2023
DOI: 10.48550/arxiv.2301.12019
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A Greedy Sensor Selection Algorithm for Hyperparameterized Linear Bayesian Inverse Problems

Abstract: We consider optimal sensor placement for a family of linear Bayesian inverse problems characterized by a deterministic hyper-parameter. The hyper-parameter describes distinct configurations in which measurements can be taken of the observed physical system. To optimally reduce the uncertainty in the system's model with a single set of sensors, the initial sensor placement needs to account for the non-linear state changes of all admissible configurations. We address this requirement through an observability coe… Show more

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