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VI-DGP: A Variational Inference Method with Deep Generative Prior for Solving High-Dimensional Inverse Problems
by
Liao, Qifeng
, Xia, Yingzhi
, Li, Jinglai
in
Accuracy
/ Algorithms
/ Approximation
/ Boundary conditions
/ Computational Mathematics and Numerical Analysis
/ Estimation
/ Geophysics
/ Inference
/ Inverse problems
/ Mathematical and Computational Engineering
/ Mathematical and Computational Physics
/ Mathematical models
/ Mathematics
/ Mathematics and Statistics
/ Neural networks
/ Optimization
/ Parameter estimation
/ Parameters
/ Partial differential equations
/ Permeability
/ Physics
/ Random variables
/ Regularization methods
/ Theoretical
2023
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VI-DGP: A Variational Inference Method with Deep Generative Prior for Solving High-Dimensional Inverse Problems
by
Liao, Qifeng
, Xia, Yingzhi
, Li, Jinglai
in
Accuracy
/ Algorithms
/ Approximation
/ Boundary conditions
/ Computational Mathematics and Numerical Analysis
/ Estimation
/ Geophysics
/ Inference
/ Inverse problems
/ Mathematical and Computational Engineering
/ Mathematical and Computational Physics
/ Mathematical models
/ Mathematics
/ Mathematics and Statistics
/ Neural networks
/ Optimization
/ Parameter estimation
/ Parameters
/ Partial differential equations
/ Permeability
/ Physics
/ Random variables
/ Regularization methods
/ Theoretical
2023
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VI-DGP: A Variational Inference Method with Deep Generative Prior for Solving High-Dimensional Inverse Problems
by
Liao, Qifeng
, Xia, Yingzhi
, Li, Jinglai
in
Accuracy
/ Algorithms
/ Approximation
/ Boundary conditions
/ Computational Mathematics and Numerical Analysis
/ Estimation
/ Geophysics
/ Inference
/ Inverse problems
/ Mathematical and Computational Engineering
/ Mathematical and Computational Physics
/ Mathematical models
/ Mathematics
/ Mathematics and Statistics
/ Neural networks
/ Optimization
/ Parameter estimation
/ Parameters
/ Partial differential equations
/ Permeability
/ Physics
/ Random variables
/ Regularization methods
/ Theoretical
2023
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VI-DGP: A Variational Inference Method with Deep Generative Prior for Solving High-Dimensional Inverse Problems
Journal Article
VI-DGP: A Variational Inference Method with Deep Generative Prior for Solving High-Dimensional Inverse Problems
2023
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Overview
Solving high-dimensional Bayesian inverse problems (BIPs) with the variational inference (VI) method is promising but still challenging. The main difficulties arise from two aspects. First, VI methods approximate the posterior distribution using a simple and analytic variational distribution, which makes it difficult to estimate complex spatially-varying parameters in practice. Second, VI methods typically rely on gradient-based optimization, which can be computationally expensive or intractable when applied to BIPs involving partial differential equations (PDEs). To address these challenges, we propose a novel approximation method for estimating the high-dimensional posterior distribution. This approach leverages a deep generative model to learn a prior model capable of generating spatially-varying parameters. This enables posterior approximation over the latent variable instead of the complex parameters, thus improving estimation accuracy. Moreover, to accelerate gradient computation, we employ a differentiable physics-constrained surrogate model to replace the adjoint method. The proposed method can be fully implemented in an automatic differentiation manner. Numerical examples demonstrate two types of log-permeability estimation for flow in heterogeneous media. The results show the validity, accuracy, and high efficiency of the proposed method.
Publisher
Springer US,Springer Nature B.V
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