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首页|An efficient method for goal-oriented linear Bayesian optimal experimental design: Application to optimal sensor placemen

An efficient method for goal-oriented linear Bayesian optimal experimental design: Application to optimal sensor placemen

An efficient method for goal-oriented linear Bayesian optimal experimental design: Application to optimal sensor placemen

来源:Arxiv_logoArxiv
英文摘要

Optimal experimental design (OED) plays an important role in the problem of identifying uncertainty with limited experimental data. In many applications, we seek to minimize the uncertainty of a predicted quantity of interest (QoI) based on the solution of the inverse problem, rather than the inversion model parameter itself. In these scenarios, we develop an efficient method for goal-oriented optimal experimental design (GOOED) for large-scale Bayesian linear inverse problem that finds sensor locations to maximize the expected information gain (EIG) for a predicted QoI. By deriving a new formula to compute the EIG, exploiting low-rank structures of two appropriate operators, we are able to employ an online-offline decomposition scheme and a swapping greedy algorithm to maximize the EIG at a cost measured in model solutions that is independent of the problem dimensions. We provide detailed error analysis of the approximated EIG, and demonstrate the efficiency, accuracy, and both data- and parameter-dimension independence of the proposed algorithm for a contaminant transport inverse problem with infinite-dimensional parameter field.

Omar Ghattas、Peng Chen、Keyi Wu

计算技术、计算机技术工程基础科学数学

Omar Ghattas,Peng Chen,Keyi Wu.An efficient method for goal-oriented linear Bayesian optimal experimental design: Application to optimal sensor placemen[EB/OL].(2021-02-12)[2025-08-02].https://arxiv.org/abs/2102.06627.点此复制

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