Physics-informed deep learning for one-dimensional consolidation

Neural networks with physical governing equations as constraints have recently created a new trend in machine learning research. In this context, a review of related research is first presented and discussed. The potential offered by such physics-informed deep learning models for computations in geo...

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Main Author: Yared W. Bekele
Format: Article
Language:English
Published: Elsevier 2021-04-01
Series:Journal of Rock Mechanics and Geotechnical Engineering
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S1674775520301384
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spelling doaj-9f25c69d4ce347f6a18c0fa777fca04f2021-04-24T05:56:25ZengElsevierJournal of Rock Mechanics and Geotechnical Engineering1674-77552021-04-01132420430Physics-informed deep learning for one-dimensional consolidationYared W. Bekele0Rock and Soil Mechanics Group, SINTEF AS, Trondheim, NorwayNeural networks with physical governing equations as constraints have recently created a new trend in machine learning research. In this context, a review of related research is first presented and discussed. The potential offered by such physics-informed deep learning models for computations in geomechanics is demonstrated by application to one-dimensional (1D) consolidation. The governing equation for 1D problems is applied as a constraint in the deep learning model. The deep learning model relies on automatic differentiation for applying the governing equation as a constraint, based on the mathematical approximations established by the neural network. 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 1D consolidation problems. Inverse problems show prediction of the coefficient of consolidation. Terzaghi’s problem, with varying boundary conditions, is used as a numerical 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 1D consolidation problem, such a deep learning model integrated with a physical law has significant implications for use in, such as, faster real-time numerical prediction for digital twins, numerical model reproducibility and constitutive model parameter optimization.http://www.sciencedirect.com/science/article/pii/S1674775520301384Physics-informed deep learningConsolidationForward problemsInverse problems
collection DOAJ
language English
format Article
sources DOAJ
author Yared W. Bekele
spellingShingle Yared W. Bekele
Physics-informed deep learning for one-dimensional consolidation
Journal of Rock Mechanics and Geotechnical Engineering
Physics-informed deep learning
Consolidation
Forward problems
Inverse problems
author_facet Yared W. Bekele
author_sort Yared W. Bekele
title Physics-informed deep learning for one-dimensional consolidation
title_short Physics-informed deep learning for one-dimensional consolidation
title_full Physics-informed deep learning for one-dimensional consolidation
title_fullStr Physics-informed deep learning for one-dimensional consolidation
title_full_unstemmed Physics-informed deep learning for one-dimensional consolidation
title_sort physics-informed deep learning for one-dimensional consolidation
publisher Elsevier
series Journal of Rock Mechanics and Geotechnical Engineering
issn 1674-7755
publishDate 2021-04-01
description Neural networks with physical governing equations as constraints have recently created a new trend in machine learning research. In this context, a review of related research is first presented and discussed. The potential offered by such physics-informed deep learning models for computations in geomechanics is demonstrated by application to one-dimensional (1D) consolidation. The governing equation for 1D problems is applied as a constraint in the deep learning model. The deep learning model relies on automatic differentiation for applying the governing equation as a constraint, based on the mathematical approximations established by the neural network. 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 1D consolidation problems. Inverse problems show prediction of the coefficient of consolidation. Terzaghi’s problem, with varying boundary conditions, is used as a numerical 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 1D consolidation problem, such a deep learning model integrated with a physical law has significant implications for use in, such as, faster real-time numerical prediction for digital twins, numerical model reproducibility and constitutive model parameter optimization.
topic Physics-informed deep learning
Consolidation
Forward problems
Inverse problems
url http://www.sciencedirect.com/science/article/pii/S1674775520301384
work_keys_str_mv AT yaredwbekele physicsinformeddeeplearningforonedimensionalconsolidation
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