English

Deep Learning for One-dimensional Consolidation

Computational Engineering, Finance, and Science 2025-02-26 v1 Image and Video Processing

Abstract

Neural networks with physical governing equations as constraints have recently created a new trend in machine learning research. In line with such efforts, a deep learning model for one-dimensional consolidation where the governing equation is applied as a constraint in the neural network is presented here. A review of related research is first presented and discussed. The deep learning model relies on automatic differentiation for applying the governing equation as a constraint. The total loss is measured as a combination of the training loss (based on analytical and model predicted solutions) and the constraint loss (a requirement to satisfy the governing equation). Two classes of problems are considered: forward and inverse problems. The forward problems demonstrate the performance of a physically constrained neural network model in predicting solutions for one-dimensional consolidation problems. Inverse problems show prediction of the coefficient of consolidation. Terzaghi's problem with varying boundary conditions are used as example and the deep learning model shows a remarkable performance in both the forward and inverse problems. While the application demonstrated here is a simple one-dimensional consolidation problem, such a deep learning model integrated with a physical law has huge implications for use in, such as, faster real-time numerical prediction for digital twins, numerical model reproducibility and constitutive model parameter optimization.

Keywords

Cite

@article{arxiv.2004.11689,
  title  = {Deep Learning for One-dimensional Consolidation},
  author = {Yared W. Bekele},
  journal= {arXiv preprint arXiv:2004.11689},
  year   = {2025}
}

Comments

19 pages, 13 figures

R2 v1 2026-06-23T15:04:30.561Z