Resolution-independent generative models based on operator learning for physics-constrained Bayesian inverse problems

被引:6
|
作者
Jiang, Xinchao [1 ]
Wang, Xin [1 ]
Wen, Ziming [1 ]
Wang, Hu [1 ,2 ]
机构
[1] Hunan Univ, State Key Lab Adv Design & Mfg Technol Vehicle, Changsha 410082, Peoples R China
[2] Shenzhen Automot Res Inst, Beijing Inst Technol, Shenzhen 518000, Peoples R China
基金
中国国家自然科学基金;
关键词
Operator learning; Generative adversarial networks; Resolution-independent; Bayesian; Inverse problems; COMPUTATION METHOD;
D O I
10.1016/j.cma.2023.116690
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
The Bayesian inference approach is widely used to solve inverse problems due to its versatile and natural ability to handle ill-posedness. However, there are often challenges when dealing with situations involving continuous fields or parameters with large -resolution discrete representations. Furthermore, the prior distribution of the unknown parameters is also commonly difficult to determine. Therefore, in this study, an operator learning -based generative adversarial network (OL-GAN) is proposed and integrated into the Bayesian inference framework to address these issues. Compared with classical Bayesian approaches, the distinctive characteristic of the proposed method is that it learns the joint distributions of parameters and responses. By using the trained generative model to handle the prior in Bayes' rule, the posteriors of the unknown parameters can theoretically be approximated by any sampling algorithms (e.g., Markov chain Monte Carlo, MCMC) under the proposed framework. More importantly, efficient sampling can be implemented in a low -dimensional latent space shared by the components of the joint distribution. The latent space is typically a simple and easy -to -sample distribution (e.g., Gaussian, uniform), which significantly reduces the computational cost associated with the Bayesian inference while avoiding prior selection. Furthermore, the generator is resolution -independent due to the incorporation of operator learning. Predictions can thus be obtained at desired coordinates, and inversions can be performed even if the observation data are misaligned with the training data. Finally, the effectiveness of the proposed method is validated through several numerical experiments.
引用
收藏
页数:26
相关论文
共 50 条
  • [31] Nonlinear sparse Bayesian learning for physics-based models
    Sandhu, Rimple
    Khalil, Mohammad
    Pettit, Chris
    Poirel, Dominique
    Sarkar, Abhijit
    JOURNAL OF COMPUTATIONAL PHYSICS, 2021, 426
  • [32] Physics-constrained machine learning for electrodynamics without gauge ambiguity based on Fourier transformed Maxwell's equations
    Leon, Christopher
    Scheinker, Alexander
    SCIENTIFIC REPORTS, 2024, 14 (01):
  • [33] Label-free timing analysis of SiPM-based modularized detectors with physics-constrained deep learning
    Ai, Pengcheng
    Xiao, Le
    Deng, Zhi
    Wang, Yi
    Sun, Xiangming
    Huang, Guangming
    Wang, Dong
    Li, Yulei
    Ran, Xinchi
    MACHINE LEARNING-SCIENCE AND TECHNOLOGY, 2023, 4 (04):
  • [34] Solving Bayesian inverse problems with expensive likelihoods using constrained Gaussian processes and active learning
    Dinkel, Maximilian
    Geitner, Carolin M.
    Robalo Rei, Gil
    Nitzler, Jonas
    Wall, Wolfgang A.
    INVERSE PROBLEMS, 2024, 40 (09)
  • [35] Prediction of models for ordered solvent in macromolecular structures by a classifier based upon resolution-independent projections of local feature data
    Jones, Laurel
    Tynes, Michael
    Smith, Paul
    ACTA CRYSTALLOGRAPHICA SECTION D-STRUCTURAL BIOLOGY, 2019, 75 : 696 - 717
  • [36] Surrogate modeling for Bayesian inverse problems based on physics-informed neural networks
    Li, Yongchao
    Wang, Yanyan
    Yan, Liang
    JOURNAL OF COMPUTATIONAL PHYSICS, 2023, 475
  • [37] A feature-based physics-constrained active dictionary learning scheme for image-based additive manufacturing process monitoring
    Lu, Yanglong
    Wang, Yan
    Pan, Longye
    JOURNAL OF MANUFACTURING PROCESSES, 2023, 103 : 261 - 273
  • [38] Bayesian hybrid generative discriminative learning based on finite Liouville mixture models
    Bouguila, Nizar
    PATTERN RECOGNITION, 2011, 44 (06) : 1183 - 1200
  • [39] Bayesian physics-informed extreme learning machine for forward and inverse PDE problems with noisy data
    Liu, Xu
    Yao, Wen
    Peng, Wei
    Zhou, Weien
    NEUROCOMPUTING, 2023, 549
  • [40] Data-driven lay-up design of a type IV hydrogen storage vessel based on physics-constrained generative adversarial networks (PCGANs)
    Zhang, Yikai
    Gu, Junfeng
    Li, Zheng
    Ruan, Shilun
    Shen, Changyu
    JOURNAL OF ENERGY STORAGE, 2024, 98