Dataset underlying the publication: Machine learning for predicting spatially variable lateral hydraulic conductivity: a step towards efficient hydrological model calibration and global applicability
DOI: 10.4121/6e994451-5c8e-41c6-a9e3-4f7343bec22a
Datacite citation style
Dataset
Two globally distributed maps of horizontal-to-vertical saturated hydraulic conductivity (fKh0) were generated using machine learning algorithms using random forest and boosted regression trees. Linking the calibrated benchmark of fKh0 achieved by Weerts et al. (2024) over 551 subbasins over the Great Britain to the structural soil properties from SoilGrids v1.0, we estimate pedo-transfer functions to predict fKh0 values globally at 250m spatial resolution.
Reference:
Weerts, A. H. (2024). Dataset underlying the publication: Revealing spatial patterns of lateral hydraulic conductivity through sensitivity analysis. 4TU.ResearchData. Retrieved from https://doi.org/10.4121/6026ee8f-1e37-4760-abb6-b0a6251b3089.v2
History
- 2025-08-27 first online, published, posted
Publisher
4TU.ResearchDataFormat
.txt and .tifFunding
- European Space Agency (ESA) (grant code 4000141141/23/I-EF)
- European High-Performance Computing Joint Undertaking (grant code 955648)
Organizations
Operational Water Management & Early Warning, Department of Inland Water Systems, Deltares, The Netherlands;Hydrology and Environmental Hydraulics Group, Department of Environmental Sciences, Wageningen University & Research
DATA
Files (3)
- 2,846 bytesMD5:
db372e573f39893d2c9a9056535ea6d8Readme.txt - 3,818,495,396 bytesMD5:
99ac1312bfbd0160a7eced8a0a0150ecBRT_fKh0_global_250m.tif - 6,024,925,543 bytesMD5:
e6ea9bb3d3690d04b4d7370dd4239c75RF_fKh0_global_250m.tif -
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