Learning Deep Implicit Fourier Neural Operators (IFNOs) with
Applications to Heterogeneous Material Modeling
- URL: http://arxiv.org/abs/2203.08205v1
- Date: Tue, 15 Mar 2022 19:08:13 GMT
- Title: Learning Deep Implicit Fourier Neural Operators (IFNOs) with
Applications to Heterogeneous Material Modeling
- Authors: Huaiqian You, Quinn Zhang, Colton J. Ross, Chung-Hao Lee, Yue Yu
- Abstract summary: We propose to use data-driven modeling to predict a material's response without using conventional models.
The material response is modeled by learning the implicit mappings between loading conditions and the resultant displacement and/or damage fields.
We demonstrate the performance of our proposed method for a number of examples, including hyperelastic, anisotropic and brittle materials.
- Score: 3.9181541460605116
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Constitutive modeling based on continuum mechanics theory has been a
classical approach for modeling the mechanical responses of materials. However,
when constitutive laws are unknown or when defects and/or high degrees of
heterogeneity are present, these classical models may become inaccurate. In
this work, we propose to use data-driven modeling, which directly utilizes
high-fidelity simulation and/or experimental measurements to predict a
material's response without using conventional constitutive models.
Specifically, the material response is modeled by learning the implicit
mappings between loading conditions and the resultant displacement and/or
damage fields, with the neural network serving as a surrogate for a solution
operator. To model the complex responses due to material heterogeneity and
defects, we develop a novel deep neural operator architecture, which we coin as
the Implicit Fourier Neural Operator (IFNO). In the IFNO, the increment between
layers is modeled as an integral operator to capture the long-range
dependencies in the feature space. As the network gets deeper, the limit of
IFNO becomes a fixed point equation that yields an implicit neural operator and
naturally mimics the displacement/damage fields solving procedure in material
modeling problems. We demonstrate the performance of our proposed method for a
number of examples, including hyperelastic, anisotropic and brittle materials.
As an application, we further employ the proposed approach to learn the
material models directly from digital image correlation (DIC) tracking
measurements, and show that the learned solution operators substantially
outperform the conventional constitutive models in predicting displacement
fields.
Related papers
- DimOL: Dimensional Awareness as A New 'Dimension' in Operator Learning [63.5925701087252]
We introduce DimOL (Dimension-aware Operator Learning), drawing insights from dimensional analysis.
To implement DimOL, we propose the ProdLayer, which can be seamlessly integrated into FNO-based and Transformer-based PDE solvers.
Empirically, DimOL models achieve up to 48% performance gain within the PDE datasets.
arXiv Detail & Related papers (2024-10-08T10:48:50Z) - Peridynamic Neural Operators: A Data-Driven Nonlocal Constitutive Model
for Complex Material Responses [12.454290779121383]
We introduce a novel integral neural operator architecture called the Peridynamic Neural Operator (PNO) that learns a nonlocal law from data.
This neural operator provides a forward model in the form of state-based peridynamics, with objectivity and momentum balance laws automatically guaranteed.
We show that, owing to its ability to capture complex responses, our learned neural operator achieves improved accuracy and efficiency compared to baseline models.
arXiv Detail & Related papers (2024-01-11T17:37:20Z) - Discovering Interpretable Physical Models using Symbolic Regression and
Discrete Exterior Calculus [55.2480439325792]
We propose a framework that combines Symbolic Regression (SR) and Discrete Exterior Calculus (DEC) for the automated discovery of physical models.
DEC provides building blocks for the discrete analogue of field theories, which are beyond the state-of-the-art applications of SR to physical problems.
We prove the effectiveness of our methodology by re-discovering three models of Continuum Physics from synthetic experimental data.
arXiv Detail & Related papers (2023-10-10T13:23:05Z) - Neural Operators for Accelerating Scientific Simulations and Design [85.89660065887956]
An AI framework, known as Neural Operators, presents a principled framework for learning mappings between functions defined on continuous domains.
Neural Operators can augment or even replace existing simulators in many applications, such as computational fluid dynamics, weather forecasting, and material modeling.
arXiv Detail & Related papers (2023-09-27T00:12:07Z) - FAENet: Frame Averaging Equivariant GNN for Materials Modeling [123.19473575281357]
We introduce a flexible framework relying on frameaveraging (SFA) to make any model E(3)-equivariant or invariant through data transformations.
We prove the validity of our method theoretically and empirically demonstrate its superior accuracy and computational scalability in materials modeling.
arXiv Detail & Related papers (2023-04-28T21:48:31Z) - Learning solution of nonlinear constitutive material models using
physics-informed neural networks: COMM-PINN [0.0]
We apply physics-informed neural networks to solve the relations for nonlinear, path-dependent material behavior.
One advantage of this work is that it bypasses the repetitive Newton iterations needed to solve nonlinear equations in complex material models.
arXiv Detail & Related papers (2023-04-10T19:58:49Z) - Capturing dynamical correlations using implicit neural representations [85.66456606776552]
We develop an artificial intelligence framework which combines a neural network trained to mimic simulated data from a model Hamiltonian with automatic differentiation to recover unknown parameters from experimental data.
In doing so, we illustrate the ability to build and train a differentiable model only once, which then can be applied in real-time to multi-dimensional scattering data.
arXiv Detail & Related papers (2023-04-08T07:55:36Z) - Neural Abstractions [72.42530499990028]
We present a novel method for the safety verification of nonlinear dynamical models that uses neural networks to represent abstractions of their dynamics.
We demonstrate that our approach performs comparably to the mature tool Flow* on existing benchmark nonlinear models.
arXiv Detail & Related papers (2023-01-27T12:38:09Z) - A Physics-Guided Neural Operator Learning Approach to Model Biological
Tissues from Digital Image Correlation Measurements [3.65211252467094]
We present a data-driven correlation to biological tissue modeling, which aims to predict the displacement field based on digital image correlation (DIC) measurements under unseen loading scenarios.
A material database is constructed from the DIC displacement tracking measurements of multiple biaxial stretching protocols on a porcine tricuspid valve leaflet.
The material response is modeled as a solution operator from the loading to the resultant displacement field, with the material properties learned implicitly from the data and naturally embedded in the network parameters.
arXiv Detail & Related papers (2022-04-01T04:56:41Z) - Automatically Polyconvex Strain Energy Functions using Neural Ordinary
Differential Equations [0.0]
Deep neural networks are able to learn complex material without the constraints of form approximations.
N-ODE material model is able to capture synthetic data generated from closedform material models.
framework can be used to model a large class of materials.
arXiv Detail & Related papers (2021-10-03T13:11:43Z) - A data-driven peridynamic continuum model for upscaling molecular
dynamics [3.1196544696082613]
We propose a learning framework to extract, from molecular dynamics data, an optimal Linear Peridynamic Solid model.
We provide sufficient well-posedness conditions for discretized LPS models with sign-changing influence functions.
This framework guarantees that the resulting model is mathematically well-posed, physically consistent, and that it generalizes well to settings that are different from the ones used during training.
arXiv Detail & Related papers (2021-08-04T07:07:47Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.