Machine learning-based classification of petrofacies in fine laminated limestones
GALLILEU GENESIS,
IGOR F. GOMES,
JOSÉ ANTONIO BARBOSA
et al.
Abstract:Characterization and development of hydrocarbon reservoirs depends on the classification of lithological patterns from well log data. In thin reservoir units, limited vertical data impedes the efficient classification of lithologies. We present a test case of petrofacies classification using machine learning models in a thin interval of finely laminated limestones using pseudo-well data created over outcrops (radiometric and unconfined compressive strength logs). We tested Gaussian naïve Bayes (GNB) and suppor… Show more
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