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Physics-Informed Neural Networks for Estimating a Continuous Form of the Soil Water Retention Curve from Basic Soil Properties
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  • Sarem Norouzi,
  • Charles Pesch,
  • Emmanuel Arthur,
  • Trine Norgaard,
  • Per Møldrup,
  • Mogens Humlekrog Greve,
  • Amelie Beucher,
  • Morteza Sadeghi,
  • Marzieh Zaresourmanabad,
  • Markus Tuller,
  • Bo V. Iversen,
  • Lis Wollesen de Jonge
Sarem Norouzi
Aarhus University

Corresponding Author:[email protected]

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Charles Pesch
Aarhus University
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Emmanuel Arthur
Aarhus University
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Trine Norgaard
Aarhus University
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Per Møldrup
Aarborg University
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Mogens Humlekrog Greve
Aarhus University
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Amelie Beucher
Aarhus University
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Morteza Sadeghi
Aarhus University
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Marzieh Zaresourmanabad
Aarhus University
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Markus Tuller
University of Arizona
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Bo V. Iversen
Aarhus University
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Lis Wollesen de Jonge
Aarhus University

Abstract

The soil water retention curve (SWRC) is essential for describing water and energy exchange processes at the interface between the solid earth and the atmosphere. Despite its importance, measuring the SWRC using standard laboratory methods is challenging and time-consuming. This paper presents a novel physics-informed neural network (PINN) approach for developing pedotransfer functions (PTFs) to predict continuous SWRCs based on soil texture, organic carbon content, and dry bulk density. In contrast to conventional parametric PTFs developed for specific SWRC models, the PINN learns a non-specific form of the SWRC by effectively integrating both measurements and physical constraints into the training process. This approach allows the estimated SWRC to maintain its physical integrity from saturation to oven-dry conditions, even in scenarios with sparse data. The new approach is particularly effective for tackling the challenges encountered in developing PTFs on large SWRC datasets, which often have an imbalance towards the wet-end and include numerous samples with limited and unevenly distributed measurements. We compared the performance of the PINN with that of a conventional physics-agnostic neural network using a dataset of 4200 soil samples. While both networks performed similarly at the wet-end where data are abundant, the PINN excelled at the dry-end where data are sparse and unevenly distributed, achieving a normalized RMSE of 0.172 compared to 0.522 for the conventional neural network. The SWRC derived from the PINN is differentiable with respect to the matric potential and can be seamlessly integrated into the governing equations of water flow in the unsaturated zone.
13 Jun 2024Submitted to ESS Open Archive
24 Jun 2024Published in ESS Open Archive