2022
DOI: 10.1186/s40623-022-01651-0
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Quantitative logging data clustering with hidden Markov model to assist log unit classification

Abstract: Revealing subsurface structures is a fundamental task in geophysical and geological studies. Logging data are usually acquired through drilling projects, which constrain the subsurface structure, and together with the description of drill core samples, are used to distinguish geological units. Clustering is useful for interpreting logging data and making log unit classification and is usually performed by manual inspection of the data. However, the validity of clustering results with such subjective criteria m… Show more

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