SEG Technical Program Expanded Abstracts 2020 2020
DOI: 10.1190/segam2020-3427296.1
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Multi-physics interpretation using prior model: Application for near-surface characterization in the sand dune environment

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Cited by 2 publications
(2 citation statements)
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“…To demonstrate the adaptive physics-based neural network (PBNN) inversions, we use a complex two-dimensional (2D) resistivity synthetic near-surface model in an arid sand dune environment presented by Alyousuf and Li (2020). The model is characterized by an unconformity separating a near-surface region from deeper formations (Fig.…”
Section: S Y N T H E T I C D E M O N S T R At I O N U S I N G M Ag N ...mentioning
confidence: 99%
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“…To demonstrate the adaptive physics-based neural network (PBNN) inversions, we use a complex two-dimensional (2D) resistivity synthetic near-surface model in an arid sand dune environment presented by Alyousuf and Li (2020). The model is characterized by an unconformity separating a near-surface region from deeper formations (Fig.…”
Section: S Y N T H E T I C D E M O N S T R At I O N U S I N G M Ag N ...mentioning
confidence: 99%
“…Our inversion is formulated as a constrained minimization problem with a composite objective function composed of data misfit, neural network training function and a coupling model objective function that links the two inversion schemes through a reference model. Traditionally, the reference model can be updated at each inversion iteration by building on previously recovered models (Parker, 1994; Oldenburg and Li, 2005; Alyousuf and Li, 2020). Here, we identify two strategies to update the reference model using fully trained and adaptively trained neural network predictions.…”
Section: Introductionmentioning
confidence: 99%