2022
DOI: 10.1093/gji/ggac241
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Uncertainty quantification for regularized inversion of electromagnetic geophysical data—Part I: motivation and theory

Abstract: Summary We present a method for computing a meaningful uncertainty quantification (UQ) for regularized inversion of electromagnetic (EM) geophysical data that combines the machineries of regularized inversion and Bayesian sampling with a “randomize-then-optimize” (RTO) approach. The RTO procedure is to perturb the canonical objective function in such a way that the minimizers of the perturbations closely follow a Bayesian posterior distribution. In practice, this means that we can compute UQ for… Show more

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Cited by 11 publications
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References 47 publications
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