create a new raster map taking the values from the table:

g.region raster=hwSoil  ## make sure we get the whole map
v.to.rast in=hwSoil out=T_SAND col=T_SAND

SoilGrids.org 250m soil taxonomy map

SoilGrids is a system for automated soil mapping based on global soil profile and environmental covariate data. SoilGrids represents a collection of updatable soil property and class maps of the world at 1 km and 250 m spatial resolution produced using automated soil mapping based on machine learning algorithms. It aims at becoming OpenStreetMap and/or OpenWeatherMap for soil data. SoilGrids predictions are updated on a regular basis (at least every few months). For more details about the SoilGrids system, please refer to the SoilGrids project site: https://www.soilgrids.org/#/?layer=geonode:taxnwrb_250m

URL=ftp://ftp.soilgrids.org/data/recent/TAXNWRB_250m_ll.tif

# the Soilgrids GeoTIFF data suffer from a resolution precision problem since they were produced with SAGA:
# resolution is stored as 0.002083333000000 while it should be 0.002083333333333, hence the geometry is not fully correct
# this likely originates from Soilgrids being processed in SAGA which cuts decimals after the 10th decimal place, hence comes with a precision problem 

export NAME=`basename $URL .tif`
wget $URL

OLD OLD OLD start --

# see below for the better way how to fix SoilGrids data
gdal_translate --config GDAL_CACHEMAX 2000 -a_ullr $COORDS -co "COMPRESS=DEFLATE" $NAME.tif ${NAME}_fixed.tif
gdalinfo ${NAME}_fixed.tif

grass72 -c ${NAME}_fixed.tif ~/grassdata/latlong --exec r.import input=${NAME}_fixed.tif output=${NAME}

-- OLD OLD OLD end


New fix & import method:

Starting with GRASS GIS 7.4.x, there is new flag in r.in.gdal to auto-adjust such small resolution precision issues: -a - Auto-adjustment for lat/lon. Attempt to fix small precision errors in resolution and extents.

r.in.gdal -a input=TAXNWRB_250m_ll.tif output=TAXNWRB_250m_ll

Landcover data

ESA Globcover dataset

Download: http://due.esrin.esa.int/page_globcover.php

Or via command line:

wget http://due.esrin.esa.int/files/Globcover2009_V2.3_Global_.zip
unzip Globcover2009_V2.3_Global_.zip
# rm -f Globcover2009_V2.3_Global_.zip

Note, also a coloured version of the map in GeoTIFF format is available at: http://due.esrin.esa.int/files/GLOBCOVER_L4_200901_200912_V2.3.color.tif

Unfortunately the Globcover map exceeds the -180°..+180° range etc, indicating a shift of the map (see also this assessment by DWD):

gdalinfo GLOBCOVER_L4_200901_200912_V2.3.tif
Driver: GTiff/GeoTIFF
Files: GLOBCOVER_L4_200901_200912_V2.3.tif
Size is 129600, 55800
Coordinate System is:
GEOGCS["WGS 84",
...
Origin = (-180.001388888888897,90.001388888888883)
...
Corner Coordinates:
Upper Left  (-180.0013889,  90.0013889) (180d 0' 5.00"W, 90d 0' 5.00"N)
Lower Left  (-180.0013889, -64.9986111) (180d 0' 5.00"W, 64d59'55.00"S)
Upper Right ( 179.9986111,  90.0013889) (179d59'55.00"E, 90d 0' 5.00"N)
Lower Right ( 179.9986111, -64.9986111) (179d59'55.00"E, 64d59'55.00"S)
Center      (  -0.0013889,  12.5013889) (  0d 0' 5.00"W, 12d30' 5.00"N)
...

How to fix this?

Option 1: You can use the -l flag of r.in.gdal to constrain the map coordinates to legal values (ref. But the resulting pixels will no longer have the original resolution. We will not do that.

Option 2: Shift the Globcover map slightly into the right position using gdal_translate:

# coords are shifted, fix raster map
# -a_ullr Assign/override the georeferenced bounds of the output file
# use larger cache and compress result
gdal_translate --config GDAL_CACHEMAX 1200 -a_ullr -180 90 180 -65 \
     -co "COMPRESS=LZW" GLOBCOVER_L4_200901_200912_V2.3.tif GLOBCOVER_L4_200901_200912_V2.3_fixed.tif

# result:
gdalinfo GLOBCOVER_L4_200901_200912_V2.3_fixed.tif
...
Origin = (-180.000000000000000,90.000000000000000)
Pixel Size = (0.002777777777778,-0.002777777777778)
...
Corner Coordinates:
Upper Left  (-180.0000000,  90.0000000) (180d 0' 0.00"W, 90d 0' 0.00"N)
Lower Left  (-180.0000000, -65.0000000) (180d 0' 0.00"W, 65d 0' 0.00"S)
Upper Right ( 180.0000000,  90.0000000) (180d 0' 0.00"E, 90d 0' 0.00"N)
Lower Right ( 180.0000000, -65.0000000) (180d 0' 0.00"E, 65d 0' 0.00"S)
Center      (   0.0000000,  12.5000000) (  0d 0' 0.01"E, 12d30' 0.00"N)

Voilà! Now we can import the map into GRASS GIS:

r.in.gdal input=GLOBCOVER_L4_200901_200912_V2.3_fixed.tif output=esa_globcover2009

Legend conversion: The ZIP file contains a XLS table describing the classes and the RGB colors. Using ogr2ogr can directly convert XLS --> CSV:

ogr2ogr -f CSV Globcover2009_Legend.csv Globcover2009_Legend.xls

Applying the legend:

# suppress table header and only consider category value and label, apply on the fly:
cat Globcover2009_Legend.csv | grep -v '^Value' | cut -d',' -f1-2 | r.category esa_globcover2009 separator=comma rules=-
# verify (0E, 0N is the Atlantic Ocean)
r.what esa_globcover2009 coor=0,0 -f
0|0||210|Water bodies

Global Forest Change

Imagery

AVHRR

Blue Marble imagery

NASA's Blue Marble is a 500m-8 degree per-cell world wide visual image of the Earth from space, with the clouds removed.

EO-1 imagery

(Earth Observing-1)

  • "Advanced Land Imager (ALI) provides image data from ten spectral bands (band designations). The instrument operates in a pushbroom fashion, with a spatial resolution of 30 meters for the multispectral bands and 10 meters for the panchromatic band."
-- http://eros.usgs.gov/products/satellite/eo1.php
  • On-board Atmospheric Corrections

Global Land Cover Characteristics

USGS et al. generated dataset at 1km resolution. Provides global landcover characteristics.

LANDSAT imagery

Since October 1, 2008 all Landsat 7 ETM+ scenes held in the USGS EROS archive are available for download at no charge.

  • Download via the Glovis online search tool (req. Java)
  • Download via the USGS's EarthExplorer interface

Import Modules

  • r.in.gdal - Main import tool for complete multiband scenes
  • r.in.wms - Download data covering current map region via WMS server
  • r.in.onearth - WMS frontend for NASA's OnEarth Global Landsat Mosaic

Color balancing modules

See also

  • Processing tips can be found on the LANDSAT wiki page

ESA Sentinel imagery

The i.sentinel toolbox of addons provides a complete suite for downloading, importing and preprocessing Sentinel imagery.

For direct access, all Sentinel 1 and 2 data is available for download from the Open Access Hub

Other pre-processing tools are available at:

Miscellaneous

Data sources

Import Modules

  • The r.in.gdal modules may be used to import data of many formats, including GMT netCDF
  • The r.in.bin module may be used to import raw binary files

MODIS imagery

Natural Earth imagery

Earth at Night: nightlight maps


Orthoimagery

Pathfinder AVHRR SST imagery

  • see the Pathfinder AVHRR SST wiki page

QuickBird imagery

SeaWiFS imagery

SPOT Vegetation imagery

SPOT Vegetation (1km) global: NDVI data sets

True Marble imagery

  • True Marble: 250m world wide visual image of the Earth from space, with the clouds removed. GeoTIFF (use the r.in.gdal module)

Climatic data

OGC WCS - Albedo example

TODO: update this example e.g. to http://demo.mapserver.org/cgi-bin/wcs?SERVICE=wcs&VERSION=1.0.0&REQUEST=GetCapabilities

GRASS imports OGC Web Coverage Service data. Example server (please suggest a better one!)

 <WCS_GDAL>
 <ServiceURL>http://laits.gmu.edu/cgi-bin/NWGISS/NWGISS?</ServiceURL>
 <CoverageName>AUTUMN.hdf</CoverageName>
 <Timeout>90</Timeout>
 <Resample>nearest</Resample>
 </WCS_GDAL>

Save this as albedo.xml. Import into a LatLong WGS84 location:

 r.in.gdal albedo.xml out=albedo

Unfortunately this server sends out the map shifted by 0.5 pixel. This requires a fix to the map boundary coordinates:

 r.region albedo n=90 s=-90 w=-180 e=180

Now apply color table and look at the map:

 r.colors albedo color=byr
 d.mon x0
 d.rast albedo

SNODAS maps

Snow Data Assimilation System data that support hydrological modeling and analysis. First download the data, and untar them (once for each month, and once for each day), and you should get pairs of “.dat” and “.Hdr” files. The data files are stored in flat 16-bit binary format, so assuming that “snowdas_in.dat” is the name of the input file, at the GRASS prompt:

  r.in.bin -bs bytes=2 rows=3351 cols=6935 north=52.874583333332339 \
  south=24.949583333333454 east=-66.942083333334011 west=-124.733749999998366 \
  anull=-9999 input=snowdas_input.dat output=snowdas

CHELSA climate maps

CHELSA – Climatologies at high resolution for the earth’s land surface areas is a high resolution (30 arc sec) climate data set for the earth land surface areas currently under development, see http://chelsa-climate.org/

Version 1.1 has some coordinate issues originating from SAGA being used (coordinate precision issue), see http://chelsa-climate.org/known-issues/

# WARNING: dirty hack - Better wait for the new release V1.2 of CHELSA!

for i in `ls /scratch/chelsa_climate/*.zip` ; do
   unzip $i
   NAME=`basename $i .zip`
   gdal_translate --config GDAL_CACHEMAX 2000 -a_ullr -180 84 180 -90 -co "COMPRESS=DEFLATE" $NAME.tif ${NAME}_fixed.tif
   rm -f $NAME.tif
done

WorldClim maps

WorldClim is a set of global climate layers (climate grids) with a spatial resolution of a square kilometer. Besides long-term average climate layers (representing the period 1950 - 2000) it also includes projections for future conditions based on downscaled global climate model (GCM) data from CMIP5 (IPPC Fifth Assessment) and projections of past conditions (downscaled global climate model output).

  • Load into a Lat/Lon WGS84 location (EPSG:4326)
  • The data set is provided in two formats: BIL and ESRI Grd. Import with r.in.bin or r.in.gdal. Version 1.4 has some coordinate issues:

a) BIL: binary format is 2 byte integer. Multiply by 10 using r.mapcalc to convert units. See http://www.worldclim.org/format.htm for more information and the MODIS help page for example of converting raw to data units. Note that the file header is missing a line. To fix:

# fix WorldClim's BIL; tmean example
for i in $(seq 1 12); do echo “PIXELTYPE SIGNEDINT” >>tmean$i.hdr; done

b) ESRI grd files: Note that the WorldClim ESRI grd files suffer from a quality issue of coordinate precision. See here for a solution.

# fix WorldClim's ESRI Grd; tmean example
export GDAL_CACHEMAX=2000
mkdir -p ~/tmp/
# fix broken WorldClim files, see https://lists.osgeo.org/pipermail/grass-user/2011-January/059358.html
# note: 60S, not 90S
for i in $(seq 1 12); do gdal_translate -a_ullr -180 90 180 -60 tmean_$i $HOME/tmp/tmean_${i}_fixed.tif; done
#
# import
for i in $(seq 1 12) ; do r.in.gdal input=$HOME/tmp/tmean_${i}_fixed.tif out=tmp --o ; g.region raster=tmp -p ; r.mapcalc "tmean_${i} = 0.1 * tmp" --o ; r.colors tmean_${i} color=celsius ; done
#
# clean up
g.remove raster name=tmp -f
rm -f ~/tmp/tmean_?_fixed.tif ; rm -f ~/tmp/tmean_??_fixed.tif

Africlim maps

Africlim provides four baseline data sets for current climate, including:

  • CRU CL 2.0
  • WorldClim v1.4
  • TAMSAT TARCAT v2.0 (rainfall only)
  • CHIRPS v1.8 (rainfall only).

It furthermore provides data sets with projections of future climates based on combinations of ten general circulation models (GCMs), downscaled using five regional climate models (RCMs) and the four above mentioned contemporary baselines, under two representative concentration pathways of the IPCC-AR5 (RCP4.5 and RCP8.5). The data layers are available as GeoTIF files at spatial resolutions of 10', 5', 2.5', 1' and 30".

PaleoClim maps

PaleoClim provides free, high-resolution paleoclimate data for use in biological modeling and GIS.

The data are available at 3 different spatial resolutions; from 2.5 arc-minutes (~5 km), 5 arc-minutes (~10 km), and 10 arc-minutes (~20 km). The CHELSA data are also available in 30 arc-seconds (~1 km). Each download is a “zip” file containing up to 19 GeoTiff (.tif) files, one for each of the bioclimatic variables.

Bioclimatic parameters

From the high-resolution monthly temperature and precipitation values, a set of derived parameters were calculated, broadly used in ecological applications. These bioclimatic variables are derived from the monthly mean temperature (or minimum and maximum temperature, depending on their availability) and precipitation values. They are specifically developed for species distribution modelling and related ecological applications . The procedure for generating bioclimatic variables followed WorldClim and used the ‘biovars’ function of the R package dismo. Output bioclimate layers were saved as individual GeoTiffs (*tif) and projected in the WGS 1984 projection.

Bio_1=Annual Mean Temperature [°C*10]
Bio_2=Mean Diurnal Range [°C]
Bio_3=Isothermality [Bio_2/Bio_7]
Bio_4=Temperature Seasonality [standard deviation*100]
Bio_5=Max Temperature of Warmest Month [°C*10]
Bio_6=Min Temperature of Coldest Month [°C*10]
Bio_7=Temperature Annual Range [°C*10]
Bio_8=Mean Temperature of Wettest Quarter [°C*10]
Bio_9=Mean Temperature of Driest Quarter [°C*10]
Bio_10=Mean Temperature of Warmest Quarter [°C*10]
Bio_11=Mean Temperature of Coldest Quarter [°C*10]
Bio_12=Annual Precipitation [mm/year]
Bio_13=Precipitation of Wettest Month [mm/month]
Bio_14=Precipitation of Driest Month [mm/month]
Bio_15=Precipitation Seasonality [coefficient of variation]v Bio_16=Precipitation of Wettest Quarter [mm/quarter]
Bio_17=Precipitation of Driest Quarter [mm/quarter]
Bio_18=Precipitation of Warmest Quarter [mm/quarter]
Bio_19=Precipitation of Coldest Quarter [mm/quarter]

Time Periods Represented (bp)

Pleistocene: late-Holocene, Meghalayan (4.2-0.3 ka)
Pleistocene: mid-Holocene, Northgrippian (8.326-4.2 ka)
Pleistocene: early-Holocene, Greenlandian (11.7-8.326 ka)
Pleistocene: Younger Dryas Stadial (12.9-11.7 ka)
Pleistocene: Bølling-Allerød ( 14.7-12.9 ka)
Pleistocene: Heinrich Stadial 1 (17.0-14.7 ka)
Pleistocene: Last Interglacial (ca. 130 ka)
Pleistocene: MIS19 (ca. 787 ka)
Pliocene: mid-Pliocene warm period (3.205 Ma)
Pliocene: M2 (ca. 3.3 Ma)

Population maps

WorldPop

Gridded Population of the World

Import with r.in.gdal, assign population color table with r.colors

Topographic maps

Soviet topographic maps

Vector data

Natural Earth

CDC Geographic Boundary and Public Health Maps

Global Administrative Areas

  • GADM is a database of the location of the world's administrative areas (boundaries) available in shapefiles.
http://gadm.org (extracted by country here)
  • World Borders Dataset including ISO 3166-1 Country codes available in shapefiles.
http://thematicmapping.org/downloads/world_borders.php
  • Free GIS data from Mapping Hacks
http://mappinghacks.com/data/

GSHHS World Coastline

GSHHS is a high resolution shoreline dataset. It is derived from data in the public domain and licensed as GPL. The shorelines are constructed entirely from hierarchically arranged closed polygons. It is closely linked to the GMT project.

Availability

For GRASS 6 you can download 1:250,000 shoreline data from NOAA's site in Mapgen format, which can be imported with the v.in.mapgen module.

Import

OpenStreetMap

See the OpenStreetMap wiki page.

Administrative boundaries from OpenStreetMap

For a convenient download in GeoJSON and SHAPE, see https://wambachers-osm.website/boundaries/

(using the amost invisible triangle, you can pop out details of a country down to admin level 8)

SALB

Second Administrative Level Boundaries: "The SALB dataset is a global digital dataset consisting of digital maps and codes that can be downloaded on a country by country basis."

VMap0

1:1 million vector data. Formerly known as Digital Chart of the World

Check the Wikipedia page on VMAP, see the links at the bottom of that article to shapefile versions of VMAP0 and VMAP1. Those look like the versions that were, several years ago, on a NIMA (predecessor to NGA, and successor to the Defense Mapping Agency that managed the Digital Chart of the World and VMAP project) Website. Many GRASS users may prefer the shapefiles to the original Vector Product Format data.


See also

Metadata Catalogues

Catalog Service for the Web (CSW) is an OGC standard for offering access to catalogues of geospatial information over the Internet (HTTP). CSW allow for discovering, browsing, and querying metadata about data, services, and similar resources. A list of Metadata Catalogues / CSW services from member states of the European Union can be found here:

And here: http://inspire-geoportal.ec.europa.eu/discovery/ one can search European Metadata Catalogues online.

European datasets

  • European datasets
  • Global Risk Data Platform
  • European Commission Opendata Portal: 5800+ datasets
  • E-OBS This is the download page for the ENSEMBLES daily gridded observational dataset for precipitation, temperature and sea level pressure in Europe
  • MARS @ JRC Temperature, vapour pressure, rainfall, relative humidity, cloud cover, solar radiation, wind speed.
  • EFAS @ JRC is a High resolution pan-European dataset for hydrologic modelling.
  • JRC Data Portal In this catalogue, you can find an inventory of data that produced by the JRC in accordance with the JRC data policy. The content is continuously updated and shall not be seen as a complete inventory of JRC data. Currently, the inventory describes only a small subset of JRC data.

US datasets

National datasets

Various datasets worldwide

WMS servers

River discharge data