Scientific Data (Jan 2024)

A new high-resolution global topographic factor dataset calculated based on SRTM

  • Yuwei Sun,
  • Hongming Zhang,
  • Qinke Yang,
  • Rui Li,
  • Baoyuan Liu,
  • Xining Zhao,
  • Haijing Shi,
  • Hongyi Li,
  • Yuhan Ren,
  • Xiao Fan,
  • Liang Dong,
  • Yikun Xu,
  • Yi Chang,
  • Linlin Yuan

DOI
https://doi.org/10.1038/s41597-024-02917-w
Journal volume & issue
Vol. 11, no. 1
pp. 1 – 18

Abstract

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Abstract Topography is an important factor affecting soil erosion and is measured as a combination of the slope length and slope steepness (LS-factor) in erosion models, like the Chinese Soil Loss Equation. However, global high-resolution LS-factor datasets have rarely been published. Challenges arise when attempting to extract the LS-factor on a global scale. Furthermore, existing LS-factor estimation methods necessitate projecting data from a spherical trapezoidal grid to a planar rectangle, resulting in grid size errors and high time complexity. Here, we present a global 1-arcsec resolution LS-factor dataset (DS-LS-GS1) with an improved method for estimating the LS-factor without projection conversion (LS-WPC), and we integrate it into a software tool (LS-TOOL). Validation of the Himmelblau–Orlandini mathematical surface shows that errors are less than 1%. We assess the LS-WPC method on 20 regions encompassing 5 landform types, and R2 of LS-factor are 0.82, 0.82, 0.83, 0.83, and 0.84. Moreover, the computational efficiency can be enhanced by up to 25.52%. DS-LS-GS1 can be used as high-quality input data for global soil erosion assessment.