2019
DOI: 10.35767/gscpgbull.67.3.141
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Bayesian artificial intelligence for geologic prediction: Fracture case study, Horn River Basin

Abstract: A Bayesian Belief Network (BN) has been developed to predict fractures in the subsurface during the early stages of oil and gas exploration. The probability of fractures provides a first-order proxy for spatial variations in fracture intensity at a regional scale. Nodes in the BN, representing geologic variables, were linked in a directed acyclic graph to capture key parameters influencing fracture generation over geologic time. The states of the nodes were defined by expert judgment and conditioned by availab… Show more

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Cited by 2 publications
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