4.2 Article

Optimal Design of Large-scale Bayesian Linear Inverse Problems Under Reducible Model Uncertainty: Good to Know What You Don't Know

期刊

出版社

SIAM PUBLICATIONS
DOI: 10.1137/20M1347292

关键词

optimal experimental design; Bayesian inference; inverse problems; model uncertainty; sensor placement; sparsified designs

资金

  1. US National Science Foundation DMS grants [1723211, 1654311, 1745654]
  2. Direct For Mathematical & Physical Scien
  3. Division Of Mathematical Sciences [1745654, 1723211] Funding Source: National Science Foundation
  4. Division Of Mathematical Sciences
  5. Direct For Mathematical & Physical Scien [1654311] Funding Source: National Science Foundation

向作者/读者索取更多资源

This article discusses the optimal design of infinite-dimensional Bayesian linear inverse problems, with a focus on secondary reducible model uncertainties. The results show that considering additional model uncertainty in experimental design is crucial.
We consider optimal design of infinite-dimensional Bayesian linear inverse problems governed by partial differential equations that contain secondary reducible model uncertainties, in addition to the uncertainty in the inversion parameters. By reducible uncertainties we refer to parametric uncertainties that can be reduced through parameter inference. We seek experimental designs that minimize the posterior uncertainty in the primary parameters while accounting for the uncertainty in secondary parameters. We accomplish this by deriving a marginalized A-optimality criterion and developing an efficient computational approach for its optimization. We illustrate our approach for estimating an uncertain time-dependent source in a contaminant transport model with an uncertain initial state as secondary uncertainty. Our results indicate that accounting for additional model uncertainty in the experimental design process is crucial.

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