Day 2 Tue, October 03, 2023 2023
DOI: 10.2118/216223-ms
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Applying Machine Learning NLP Algorithm for Reconciliation Geology and Petrophysics in Rock Typing

A. Tveritnev,
M. Khanji,
S. Abdullah
et al.

Abstract: Oil- and gas-bearing rock deposits have distinct properties that significantly influence fluid distribution in pore spaces and the rock's ability to facilitate fluid flow. Rock typing involves analyzing various subsurface data to understand property relationships, enabling predictions even in data-limited areas. Central to this is understanding porosity, permeability, and saturation, which are crucial for identifying fluid types, volumes, flow rates, and estimating fluid recovery potential. These fundamental p… Show more

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