Stochastic analysis of heterogeneous porous material with modified
neural architecture search (NAS) based physics-informed neural networks using
transfer learning
- URL: http://arxiv.org/abs/2010.12344v2
- Date: Sat, 12 Dec 2020 20:59:43 GMT
- Title: Stochastic analysis of heterogeneous porous material with modified
neural architecture search (NAS) based physics-informed neural networks using
transfer learning
- Authors: Hongwei Guo, Xiaoying Zhuang and Timon Rabczuk
- Abstract summary: modified neural architecture search method (NAS) based physics-informed deep learning model is presented.
A three dimensional flow model is built to provide a benchmark to the simulation of groundwater flow in highly heterogeneous aquifers.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In this work, a modified neural architecture search method (NAS) based
physics-informed deep learning model is presented for stochastic analysis in
heterogeneous porous material. Monte Carlo method based on a randomized
spectral representation is first employed to construct a stochastic model for
simulation of flow through porous media. To solve the governing equations for
stochastic groundwater flow problem, we build a modified NAS model based on
physics-informed neural networks (PINNs) with transfer learning in this paper
that will be able to fit different partial differential equations (PDEs) with
less calculation. The performance estimation strategies adopted is constructed
from an error estimation model using the method of manufactured solutions. A
sensitivity analysis is performed to obtain the prior knowledge of the PINNs
model and narrow down the range of parameters for search space and use
hyper-parameter optimization algorithms to further determine the values of the
parameters. Further the NAS based PINNs model also saves the weights and biases
of the most favorable architectures, then used in the fine-tuning process. It
is found that the log-conductivity field using Gaussian correlation function
will perform much better than exponential correlation case, which is more
fitted to the PINNs model and the modified neural architecture search based
PINNs model shows a great potential in approximating solutions to PDEs.
Moreover, a three dimensional stochastic flow model is built to provide a
benchmark to the simulation of groundwater flow in highly heterogeneous
aquifers. The NAS model based deep collocation method is verified to be
effective and accurate through numerical examples in different dimensions using
different manufactured solutions.
Related papers
- Discovering Physics-Informed Neural Networks Model for Solving Partial Differential Equations through Evolutionary Computation [5.8407437499182935]
This article proposes an evolutionary computation method aimed at discovering the PINNs model with higher approximation accuracy and faster convergence rate.
In experiments, the performance of different models that are searched through Bayesian optimization, random search and evolution is compared in solving Klein-Gordon, Burgers, and Lam'e equations.
arXiv Detail & Related papers (2024-05-18T07:32:02Z) - 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) - Random Grid Neural Processes for Parametric Partial Differential
Equations [5.244037702157957]
We introduce a new class of spatially probabilistic physics and data informed deep latent models for PDEs.
We solve forward and inverse problems for parametric PDEs in a way that leads to the construction of Gaussian process models of solution fields.
We show how to incorporate noisy data in a principled manner into our physics informed model to improve predictions for problems where data may be available.
arXiv Detail & Related papers (2023-01-26T11:30:56Z) - A predictive physics-aware hybrid reduced order model for reacting flows [65.73506571113623]
A new hybrid predictive Reduced Order Model (ROM) is proposed to solve reacting flow problems.
The number of degrees of freedom is reduced from thousands of temporal points to a few POD modes with their corresponding temporal coefficients.
Two different deep learning architectures have been tested to predict the temporal coefficients.
arXiv Detail & Related papers (2023-01-24T08:39:20Z) - Deep Learning Aided Laplace Based Bayesian Inference for Epidemiological
Systems [2.596903831934905]
We propose a hybrid approach where Laplace-based Bayesian inference is combined with an ANN architecture for obtaining approximations to the ODE trajectories.
The effectiveness of our proposed methods is demonstrated using an epidemiological system with non-analytical solutions, the Susceptible-Infectious-Removed (SIR) model for infectious diseases.
arXiv Detail & Related papers (2022-10-17T09:02:41Z) - Neural Operator with Regularity Structure for Modeling Dynamics Driven
by SPDEs [70.51212431290611]
Partial differential equations (SPDEs) are significant tools for modeling dynamics in many areas including atmospheric sciences and physics.
We propose the Neural Operator with Regularity Structure (NORS) which incorporates the feature vectors for modeling dynamics driven by SPDEs.
We conduct experiments on various of SPDEs including the dynamic Phi41 model and the 2d Navier-Stokes equation.
arXiv Detail & Related papers (2022-04-13T08:53:41Z) - Mixed Effects Neural ODE: A Variational Approximation for Analyzing the
Dynamics of Panel Data [50.23363975709122]
We propose a probabilistic model called ME-NODE to incorporate (fixed + random) mixed effects for analyzing panel data.
We show that our model can be derived using smooth approximations of SDEs provided by the Wong-Zakai theorem.
We then derive Evidence Based Lower Bounds for ME-NODE, and develop (efficient) training algorithms.
arXiv Detail & Related papers (2022-02-18T22:41:51Z) - Inverting brain grey matter models with likelihood-free inference: a
tool for trustable cytoarchitecture measurements [62.997667081978825]
characterisation of the brain grey matter cytoarchitecture with quantitative sensitivity to soma density and volume remains an unsolved challenge in dMRI.
We propose a new forward model, specifically a new system of equations, requiring a few relatively sparse b-shells.
We then apply modern tools from Bayesian analysis known as likelihood-free inference (LFI) to invert our proposed model.
arXiv Detail & Related papers (2021-11-15T09:08:27Z) - Physics-Informed Neural Network Method for Solving One-Dimensional
Advection Equation Using PyTorch [0.0]
PINNs approach allows training neural networks while respecting the PDEs as a strong constraint in the optimization.
In standard small-scale circulation simulations, it is shown that the conventional approach incorporates a pseudo diffusive effect that is almost as large as the effect of the turbulent diffusion model.
Of all the schemes tested, only the PINNs approximation accurately predicted the outcome.
arXiv Detail & Related papers (2021-03-15T05:39:17Z) - Parameter Estimation with Dense and Convolutional Neural Networks
Applied to the FitzHugh-Nagumo ODE [0.0]
We present deep neural networks using dense and convolutional layers to solve an inverse problem, where we seek to estimate parameters of a Fitz-Nagumo model.
We demonstrate that deep neural networks have the potential to estimate parameters in dynamical models and processes, and they are capable of predicting parameters accurately for the framework.
arXiv Detail & Related papers (2020-12-12T01:20:42Z) - Provably Efficient Neural Estimation of Structural Equation Model: An
Adversarial Approach [144.21892195917758]
We study estimation in a class of generalized Structural equation models (SEMs)
We formulate the linear operator equation as a min-max game, where both players are parameterized by neural networks (NNs), and learn the parameters of these neural networks using a gradient descent.
For the first time we provide a tractable estimation procedure for SEMs based on NNs with provable convergence and without the need for sample splitting.
arXiv Detail & Related papers (2020-07-02T17:55:47Z)
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.