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Published February 24, 2025 | Version v0
Dataset Open

Global Ensemble Digital Terrain Model 30m (GEDTM30)

  • 1. OpenGeoHub

Description

Disclaimer

This is the first release of the Global Ensemble Digital Terrain Model (GEDTM30). Use for testing purposes only. A publication describing the methods used has been submitted to PeerJ and is currently under review. This work was funded by the European Union. However, the views and opinions expressed are solely those of the author(s) and do not necessarily reflect those of the European Union or the European Commission. Neither the European Union nor the granting authority can be held responsible for them. The data is provided "as is." The Open-Earth-Monitor project consortium, along with its suppliers and licensors, hereby disclaims all warranties of any kind, express or implied, including, without limitation, warranties of merchantability, fitness for a particular purpose, and non-infringement. Neither the Open-Earth-Monitor project consortium nor its suppliers and licensors make any warranty that the website will be error-free or that access to it will be continuous or uninterrupted. You understand that you download or otherwise obtain content or services from the website at your own discretion and risk.

Description

GEDTM30 is presented as a 1-arc-second (~30m) global Digital Terrain Model (DTM) generated using machine-learning-based data fusion. It was trained using a global-to-local Random Forest model with ICESat-2 and GEDI data, incorporating almost 30 billion high-quality points. To see the documentation, please visit our GEDTM30 GitHub(https://github.com/openlandmap/GEDTM30).

This dataset covers the entire world and can be used for applications such as topography, hydrology, and geomorphometry analysis.

Dataset Contents

This dataset includes:

  • GEDTM30
    Represents the predicted terrain height.
  • Uncertainty of GEDTM30 prediction
    Provides an uncertainty map of the terrain prediction, derived from the standard deviation of individual tree predictions in the Random Forest model.

Due to Zenodo's storage limitations, the original GEDTM30 dataset and its standard deviation map are provided via external links:

Related Identifiers

Data Details

  • Time period: static.
  • Type of data: Digital Terrain Model
  • How the data was collected or derived: Machine learning models.
  • Statistical Methods used: Random Forest.
  • Limitations or exclusions in the data: The dataset does not include data Antarctica.
  • Coordinate reference system: EPSG:4326
  • Bounding box (Xmin, Ymin, Xmax, Ymax): (-180, -65, 180, 85)
  • Spatial resolution: 120m
  • Image size: 360,000P x 178,219L
  • File format: Cloud Optimized Geotiff (COG) format.
  • Layer information:

 

Layer Scale Data Type No Data
Ensemble Digital Terrain Model 10 Int32 -2,147,483,647
Standard Deviation EDTM 100 UInt16 65,535

Support

If you discover a bug, artifact, or inconsistency, or if you have a question please raise a GitHub issue here

Naming convention

To ensure consistency and ease of use across and within the projects, we follow the standard Ai4SoilHealth and Open-Earth-Monitor file-naming convention. The convention works with 10 fields that describe important properties of the data. In this way users can search files, prepare data analysis etc, without needing to open files.

For example, for edtm_rf_m_120m_s_20000101_20231231_go_epsg.4326_v20250130.tif, the fields are:

  1. generic variable name: edtm = ensemble digital terrain model
  2. variable procedure combination: rf = random forest
  3. Position in the probability distribution/variable type: m = mean | sd = standard deviation
  4. Spatial support: 120m
  5. Depth reference: s = surface
  6. Time reference begin time: 20000101 = 2000-01-01
  7. Time reference end time: 20231231 = 2023-12-31
  8. Bounding box: go = global
  9. EPSG code: EPSG:4326
  10. Version code: v20250130 = version from 2025-01-30

Files

00_preview_edtm.png

Files (38.9 GB)

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md5:eb7d96e8ca5841f574a23d024e5b5268
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Additional details

Funding

European Commission
OEMC - Open-Earth-Monitor Cyberinfrastructure 101059548