2024
DOI: 10.1190/geo2023-0533.1
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Automated lithofluid and facies classification in well logs: The rock-physics perspective

Roman Beloborodov,
James Gunning,
Marina Pervukhina
et al.

Abstract: While accurate litho-fluid and facies interpretation from wireline log data is critical for applications like joint facies and impedance inversion of seismic data, extracting this information manually is challenging due to the complexity and high dimensionality of the logs. Traditional clustering methods also struggle with litho-fluid type inference due to different depth trends in petrophysical rock properties due to compaction and diagenesis. We introduce a Rock Physics Machine Learning workflow that automat… Show more

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