Published November 28, 2024 | Version 1.0.0
Software Open

EROSPOT software package - part 1: Identification of erosion hotspots at sub-field level using high-resolution geospatial data

  • 1. ROR icon Leibniz Centre for Agricultural Landscape Research
  • 2. Humboldt University of Berlin
  • 3. ROR icon University of Giessen

Contributors

  • 1. Humboldt University of Berlin
  • 2. Leibniz Centre for Agricultural Landscape Research

Description

Soil erosion in agriculture reduces yield potential and at the same time damages surrounding ecosystems, especially water bodies, through sediment, nutrient and pesticide inputs. In the EROSPOT project, high-risk locations (hotspots) polluting water bodies through water erosion were identified on farmland at sub-field level through the automated processing of high-resolution geodata. The hotspots indicate high priority locations for erosion control and are thus of value for farmers, advisors, policy makers and society at all.

The method published by Melzer et al. (2023) consists of three main steps: i) preprocessing geodata at the watershed level for the erosion model InVEST SDR (Natural Capital Project 2024) ii) calculating an erosion raster by InVEST SDR, iii) identifying hotspots based on the InVEST SDR output “sed_export.tif”

The high resolution of input data, in particular a digital elevation model (DEM) based on a 1x1 meter grid, places high demands on computing power. Analysis on large areas (federal states or nations) are requiring a division of calculations into smaller catchment areas. Given the high amount of processing steps, automation is mandatory. In addition, automation enables the rapid recalculation of outputs, e.g. to map land use scenarios or actual changes by time. The three presented steps where thus completely automated in python to calculate 1x1 meter resolution raster datasets and respective sharply delineated hotspots (vector data) for individual watersheds. The automation is currently adapted to datasets available in the federal state of Bavaria (south Germany) but allows nation-wide calculations (for Germany and other countries with similar data availability).

The python program codes, a user guide about necessary data inputs and configurations to run the software, a table including soil cover values of different crop types and land use classes as well as exemplary outputs of a watershed are provided.

Files

Example_Outputs_EROSPOT_Part_1.zip

Files (98.9 MB)

Name Size Download all
md5:e29e66d9bc5750261b181260e71f3d47
96.4 MB Preview Download
md5:a06813bcecba46f83182c09131bd1384
42.5 kB Preview Download
md5:25f79d3d74a3cad54403a3b441720158
22.8 kB Preview Download
md5:c36142bb68d12c755dd8c8245b4cfed5
2.4 MB Preview Download

Additional details

Related works

Is supplement to
Conference paper: 978-3-88579-724-1 (ISBN)

Funding

Federal Ministry of Education and Research
Agricultural Systems of the Future 031B0729A
Bayerisches Staatsministerium für Ernährung, Landwirtschaft und Forsten
Bayerische Forschungsförderung A/22/01

Software

Repository URL
https://github.com/nishita2695/EROSPOT.git
Programming language
Python
Development Status
Active

References

  • Melzer, Marvin; Thakur, Nishita; Ebertseder, Florian; Bellingrath-Kimura, Sonoko (2023): Identifizierung kleinräumiger Erosionshotspots unter Berücksichtigung aquatischer Ökosysteme zur Etablierung von Erosionsschutzstreifen. 43. GIL-Jahrestagung, Resiliente Agri-Food-Systeme. Bonn: Gesellschaft für Informatik e.V.. PISSN: 1617-5468. ISBN: 978-3-88579-724-1. pp. 171-182. Osnabrück. 13.-14. Februar 2023