Conditional score-based diffusion models for solving inverse problems in mechanics
Agnimitra Dasgupta, Harisankar Ramaswamy, Javier, Murgoitio-Esandi, Ken Foo, Runze Li, Qifa Zhou, Brendan Kennedy, and Assad Oberai

TL;DR
This paper introduces a Bayesian inference framework using conditional score-based diffusion models to solve complex inverse problems in mechanics, capable of handling noisy data, black-box models, and various measurement modalities.
Contribution
The paper presents a novel approach that trains a single neural network to approximate score functions for conditional distributions, enabling efficient Bayesian inference in high-dimensional inverse mechanics problems.
Findings
Effective in inferring heterogeneous material properties from noisy data
Handles complex noise models and nonlinear black-box forward models
Demonstrates efficiency on large-scale physics-based inverse problems
Abstract
We propose a framework to perform Bayesian inference using conditional score-based diffusion models to solve a class of inverse problems in mechanics involving the inference of a specimen's spatially varying material properties from noisy measurements of its mechanical response to loading. Conditional score-based diffusion models are generative models that learn to approximate the score function of a conditional distribution using samples from the joint distribution. More specifically, the score functions corresponding to multiple realizations of the measurement are approximated using a single neural network, the so-called score network, which is subsequently used to sample the posterior distribution using an appropriate Markov chain Monte Carlo scheme based on Langevin dynamics. Training the score network only requires simulating the forward model. Hence, the proposed approach can…
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Taxonomy
TopicsNumerical methods in inverse problems · Advanced Mathematical Modeling in Engineering
MethodsDiffusion
