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Predicting soil thickness on soil mantled hillslopes.

Nicholas R PattonKathleen A LohseSarah E GodseyBenjamin T CrosbyMark S Seyfried
Published in: Nature communications (2018)
Soil thickness is a fundamental variable in many earth science disciplines due to its critical role in many hydrological and ecological processes, but it is difficult to predict. Here we show a strong linear relationship (r2 = 0.87, RMSE = 0.19 m) between soil thickness and hillslope curvature across both convergent and divergent parts of the landscape at a field site in Idaho. We find similar linear relationships across diverse landscapes (n = 6) with the slopes of these relationships varying as a function of the standard deviation in catchment curvatures. This soil thickness-curvature approach is significantly more efficient and just as accurate as kriging-based methods, but requires only high-resolution elevation data and as few as one soil profile. Efficiently attained, spatially continuous soil thickness datasets enable improved models for soil carbon, hydrology, weathering, and landscape evolution.
Keyphrases
  • high resolution
  • optical coherence tomography
  • plant growth
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  • deep learning
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