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Physics-informed deep learning approach for modeling crustal deformation
by
Ito, Takeo
, Hirahara, Kazuro
, Okazaki, Tomohisa
, Ueda, Naonori
in
704/2151/2809
/ 704/2151/562
/ Anelasticity
/ Boundary conditions
/ Deep learning
/ Deformation
/ Dislocation models
/ Earth crust
/ Earth mantle
/ Earthquakes
/ Fault lines
/ Geological faults
/ Humanities and Social Sciences
/ Inverse problems
/ Mechanical properties
/ Modelling
/ multidisciplinary
/ Neural networks
/ Physics
/ Polar coordinates
/ Rock properties
/ Science
/ Science (multidisciplinary)
/ Seismic activity
/ Tectonics
/ Upper mantle
2022
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Physics-informed deep learning approach for modeling crustal deformation
by
Ito, Takeo
, Hirahara, Kazuro
, Okazaki, Tomohisa
, Ueda, Naonori
in
704/2151/2809
/ 704/2151/562
/ Anelasticity
/ Boundary conditions
/ Deep learning
/ Deformation
/ Dislocation models
/ Earth crust
/ Earth mantle
/ Earthquakes
/ Fault lines
/ Geological faults
/ Humanities and Social Sciences
/ Inverse problems
/ Mechanical properties
/ Modelling
/ multidisciplinary
/ Neural networks
/ Physics
/ Polar coordinates
/ Rock properties
/ Science
/ Science (multidisciplinary)
/ Seismic activity
/ Tectonics
/ Upper mantle
2022
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Do you wish to request the book?
Physics-informed deep learning approach for modeling crustal deformation
by
Ito, Takeo
, Hirahara, Kazuro
, Okazaki, Tomohisa
, Ueda, Naonori
in
704/2151/2809
/ 704/2151/562
/ Anelasticity
/ Boundary conditions
/ Deep learning
/ Deformation
/ Dislocation models
/ Earth crust
/ Earth mantle
/ Earthquakes
/ Fault lines
/ Geological faults
/ Humanities and Social Sciences
/ Inverse problems
/ Mechanical properties
/ Modelling
/ multidisciplinary
/ Neural networks
/ Physics
/ Polar coordinates
/ Rock properties
/ Science
/ Science (multidisciplinary)
/ Seismic activity
/ Tectonics
/ Upper mantle
2022
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Physics-informed deep learning approach for modeling crustal deformation
Journal Article
Physics-informed deep learning approach for modeling crustal deformation
2022
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Overview
The movement and deformation of the Earth’s crust and upper mantle provide critical insights into the evolution of earthquake processes and future earthquake potentials. Crustal deformation can be modeled by dislocation models that represent earthquake faults in the crust as defects in a continuum medium. In this study, we propose a physics-informed deep learning approach to model crustal deformation due to earthquakes. Neural networks can represent continuous displacement fields in arbitrary geometrical structures and mechanical properties of rocks by incorporating governing equations and boundary conditions into a loss function. The polar coordinate system is introduced to accurately model the displacement discontinuity on a fault as a boundary condition. We illustrate the validity and usefulness of this approach through example problems with strike-slip faults. This approach has a potential advantage over conventional approaches in that it could be straightforwardly extended to high dimensional, anelastic, nonlinear, and inverse problems.
Modeling crustal deformation is critical for understanding of tectonic processes and earthquake potentials. Here, the authors propose a deep learning approach that can be extended in a straightforward manner to complex crustal structures and inverse problems.
Publisher
Nature Publishing Group UK,Nature Publishing Group,Nature Portfolio
Subject
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