2023
DOI: 10.1190/geo2022-0306.1
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Fault?fracture reservoir identification method based on SRGAN and reconstructed super?resolution seismic signals

Abstract: To address the problem of fault?fracture reservoir identification, a new method based on super?resolution (SR) seismic signal reconstruction is established to identify faults, sliding fracture zones and induced fracture zones. First, based on a super?resolution generation countermeasure (SRGAN) deep learning method, an SR seismic signal reconstruction network framework is designed with a discriminant network (D), a generation network (G) and a visual geometry group network (V). Through the perceptual loss, obj… Show more

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